Video Digital Camera

24 Channel Digital EEG And Mapping System with video camera tow tripod
24 Channel Digital EEG And Mapping System with video camera tow tripod
Paypal   US $2,999.00
Digital EEG And Mapping System 18 channel EEG with video camera tow tripod
Digital EEG And Mapping System 18 channel EEG with video camera tow tripod
Paypal   US $2,299.00
Keyence VH 6300 Hi Res Digital Video Microscope Camera
Keyence VH 6300 Hi Res Digital Video Microscope Camera
Paypal   US $1,749.99
51 MP MICROSCOPE DIGITAL COLOR COOLED CCD VIDEO CAMERA 4 LOW LIGHT APPLICATIONS
51 MP MICROSCOPE DIGITAL COLOR COOLED CCD VIDEO CAMERA 4 LOW LIGHT APPLICATIONS
Paypal   US $1,199.00
51 MP MICROSCOPE DIGITAL COLOR COOLED CCD VIDEO CAMERA 4 MAC OS10 COMPUTER
51 MP MICROSCOPE DIGITAL COLOR COOLED CCD VIDEO CAMERA 4 MAC OS10 COMPUTER
Paypal   US $1,199.00
33 MP MICROSCOPE DIGITAL COOLED CCD CAMERA w VIDEO
33 MP MICROSCOPE DIGITAL COOLED CCD CAMERA w VIDEO
Paypal   US $1,199.00
32 MP MICROSCOPE COLOR CCD DIGITAL CAMERA LIVE VIDEO
32 MP MICROSCOPE COLOR CCD DIGITAL CAMERA LIVE VIDEO
Paypal   US $550.00
Tucsen 90 MP C Mount Digital Microscope Video Camera
Tucsen 90 MP C Mount Digital Microscope Video Camera
Paypal   US $497.95
90 Megapixel Digital Microscope Camera w Live Video
90 Megapixel Digital Microscope Camera w Live Video
Paypal   US $478.77
10MP Microscope HD Video Photo Color Digital Camera
10MP Microscope HD Video Photo Color Digital Camera
Paypal   US $439.00
91 MP Microscope HD Video Photo Color Digital Camera
91 MP Microscope HD Video Photo Color Digital Camera
Paypal   US $428.00
50 Megapixel Digital Microscope Camera w Live Video
50 Megapixel Digital Microscope Camera w Live Video
Paypal   US $349.77
91MP Microscope HD Video Eyepiece Color Digital Camera
91MP Microscope HD Video Eyepiece Color Digital Camera
Paypal   US $384.00
20 MP MICROSCOPE COLOR CCD DIGITAL CAMERA LIVE VIDEO
20 MP MICROSCOPE COLOR CCD DIGITAL CAMERA LIVE VIDEO
Paypal   US $299.00
51 MP MICROSCOPE COLOR DIGITAL CAMERA VIDEO 20 USB
51 MP MICROSCOPE COLOR DIGITAL CAMERA VIDEO 20 USB
Paypal   US $285.00
91 MP USB MICROSCOPE DIGITAL CAMERA VIDEO EYEPIECE NEW
91 MP USB MICROSCOPE DIGITAL CAMERA VIDEO EYEPIECE NEW
Paypal   US $285.00
30 MEGAPIXEL MICROSCOPE LIVE VIDEO DIGITAL CAMERA
30 MEGAPIXEL MICROSCOPE LIVE VIDEO DIGITAL CAMERA
Paypal   US $269.00
30 Megapixel Digital Microscope Camera w Live Video
30 Megapixel Digital Microscope Camera w Live Video
Paypal   US $258.77
Tucsen 50 MP C Mount Digital Microscope Video Camera
Tucsen 50 MP C Mount Digital Microscope Video Camera
Paypal   US $257.68
91MP Snapshot  Live Video Microscope Digital Camera  4 Scale Calibration Kit
91MP Snapshot Live Video Microscope Digital Camera 4 Scale Calibration Kit
Paypal   US $274.00
9MP Microscope Digital Camera for Snapshot Images  Live Videos  Software 90MP
9MP Microscope Digital Camera for Snapshot Images Live Videos Software 90MP
Paypal   US $252.00
5 MP Digital Microscope Camera Video  Measure Software
5 MP Digital Microscope Camera Video Measure Software
Paypal   US $229.00
Kodak MDS 100 Microscopy Documentation System Digital Video Camera
Kodak MDS 100 Microscopy Documentation System Digital Video Camera
Paypal   US $225.00
MICROSCOPE VIDEO EYEPIECE CAMERA DIGITAL USB HI RES
MICROSCOPE VIDEO EYEPIECE CAMERA DIGITAL USB HI RES
Paypal   US $224.99
51 MP USB MICROSCOPE DIGITAL CAMERA VIDEO EYEPIECE FOR WINDOWS  MAC OS10
51 MP USB MICROSCOPE DIGITAL CAMERA VIDEO EYEPIECE FOR WINDOWS MAC OS10
Paypal   US $210.00
New 50 MP Microscope Video Photo Color Digital Camera
New 50 MP Microscope Video Photo Color Digital Camera
Paypal   US $219.98
51 MP USB MICROSCOPE DIGITAL CAMERA VIDEO EYEPIECE NEW
51 MP USB MICROSCOPE DIGITAL CAMERA VIDEO EYEPIECE NEW
Paypal   US $189.00
Microscope 40x 800x Video Port Digital Camera for PC
Microscope 40x 800x Video Port Digital Camera for PC
Paypal   US $188.88
50MP Microscope Video Still Photo Color Digital Camera
50MP Microscope Video Still Photo Color Digital Camera
Paypal   US $204.00
New 31 MP Microscope Video Photo Color Digital Camera
New 31 MP Microscope Video Photo Color Digital Camera
Paypal   US $197.00
24G Multifunction Portable Digital 200x Microscope Medical Kit Video Camera
24G Multifunction Portable Digital 200x Microscope Medical Kit Video Camera
Paypal   US $159.50
31MP Microscope Video Still Photo Color Digital Camera
31MP Microscope Video Still Photo Color Digital Camera
Paypal   US $169.00
Multi Function USB Digital Microscope Video Otoscope Endoscope Camera UK Ship
Multi Function USB Digital Microscope Video Otoscope Endoscope Camera UK Ship
Paypal   US $148.59
13 Megapixel Digital Microscope Camera w Live Video
13 Megapixel Digital Microscope Camera w Live Video
Paypal   US $149.99
Handheld Digital Mobile Magnifier MicroScope Camera  Video Function 50 Mega
Handheld Digital Mobile Magnifier MicroScope Camera Video Function 50 Mega
Paypal   US $136.99
SVP Handheld Digital Mobile Magnifier MicroScope w Camera  Video Function
SVP Handheld Digital Mobile Magnifier MicroScope w Camera Video Function
Paypal   US $129.99
USB Digital Microscope 2 Mega Pixel Video Camera 200X
USB Digital Microscope 2 Mega Pixel Video Camera 200X
Paypal   US $126.99
Handheld Digital Mobile Magnifier Microscope Camera  Video Function
Handheld Digital Mobile Magnifier Microscope Camera Video Function
Paypal   US $124.99
20 Mega Pixel USB Live Video Microscope Digital Camera
20 Mega Pixel USB Live Video Microscope Digital Camera
Paypal   US $120.00
New 13M USB Microscope Live Video Photo Digital Camera
New 13M USB Microscope Live Video Photo Digital Camera
Paypal   US $131.98
New 1 3 Sony CCD Video Microscope Digital Camera for TV EyepieceFREE SHIPPING
New 1 3 Sony CCD Video Microscope Digital Camera for TV EyepieceFREE SHIPPING
Paypal   US $119.00
13M MICROSCOPE COLOR STILL  LIVE VIDEO DIGITAL CAMERA
13M MICROSCOPE COLOR STILL LIVE VIDEO DIGITAL CAMERA
Paypal   US $110.00
USB Digital Microscope 20X to 400X Micro Video Camera w LED Lights Stamp  Coin
USB Digital Microscope 20X to 400X Micro Video Camera w LED Lights Stamp Coin
Paypal   US $109.99
HD Digital USB Microscope 25X 600X 20MP Camera and Video
HD Digital USB Microscope 25X 600X 20MP Camera and Video
Paypal   US $99.99
5M 544x Zoom Handheld Digital Mobile Magnifier Microscope Camera  Video
5M 544x Zoom Handheld Digital Mobile Magnifier Microscope Camera Video
Paypal   US $99.99
20MP USB Live Video Microscope Eyepiece Digital Camera
20MP USB Live Video Microscope Eyepiece Digital Camera
Paypal   US $99.00
13 Mega Pixel USB Live Video Microscope Digital Camera
13 Mega Pixel USB Live Video Microscope Digital Camera
Paypal   US $97.00
New Handheld Digital Mobile Magnifier Microscope w Camera  Video Function
New Handheld Digital Mobile Magnifier Microscope w Camera Video Function
Paypal   US $90.99
HD Digital USB Microscope for Apple PC Mac OS MAX 25X 600X 20MP Camera  Video
HD Digital USB Microscope for Apple PC Mac OS MAX 25X 600X 20MP Camera Video
Paypal   US $89.99
Coin detector Tools HD Digital USB Microscope 25X 600X 20MP Camera and Video
Coin detector Tools HD Digital USB Microscope 25X 600X 20MP Camera and Video
Paypal   US $89.99
New 13M PC USB2 Microscope Video Photo Digital Camera
New 13M PC USB2 Microscope Video Photo Digital Camera
Paypal   US $89.98
Brand New 20MP USB Live Video Eyepiece Digital Camera for Microscope
Brand New 20MP USB Live Video Eyepiece Digital Camera for Microscope
Paypal   US $85.99
13 Mega Pixel USB Digital Live Video Microscope Camera
13 Mega Pixel USB Digital Live Video Microscope Camera
Paypal   US $79.99
USB 20 Microscope Endoscope Digital Magnifier video Camera with screen
USB 20 Microscope Endoscope Digital Magnifier video Camera with screen
Paypal   US $79.86
USB Digital Pen Video Microscope Camera Endoscope Set
USB Digital Pen Video Microscope Camera Endoscope Set
Paypal   US $79.00
NEW USB 20X 400X Digital Microscope Video Camera
NEW USB 20X 400X Digital Microscope Video Camera
Paypal   US $69.99
13MP USB Video Pen Camera Digital Endoscope Microscope
13MP USB Video Pen Camera Digital Endoscope Microscope
Paypal   US $67.99
USB Digital Microscope 200X 13 MP 8 LED Video Camera
USB Digital Microscope 200X 13 MP 8 LED Video Camera
Paypal   US $63.88
USB Digital Microscope 20 200X 13MP Video Camera New
USB Digital Microscope 20 200X 13MP Video Camera New
Paypal   US $63.88
USB Digital Microscope Video Camera 20X 200X 8LED 13M G
USB Digital Microscope Video Camera 20X 200X 8LED 13M G
Paypal   US $63.88
USB Digital Microscope 20 200X 13MP Video Camera New CAD
USB Digital Microscope 20 200X 13MP Video Camera New CAD
Paypal   US $62.76
USB Digital Microscope Video Camera 20X 200X 8LED 13M G CAG
USB Digital Microscope Video Camera 20X 200X 8LED 13M G CAG
Paypal   US $62.76
USB Digital Microscope 200X 13 MP 8 LED Video Camera CAA
USB Digital Microscope 200X 13 MP 8 LED Video Camera CAA
Paypal   US $62.76
USB Digital Microscope 220X 50 M Video Camera 8 Led
USB Digital Microscope 220X 50 M Video Camera 8 Led
Paypal   US $59.50
USB Digital Microscope 400X 20 M Video Camera 8 Led
USB Digital Microscope 400X 20 M Video Camera 8 Led
Paypal   US $59.50
Celestron Microscope Digital Kit MDK 40x 600x Camera Video USB 44320
Celestron Microscope Digital Kit MDK 40x 600x Camera Video USB 44320
Paypal   US $58.75
13MP USB Digital Video Camera Microscope Zoom 20X½ž400X
13MP USB Digital Video Camera Microscope Zoom 20X½ž400X
Paypal   US $58.50
NEW 13 MP Digital USB Microscope Zoom 20 400X Camera Video Black
NEW 13 MP Digital USB Microscope Zoom 20 400X Camera Video Black
Paypal   US $55.77
New 20M USB 25X 400X Digital Microscope Video Camera
New 20M USB 25X 400X Digital Microscope Video Camera
Paypal   US $52.80
New 20MP 8 LED USB Digital Microscope Endoscope Magnifier 20X 800X Video Camera
New 20MP 8 LED USB Digital Microscope Endoscope Magnifier 20X 800X Video Camera
Paypal   US $52.49
USB 400X Digital Microscope 13 Mega Pixel Video Camera
USB 400X Digital Microscope 13 Mega Pixel Video Camera
Paypal   US $50.99
03 Mega Pixel USB Live Video Microscope Digital Camera
03 Mega Pixel USB Live Video Microscope Digital Camera
Paypal   US $49.98
USB Digital Microscope 220X 20 M Video Camera 8 Led
USB Digital Microscope 220X 20 M Video Camera 8 Led
Paypal   US $49.50
USB Digital Microscope 400X 13Mega Video Camera
USB Digital Microscope 400X 13Mega Video Camera
Paypal   US $48.00
50 500X 20MP 8 LED USB Digital Microscope Video Camera
50 500X 20MP 8 LED USB Digital Microscope Video Camera
Paypal   US $48.00

Video Digital Camera

Digital Camera For Crowd Counting

ABSTRACT

Having a digital camera with a feature to count people in a gathering without recounting a face will help to fortify modes of acquiring attendance figures for large gathering and provide exact data for records. There have been convectional methods used to know attendance in a gathering such as ticket sales. For some other gathering it is manually determined by dividing an area occupied by a crowd into sections, determining the average number of people in each section and multiplying the number of sections occupied. Aerial photography and satellites are also used for crowd counting.

These methods provide close estimation and conflict sometimes when two or more methods are used. Digital camera technology develops yearly; the technology proposed in this paper suggests adding a new feature to digital cameras, such that it can be used to count people in a gathering aside covering the event normally.

To have this feature, face detection and face recognition technology will be used. Face detection to detect human faces and count them; such that faces counted will be saved temporarily and the face recognition technology will ensure that faces counted at the time will not be counted again. This paper presents crowd count feature in details.

Download Research Paper

General Terms Digital Camera, Computer Vision 1.

 INTRODUCTION

Face detection is a computer technology that determines the locations and sizes of human faces in arbitrary images, it simply detect faces and ignores everything else. This technology is used for applications like video surveillance and image retrieval. Face detection technology is also used for computer-human interaction. [1]

 This also makes it measure up for use for the crowd count feature proposed in this paper. Face recognition is a biometric identification by scanning a person's face and matching it against a library of known faces. It is used for applications such as security systems and psychological processes. [2] The face recognition technology will compliment the face detection technology to accomplish the crowd count feature proposed here.

To achieve this crowd count feature; face detection technology will detect faces; such faces are counted and saved temporarily in a library. Since the camera will still be used for its convectional purpose, it will return to positions where it has counted faces. The face recognition system will help compare faces with those in the library to ensure that no face is recounted. Facial images will be stored temporarily to avoid count repetition; saved images are automatically deleted after that viewing session especially when figures have been computed. This feature is expected to have high accuracy since it is concerned with detecting human faces. This technology will give correct figures since its accuracy will exceed other methods of crowd counting.

The interesting part of this technology is that it will be a feature that can be enabled or disabled in coming models of digital cameras. Meaning that along with a camera's high resolution, high zoom lens magnification and picture quality; digital video cameras will also be used to count people in any gathering so long it views the area covered by the crowd. This technology is much different from the people counter technology which is used to know the number of times people enter and leave a particular place. Entry and exit count is more important than particular person count. [3]

The crowd count feature is concerned with individual count especially as their face stays same during that period. The need for the crowd count feature is to have a trusty mode to get exact figures in large gatherings. Since this feature will be available in coming cameras more than one can be used in a particular event. The feature will be useful for press reports, determining number of people in entertainment shows, number of students at a gathering, those present at a sporting event, and many other crowd intensive occasions.

 

2.0. THEORETICAL DEVELOPMENT

 Face Detection and Face Recognition technology have been developed through the years; research has brought development which makes them useful for applications. For systems where they are conventionally used, their delivery is usually increased. The novel feature presented in this paper will have face detection and face recognition technology work together. Their peculiarities are presented in this section.

2.1. Face Detection Technology

This is a computer technology that detects facial images and ignores anything else; it determines the location and sizes of human faces in digital images. There are feature based and image based algorithm approaches for face detection. Feature based uses edge detection, skin color and symmetry analysis. Image based algorithm uses neural networks. [1] The skin color processing of the feature based algorithm is faster than any other facial feature.

To obtain this, it is necessary to identify those pixels which fall within a certain range of RGB (Red Green Blue Color Model) values, and categorize them as skin pixels. [4] Skin color segmentation helps to reject non skin color region from the input image and morphological operations helps to clean up that image and remove noise. Connecting analysis is usually done on the image to obtain the various connected regions; these regions will be separated until a single region is split further. [4][5]

Edge detection and Symmetry transform are used to further separate the region. Retinal connected neural network examines small window of an image and decides whether each window contains a face. This system acts between multiple networks to improve performance over a single network. [6] The system applies a set of neural network-based filters to an image then uses a sub-system to combine the outputs. The filters examine each location in the image at different scale, to get locations that might contain a face.

The sub-system then merges detections from individual filters and eliminates overlapping detections. [6] The retinal connected neural network algorithm can be used to achieve the crowd count feature, since the camera will be used to count faces in a crowd, it is strictly based on facial images so issue of false detections (non-facial images) does not directly apply. Since this camera will be carried on or around the podium, digital zoom will be useful in viewing faces at the back. Some faces will not be seen in totality so the face can be viewed in a 20×20 window, starting from a little above the eyelid and ends below the lower lip. [7]

It can be increased to view the whole face in a 30×30 pixel for those in front. Recent technology presents multi-view face detection meaning that even if a person's face is rotated along the vertical or left axis (out-of-plane rotation) or both; at the time the face is to be counted, the person will be counted once without repetition.

2.2. Face Recognition Technology

 As a computer application, this system verifies or identifies a person's face from a digital image or video frame from a video source. It compares selected facial images in a facial database from the image. [2] Some facial recognition algorithm identifies faces by extracting landmarks or features from an image of the person's face. An algorithm may analyze the position, size, and/or shape of the eyes, nose, cheekbone and jaw.

These features are then used to search for other images with matching features. Other algorithm normalize a gallery of face images and then compress the face data, only saving the data in the image that is useful for face detection. [2] The Facial recognition system compares face detected to faces in the database; crowd count will be a feature on a digital camera which will not be connected to any facial database. Libraries will temporarily store the faces detected; which implies that library or libraries will act as the facial database.

Three dimensional (3D) face recognition as part of this crowd count technology can help increase the efficiency for face recognition purposes. The 3D technique uses 3D sensors to capture information about the shape of a face. This feature identifies distinctive features of a face such as the contour of the eye sockets, nose and chin.

 This technique is not affected by changes in lighting. [8][9] Recent technologies show that high resolution images consist of facial images with an average of 250 pixels between the centers of the eyes, making the 3D efficient with this also. The count feature will be operated with a button on the digital camera, when activated; it detects faces counts and saves them simultaneously.

 

3. EXPERIMENTAL PROCEDURE

The facial recognition, detection and digital camera technology will be combined in one device to achieve this objective; normal camera size will be maintained since these technologies will be made to fit into it. Digital cameras have some features that support the crowd count feature. For example, the optical disc standard storage system provides enough digital storage to store hours of video content meaning that it can also be used to temporarily save some or all of the faces counted; the numbers of lines in the vertical display resolution, the scanning system and the number of frames or fields per second help define images clearly will aid counting and saving without distortion. [10].

The face recognition algorithm is divided in two modules: a face image detector that finds human faces and a face recognizer determines who the person is. Both technologies allow the same framework; they both have a feature extractor that transforms the pixels of the facial image into a useful vector representation and a pattern recognizer that classifies the feature vector and searches the memory [11] to ensure that the incoming face has not been counted previously.

There are various algorithms developed for face detection and face recognition technology, usually based on models like skin color and neural network. It has been observed that different human skin color give rise to compact clusters in color space such as normalized RGB (red, green, blue), YCbCr and HSI Color spaces amongst others.[4]

 For skin color based face detection in RGB Color space; the pixels for skin region can be detected using a normalized color histogram that can be further normalized for changes in intensity on dividing by luminance. The pixels can then convert an [R,G,B] vector to an [r, g] vector of normalized color which provides a fast means of skin detection. [4] Some face recognition algorithm uses nodal points and internodal distances to create a value unique to each facial photograph.

This algorithm can be programmed with Java Swing components to generate Graphic User Interface (GUI) software. After the values are saved to the database, the captured face unique value will be matched to the closest values in the database. The will help determine that a match will be found within a reasonable margin of error.

To determine the probability and accuracy of the GUI-based face recognition program, an in depth statistical analysis can be run on the data. [12]. Many more algorithms are available for Face detection and recognition system, meaning that certain subsystems may act as arbitrators between each system. It therefore implies that further developments on exiting models will leverage the crowd count feature.

4. RESULT AND DISCUSSION

Options to come with the crowd count feature include: enable/disable, reset count, count again to confirm, notification (if a face is not seen clearly to be counted) the camera will seek to count such face when in that direction again. Some of the options will work automatically as default and others will depend on the command given. Count feature maybe enabled and disabled by the user as desired, count can be repeated as desired by the user or depending on the number of hours the event will last, recount by default can be disabled / enabled to ensure further accuracy of figures. Once the count feature is enabled, the user is expected to move slowly with the camera to enable it detect, count and save faces temporarily. After counting some parts, the user is expected to zoom to reach other parts. Due to certain obstruction or space between individuals in the gathering, the camera may not see some faces it is expected to come back to that direction. Hair pattern recognition may also help out of such situation when developed. No two human hair patterns are same, even if they are similar in appearance; height, arrangement (head shape) and growth direction differs. This simply means that from the top view, the camera may recognize the hair of an individual, count and save so when it is returned to that direction, it will not count the person. This may also be necessary as people are tightly packed in some gathering and heads rather than faces are seen from the podium. Hair pattern recognition algorithm for crowd count feature will certainly increase the efficacy of attendance figures from aerial photography. Digital Cameras will be useful to count people in any kind of setting when this technology is available. This article presents details on how to create a crowd count feature for Digital cameras; a number of algorithms will be written to have the crowd count feature while research into hair pattern recognition is advanced to ensure more options for accuracy for this feature.

 

4.1. Conclusion

Technology to enable a digital video camera count people in a gathering is some algorithm away. This feature will be developed overtime such that all digital cameras will come with it. This will increase versatility of digital cameras with some other features that will be added to them. Increased market share, technology solutions, accurate estimations are some of the bring-along of this technology.

5. GLOSSARY

 Accuracy: A catch-all phrase for describing how well a biometric system performs; simply put is the quality of being correct, true or exact, with little or no error.

Aerial photography: Refers to images not supported by ground based structure such that photographs of the ground are taken from elevated position(s).

Algorithm: Is a limited sequence of instructions or steps that tells a computer system how to solve a particular problem. A biometric system will have multiple algorithms, For example: image processing, template generation, comparisons, etc.

Biometric Identification: Is an automatic identification of living individuals by using their physiological and behavioral characteristics usually called biometrics. Biometrics can be used to describe a characteristic or a process. As a characteristic: is a measurable biological (anatomical and physiological) and behavioral characteristic that can be used for automated recognition. As a process: are automated methods of recognizing an individual based on measurable biological (anatomical and physiological) behavioral characteristics.

Biometric Systems: Are multiple Individual components (such as sensor, matching algorithm, and result display) that combine to make a fully operational system. A biometric system maybe a component of a larger system; It is an automated system capable of:

 1. Capturing a biometric sample from an end user

2. Extracting and processing the biometric data from that sample.

3. Storing the extracted information in a database.

4. Comparing the biometric data with data contained in one reference or more.

5. Deciding how well they match and indicating whether or not an identification or verification of identity has been achieved.

Capture: Or to capture is a process of collecting a biometric sample from an individual via a sensor.

Crowd counting: Is a technique or set of methods used to count or estimate the number of people in a crowd.

Database: A collection of one or more computer files. For biometric systems, these files could consist of biometric sensor readings, templates, match results, related end user information, etc

Edge detection: Is used to identify points in a digital image at which the image brightness changes sharply or more formally has discontinuities.

Feature Extraction: Is the process of converting a captured biometric sample into biometric data so that it can be compared to a reference.

Gallery: Is the biometric system's database, or set of known individuals, for a specific implementation or evaluation experiment.

Graphical User Interface (GUI): Is an object-oriented display format that allows the user to select from menus and icons, using either a mouse or keystroke commands.

 HSI Color Space: HSI is the corresponding color model used to describe three major color properties which are Hue, Saturation and Intensity.

Image retrieval: Is a computer system for browsing, searching and retrieving images from a large database of digital images.

Magnification: Is the act of expanding something in apparent size.

Neural Network: Is a computer architecture in which processors are connected in a manner suggestive of connections between neurons; has the ability to learn by trial and error.

Noise: Unwanted components in a signal that degrade the quality of data or interfere with the desired signals processed by a system

Pixel: Is a picture element, usually the smallest element of a display that can be assigned a color value.

Resolution: Is the number of pixels per unit distance in the image. It usually describe the sharpness and clarity of an image.

Satellite: Is anything that orbits something else, usually used to describe man made equipment that orbits around the earth or the moon.

Symmetry analysis: Is the degree of symmetry in a Three Dimensional shape, under some class of transformations.

Video surveillance: Is the use of video cameras to transmit a signal to a specific place on a limited set of monitors.

YCbCr Color Space: It belongs to a family of television transmission color spaces and was developed due to increase demands for digital algorithm in handling video information. It is used as a part of color image pipeline in video systems. [13]

 

6. ACKNOWLEDGMENTS

 Many Thanks to individuals, Institutions and groups that are contributing extensively towards the growth of Science, Technology Research and Development. You are appreciated.

7. REFERENCES

[1] Jesorsky, O., Kirchberg,K.J., and Frischholz, R.W, "Robust Face Detection Using the Hausdorff Distance", Third International Conference on audio and video based Biometric Authentication, Springer, Lecture Notes in Computer Science, LNCS-2091, pp 90-95, Halmstad, 6-8 June 2001.

[2] Swarupa, N.V.S.L., and Supriya D, "Face Recognition Systems International Journal of Computer Applications", (0975 - 8887), Volume 1 – No. 29, 2010.

[3] Aik, L.E., and Zainuddin Z, "Real-Time People Counting System using Curve Analysis Method" International Journal of Computer and Electrical Engineering, Vol 1, No.1 (1793-8198), pp77, 2009

[4] Singh, S.Kr., Chauhan, D.S., Vatsa, M., and Singh A, "Robust Skin Color Based Face Detection Algorithm", Tamkang Journal of Science and Engineering, Vol. 6, No 4, pp 227-234, 2003.

[5] Kovac, J., Peer, P., and Solina F, "Human Skin Color Clustering for Face Detection" pp 1-5 Eurocon 22-24 September 2003.

[6] Hannuksela J, "Facial feature based head tracking and pose estimation" Diploma Thesis for Department of Electrical and Information Engineering, University of Oulu, Oulu, Finland. 2003.

[7] Do, T.T., and Le, T.H, "Facial Feature Extraction Using Geometric Feature and Independent Component Analysis Department of Computer Sciences, University of Natural Sciences, HCMC, Vietnam, pp 4, 2009.

[8] Heseltine T., Pears N., and Austin J, "Three Dimensional Face Recognition Using Surface Space Combinations" Department of Computer Science, The University Of York, 2008.

[9] Kakadiaris I., Passalis G., Toderici G., Murtuza N., and Theoharis T, "3D Face Recognition" Encyclopedia of Biometrics, S.Z. Li, Ed. Springer, pp. 329 -338, 2009.

[10] Andor Technology, "Digital Camera Fundamentals" Andor Publications, 2006.

[11] Huang Y. H., and Fuh C.S, "Face Detection and Smile Detection" Proceedings of IPPR Conference on Computer Vision, Graphics and Image Porcessing, Shitou, Taiwan, A5-6, p. 108, 2009.

[12] Rao V, "Face Recognition: Is It a Match" Oklahoma Academy of Science Publication, 2009.

[13] National Science and Technology Council's (NTSC) Subcommittee on Biometrics, Biometrics Glossary, 9-14-2006.

 

About the Author

http://stephaz.webs.com/

Express, Shoot, And Share With Canon Digital Cameras

Canon is famed across the country as a visualizing equipment and info systems. Their various products include copiers, printers, lenses, camcorders, semiconductors among others, and of course Canon digicams.

The modern high end canon digital camera is the PowerShot S2 IS. This is a 5.0 mega pixel Canon digicam that has a 12x optical zoom and a 4x digital zoom. This baby is supplied with Optical picture Stabilizer (that is what the IS in S2 IS signifies) that eliminates camera tilts for masses who have trembling hands or for having camera shots. The UD lens acquired in this canon digital camera put up awesome colour accuracy throughout the entire zoom area.

As with numerous digicams these days, this definite canon digicam could tape moving pictures. Now with another best, the S2 allows you to put down moving figures, and there is no intention for losing a clean figure incorporated with that moving image. With the Movie Snap feature, just shot away when you witness that clear figure, and it will be kept in your canon digicam along with the entered video.

This canon digicam is also equipped with the DIGIC II photo processor that is built to increase processing speed and figure feature. It directly says that with the DIGIC II, your canon digital camera has speedier start-up time, playback and auto focus while making your photos the total magnificence.

The S2 also sustain USB 2.0 Hi-speed standard, so you would forever have the lightest time transferring your datas to and from your PC. With the USB 2, you can have advantage of your super hi-speed SD card.

This canon digital camera is also supplied with a 1.8 inch LCD energy preserving and fold out screen that's 115,000 pixel resolution. S2 photographs at 30 figures per second; this snapping rate could be trimmed when taking photos in night display, to give you the luminosity that you require when getting figures.

On the other hand, the latest place and flash canon digital camera is the PowerShot SD500 and the PowerShot SD400.

The SD500 is the initial 7.1 mega pixel canon digital camera that makes brilliant figures and definitely to die for details. It has a 3x optical zoom that is able of close up snapping with a 37-111mm equivalent with a 35mm film camera. This is one of the original constant trend figures for a canon digicam that meets the hands precisely.

Boasting a very slim designing, you would marvel at its 2.0 inch LCD that gives smoother figure and replay use.

This baby is also equipped with the identical DIGIC II image Processor acquired in canon digital cameras that grants you impressive features. Also USB 2.0 compatible and goes with the same high-speed SD card.

Even advisable than most digital cameras out there, this gadget can film moving images to up to 60 frames per second- pure for moving objects (especially in sports) and a 30 forms per second for filming fixed images.

Supplied with scene moods like portrait (clouds the scenery and sharpens on your subject), foliage (beautiful for foliage, greenery or blossoms), beach (sunny pictures without the dark faces), underwater (decreased setting scatter. Tip: you could always get waterproof case for shooting undersea images), fireworks, night snapshot, kids and pets, indoor, snow and digital macro (wider than life photos).

This canon digital camera even allows you to customize and retouch as you film. With modes like whitening skin tones, positive film, browner skin tones and others, you could never be erroneous with using a canon digital camera.

These are just various of the many another characteristics of the SD500. There are more to the SD500 that has set to be discussed. Find canon's website for a total profile of the SD500 and to other trendy releases and products.

Also we recommend you to check out compact Canon SX110IS. On the other hand if Canon SX110IS is not what you want and you want more expensive model go for Canon SD880IS.

How to make photos from a digital video camera recording.?

We have a Sony digital video camera that records on a small magnetic tape. When we watch recordings of our kids sports events, you can pause the recording and the still image on the TV is fantastic! Is there a way to turn these still images into photographs that can be developed at the drug store? I haven't tried taking a picture of the TV screen yet, we're looking for something a little higher tech.

Most editing programs will let you do a screen capture. This would be done on the computer.

How to Operate a Digital Video Camera : How to Use Tripod With Digital Video Camera

You can follow any responses to this entry through the RSS 2.0 feed. Both comments and pings are currently closed.

Comments are closed.