Hands-On Convolutional Neural Networks with TensorFlow
by Iffat Zafar, Giounona Tzanidou, Richard Burton, Nimesh Patel, Leonardo Araujo
Summary
In this chapter, we introduced you to different convolutional neural network designs that have proven their effectiveness and, as a result, are widely used. We started by introducing the VGGNet model by VGG at Oxford University. Next, we moved on to GoogLeNet by Google, before finally talking about Microsoft's Residual Net. In addition, we showed you a more advanced and new type of convolution that is featured in a model design called MobileNet. Throughout, we talked about the different properties and design choices that make each of these networks so good, such as skip connections, stacking small filters, or inception modules. Finally, code was given showing you how to write out these networks in TensorFlow.
In the next chapter, ...
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