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Active Convolution: Learning the Shape of Convolution for Image Classification

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arxiv 1703.09076 v1 pith:XKZ5TQDE submitted 2017-03-27 cs.CV

Active Convolution: Learning the Shape of Convolution for Image Classification

classification cs.CV
keywords convolutionshapeunitconventionalnetworksactivearchitecturesclassification
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In recent years, deep learning has achieved great success in many computer vision applications. Convolutional neural networks (CNNs) have lately emerged as a major approach to image classification. Most research on CNNs thus far has focused on developing architectures such as the Inception and residual networks. The convolution layer is the core of the CNN, but few studies have addressed the convolution unit itself. In this paper, we introduce a convolution unit called the active convolution unit (ACU). A new convolution has no fixed shape, because of which we can define any form of convolution. Its shape can be learned through backpropagation during training. Our proposed unit has a few advantages. First, the ACU is a generalization of convolution; it can define not only all conventional convolutions, but also convolutions with fractional pixel coordinates. We can freely change the shape of the convolution, which provides greater freedom to form CNN structures. Second, the shape of the convolution is learned while training and there is no need to tune it by hand. Third, the ACU can learn better than a conventional unit, where we obtained the improvement simply by changing the conventional convolution to an ACU. We tested our proposed method on plain and residual networks, and the results showed significant improvement using our method on various datasets and architectures in comparison with the baseline.

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  1. New pointwise convolution in Deep Neural Networks through Extremely Fast and Non Parametric Transforms

    cs.CV 2019-06 unverdicted novelty 5.0

    Replacing pointwise convolutions with DWHT yields a model with 79.1% fewer parameters, 48.4% fewer FLOPs, and 1.49% higher accuracy than MobileNet-V1 on CIFAR-100.