Authors
Shangzhen Luan, Chen Chen, Baochang Zhang, Jungong Han, Jianzhuang Liu
Publication date
2018/5/10
Journal
IEEE Transactions on Image Processing
Volume
27
Issue
9
Pages
4357-4366
Publisher
IEEE
Description
In steerable filters, a filter of arbitrary orientation can be generated by a linear combination of a set of “basis filters.” Steerable properties dominate the design of the traditional filters, e.g., Gabor filters and endow features the capability of handling spatial transformations. However, such properties have not yet been well explored in the deep convolutional neural networks (DCNNs). In this paper, we develop a new deep model, namely, Gabor convolutional networks (GCNs or Gabor CNNs), with Gabor filters incorporated into DCNNs such that the robustness of learned features against the orientation and scale changes can be reinforced. By manipulating the basic element of DCNNs, i.e., the convolution operator, based on Gabor filters, GCNs can be easily implemented and are readily compatible with any popular deep learning architecture. We carry out extensive experiments to demonstrate the promising performance …
Total citations
20172018201920202021202220232024325616677637134
Scholar articles
S Luan, C Chen, B Zhang, J Han, J Liu - IEEE Transactions on Image Processing, 2018