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arxiv: 1705.08664 · v1 · pith:BRMBWHUXnew · submitted 2017-05-24 · 📊 stat.ML · cs.LG

Towards Understanding the Invertibility of Convolutional Neural Networks

classification 📊 stat.ML cs.LG
keywords cnnsmodelconsistentconvolutionalempiricallyinvertibilitymathematicalnetworks
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Several recent works have empirically observed that Convolutional Neural Nets (CNNs) are (approximately) invertible. To understand this approximate invertibility phenomenon and how to leverage it more effectively, we focus on a theoretical explanation and develop a mathematical model of sparse signal recovery that is consistent with CNNs with random weights. We give an exact connection to a particular model of model-based compressive sensing (and its recovery algorithms) and random-weight CNNs. We show empirically that several learned networks are consistent with our mathematical analysis and then demonstrate that with such a simple theoretical framework, we can obtain reasonable re- construction results on real images. We also discuss gaps between our model assumptions and the CNN trained for classification in practical scenarios.

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