4.7 Article

Anisotropic Convolution for Image Classification

期刊

IEEE TRANSACTIONS ON IMAGE PROCESSING
卷 29, 期 -, 页码 5584-5595

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2020.2985875

关键词

Convolution; Shape; Kernel; Feature extraction; Task analysis; Training; Neural networks; Anisotropic convolution; image classification; object localization

资金

  1. Beijing Natural Science Foundation [JQ18018, L172051, L182058]
  2. National Key RD Plan [2017YFB1002801]
  3. Natural Science Foundation of China [U1936204, U1803119, U1736106, 61876100, 61751212, 61721004, 61906192, 61972397, 61772225]
  4. NSFC-General Technology Collaborative Fund for Basic Research [U1636218]
  5. Key Research Program of Frontier Sciences, CAS [YZDJ-SSW-JSC040]
  6. Science and Technology Service Network Initiative, CAS [KFJ-STS-SCYD-317]
  7. CAS External Cooperation Key Project
  8. Youth Innovation Promotion Association, CAS

向作者/读者索取更多资源

Convolutional neural networks are built upon simple but useful convolution modules. The traditional convolution has a limitation on feature extraction and object localization due to its fixed scale and geometric structure. Besides, the loss of spatial information also restricts the networks' performance and depth. To overcome these limitations, this paper proposes a novel anisotropic convolution by adding a scale factor and a shape factor into the traditional convolution. The anisotropic convolution augments the receptive fields flexibly and dynamically depending on the valid sizes of objects. In addition, the anisotropic convolution is a generalized convolution. The traditional convolution, dilated convolution and deformable convolution can be viewed as its special cases. Furthermore, in order to improve the training efficiency and avoid falling into a local optimum, this paper introduces a simplified implementation of the anisotropic convolution. The anisotropic convolution can be applied to arbitrary convolutional networks and the enhanced networks are called ACNs (anisotropic convolutional networks). Experimental results show that ACNs achieve better performance than many state-of-the-art methods and the baseline networks in tasks of image classification and object localization, especially in classification task of tiny images.

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