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Scaling-Translation-Equivariant Networks with Decomposed Convolutional Filters

Publication ,  Journal Article
Zhu, W; Qiu, Q; Calderbank, R; Sapiro, G; Cheng, X
September 24, 2019

Encoding the scale information explicitly into the representation learned by a convolutional neural network (CNN) is beneficial for many computer vision tasks especially when dealing with multiscale inputs. We study, in this paper, a scaling-translation-equivariant (ST-equivariant) CNN with joint convolutions across the space and the scaling group, which is shown to be both sufficient and necessary to achieve equivariance for the regular representation of the scaling-translation group ST . To reduce the model complexity and computational burden, we decompose the convolutional filters under two pre-fixed separable bases and truncate the expansion to low-frequency components. A further benefit of the truncated filter expansion is the improved deformation robustness of the equivariant representation, a property which is theoretically analyzed and empirically verified. Numerical experiments demonstrate that the proposed scaling-translation-equivariant network with decomposed convolutional filters (ScDCFNet) achieves significantly improved performance in multiscale image classification and better interpretability than regular CNNs at a reduced model size.

Duke Scholars

Publication Date

September 24, 2019
 

Citation

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Zhu, W., Qiu, Q., Calderbank, R., Sapiro, G., & Cheng, X. (2019). Scaling-Translation-Equivariant Networks with Decomposed Convolutional Filters.
Zhu, Wei, Qiang Qiu, Robert Calderbank, Guillermo Sapiro, and Xiuyuan Cheng. “Scaling-Translation-Equivariant Networks with Decomposed Convolutional Filters,” September 24, 2019.
Zhu W, Qiu Q, Calderbank R, Sapiro G, Cheng X. Scaling-Translation-Equivariant Networks with Decomposed Convolutional Filters. 2019 Sep 24;
Zhu W, Qiu Q, Calderbank R, Sapiro G, Cheng X. Scaling-Translation-Equivariant Networks with Decomposed Convolutional Filters. 2019 Sep 24;

Publication Date

September 24, 2019