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Deformable Part Models are Convolutional Neural Networks

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arxiv 1409.5403 v2 pith:YUI6WOCE submitted 2014-09-18 cs.CV

Deformable Part Models are Convolutional Neural Networks

classification cs.CV
keywords dpmsmodelscnnsconvolutionaldeeppyramiddeformablefeaturesnetworks
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Deformable part models (DPMs) and convolutional neural networks (CNNs) are two widely used tools for visual recognition. They are typically viewed as distinct approaches: DPMs are graphical models (Markov random fields), while CNNs are "black-box" non-linear classifiers. In this paper, we show that a DPM can be formulated as a CNN, thus providing a novel synthesis of the two ideas. Our construction involves unrolling the DPM inference algorithm and mapping each step to an equivalent (and at times novel) CNN layer. From this perspective, it becomes natural to replace the standard image features used in DPM with a learned feature extractor. We call the resulting model DeepPyramid DPM and experimentally validate it on PASCAL VOC. DeepPyramid DPM significantly outperforms DPMs based on histograms of oriented gradients features (HOG) and slightly outperforms a comparable version of the recently introduced R-CNN detection system, while running an order of magnitude faster.

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