Convolutional neural network (CNN) models have achieved great success in many fields. With the advent of ResNet, networks used in practice are getting deeper and wider. However, is each layer non-trivial in networks? To answer this question, we trained a network on the training set, then we replace the network convolution kernels with zeros and test the result models on the test set. We compared experimental results with baseline and showed that we can reach similar or even the same performances. Although convolution kernels are the cores of networks, we demonstrate that some of them are trivial and regular in ResNet.
翻译:革命性神经网络模式在许多领域取得了巨大成功。 随着ResNet的出现,实际使用的网络越来越深入和广泛。 然而,网络中每个层次是否都是非三层的? 为了回答这个问题,我们训练了一组训练的网络,然后用零取代网络内核,并在测试集中测试结果模型。我们比较了实验结果和基线,并表明我们可以达到类似甚至相同的性能。虽然网络的核心是混凝土内核,但是我们证明其中一些网络在ResNet中是微不足道的和常规的。