Chapter 9: Convolutional Neural Networks (CNNs)
This chapter likely begins by revisiting the fundamental concepts of convolutional operations. It would meticulously explain how convolution works, including the roles of filters (kernels), strides, padding, and activation functions in extracting meaningful features from image data. The concept of feature maps, which represent the output of applying filters at different layers, would be thoroughly discussed, emphasizing how these maps capture hierarchical representations of visual information.
The chapter would then transition into exploring various influential CNN architectures.
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