Classification with invariant scattering representations

Joan Bruna, S. Mallat
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引用次数: 7

Abstract

A scattering transform defines a signal representation which is invariant to translations and Lipschitz continuous relatively to deformations. It is implemented with a non-linear convolution network that iterates over wavelet and modulus operators. Lipschitz continuity locally linearizes deformations. Complex classes of signals and textures can be modeled with low-dimensional affine spaces, computed with a PCA in the scattering domain. Classification is performed with a penalized model selection. State of the art results are obtained for handwritten digit recognition over small training sets, and for texture classification. 1
用不变散射表示的分类
散射变换定义了一种信号表示,它对平移是不变的,对变形是连续的。它是用一个非线性卷积网络实现的,迭代小波算子和模算子。Lipschitz连续性局部线性化变形。复杂类型的信号和纹理可以用低维仿射空间建模,在散射域用PCA计算。分类是通过惩罚模型选择来执行的。在小训练集上的手写数字识别和纹理分类中获得了最先进的结果。1
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