Computer Vision with MATLAB for Object Detection and Tracking
Download a trial: https://goo.gl/PSa78r
See what's new in the latest release of MATLAB and Simulink: https://goo.gl/3MdQK1
Computer vision uses images and video to detect, classify, and track objects or events in order to understand a real-world scene. In this webinar, we dive deeper into the topic of object detection and tracking. Through product demonstrations, you will see how to:
Recognize objects using SURF features
Detect faces and upright people with algorithms such as Viola-Jones
Track single objects with the Kanade-Lucas-Tomasi (KLT) point tracking algorithm
Perform Kalman Filtering to predict the location of a moving object
Implement a motion-based multiple object tracking system
This webinar assumes some experience with MATLAB and Image Processing Toolbox. We will focus on the Computer Vision System Toolbox.
About the Presenter: Bruce Tannenbaum works on image processing and computer vision applications in technical marketing at MathWorks. Earlier in his career, he developed computer vision and wavelet-based image compression algorithms at Sarnoff Corporation (SRI). He holds an MSEE degree from University of Michigan and a BSEE degree from Penn State.
View example code from this webinar here: http://www.mathworks.com/matlabcentral/fileexchange/40079
Видео Computer Vision with MATLAB for Object Detection and Tracking канала MATLAB
See what's new in the latest release of MATLAB and Simulink: https://goo.gl/3MdQK1
Computer vision uses images and video to detect, classify, and track objects or events in order to understand a real-world scene. In this webinar, we dive deeper into the topic of object detection and tracking. Through product demonstrations, you will see how to:
Recognize objects using SURF features
Detect faces and upright people with algorithms such as Viola-Jones
Track single objects with the Kanade-Lucas-Tomasi (KLT) point tracking algorithm
Perform Kalman Filtering to predict the location of a moving object
Implement a motion-based multiple object tracking system
This webinar assumes some experience with MATLAB and Image Processing Toolbox. We will focus on the Computer Vision System Toolbox.
About the Presenter: Bruce Tannenbaum works on image processing and computer vision applications in technical marketing at MathWorks. Earlier in his career, he developed computer vision and wavelet-based image compression algorithms at Sarnoff Corporation (SRI). He holds an MSEE degree from University of Michigan and a BSEE degree from Penn State.
View example code from this webinar here: http://www.mathworks.com/matlabcentral/fileexchange/40079
Видео Computer Vision with MATLAB for Object Detection and Tracking канала MATLAB
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