A Hybrid Scattering Transform for Signals with Isolated Singularities
The scattering transform is a wavelet-based model of Convolutional Neural Networks originally introduced by S. Mallat. Mallat's analysis shows that this network has desirable stability and invariance guarantees and therefore helps explain the observation that the filters learned by early layers...
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Zusammenfassung: | The scattering transform is a wavelet-based model of Convolutional Neural
Networks originally introduced by S. Mallat. Mallat's analysis shows that this
network has desirable stability and invariance guarantees and therefore helps
explain the observation that the filters learned by early layers of a
Convolutional Neural Network typically resemble wavelets. Our aim is to
understand what sort of filters should be used in the later layers of the
network. Towards this end, we propose a two-layer hybrid scattering transform.
In our first layer, we convolve the input signal with a wavelet filter
transform to promote sparsity, and, in the second layer, we convolve with a
Gabor filter to leverage the sparsity created by the first layer. We show that
these measurements characterize information about signals with isolated
singularities. We also show that the Gabor measurements used in the second
layer can be used to synthesize sparse signals such as those produced by the
first layer. |
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DOI: | 10.48550/arxiv.2110.04910 |