Scattering network is a convolutional network, consisting of cascading convolutions using pre-defined wavelets followed by the modulus operator. Since its introduction in 2012, the scattering network is used as one of few mathematical tools explaining components of the convolutional neural networks (CNNs). However, a pooling operator, which is one of main components of conventional CNNs, is not considered in the original scattering network. In this paper, we propose a new network, called scattering-maxp network, integrating the scattering network with the max-pooling operator. We model continuous max-pooling, apply it to the scattering network, and get the scattering-maxp network. We show that the scattering-maxp network shares many useful properties of the scattering network including translation invariance, but with much smaller number of parameters. Numerical experiments show that the use of scattering-maxp does not degrade the performance too much and is much faster than the original one, in image classification tasks.
翻译:散射网络是一个革命网络,由使用预设波子的散变波层组成,由模量操作员跟踪。自2012年启用以来,散射网络被用作解释共振神经网络组成部分的少数数学工具之一。然而,原始散射网络中并不考虑作为常规CNN主要组成部分之一的集合操作员。在本文件中,我们提议建立一个新网络,称为散射-峰值网络,将散射网络与最大集合操作员整合。我们模拟了最大集散网络,将其应用到散射网络,并获得散射-负重网络。我们显示散射-轴网络拥有散射网络的许多有用属性,包括变换,但参数数量要少得多。在图像分类任务中,散射- 散射- 压实验显示,使用散射- 速器不会使性表现降幅太大,而且比原始的快得多。