Features are pieces of information about the content of an image, such as points, edges, objects, motion, shapes, and boundaries. Features can be used to solve computational tasks related to a certain application. The choice of features in a computer vision system depends on the specific problem.
Stanford University
Spring 2022
This is a deep-dive into the details of deep learning architectures for visual recognition tasks. The course provides students with the ability to implement, train their own neural networks and understand state-of-the-art computer vision research. It requires Python proficiency and familiarity with calculus, linear algebra, probability, and statistics.
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