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Cycle Pixel Difference Network for Crisp Edge Detection

arXiv:2409.04272 - [arXiv,PDF]
Authors
  • Name
    Changsong Liu
  • Name
    Wei Zhang
  • Name
    Yanyan Liu
  • Name
    Mingyang Li
  • Name
    Wenlin Li
  • Name
    Yimeng Fan
  • Name
    Xiangnan Bai
  • Name
    Liang Zhang
  • Affiliation
    Department of Computer Science, University A
  • Affiliation
    Department of Mathematics, University B
  • Affiliation
    Department of Physics, University C
  • Affiliation
    Department of Chemistry, University D
  • Affiliation
    Department of Biology, University E
  • Affiliation
    Department of Engineering, University F
  • Affiliation
    Department of Environmental Science, University G
  • Affiliation
    Department of Economics, University H
Edge detection, as a fundamental task in computer vision, has garnered increasing attention. The advent of deep learning has significantly advanced this field. However, recent deep learning-based methods generally face two significant issues: 1) reliance on large-scale pre-trained weights, and 2) generation of thick edges. We construct a U-shape encoder-decoder model named CPD-Net that successfully addresses these two issues simultaneously. In response to issue 1), we propose a novel cycle pixel difference convolution (CPDC), which effectively integrates edge prior knowledge with modern convolution operations, consequently successfully eliminating the dependence on large-scale pre-trained weights. As for issue 2), we construct a multi-scale information enhancement module (MSEM) and a dual residual connection-based (DRC) decoder to enhance the edge location ability of the model, thereby generating crisp and clean contour maps. Comprehensive experiments conducted on four standard benchmarks demonstrate that our method achieves competitive performance on the BSDS500 dataset (ODS=0.813 and AC=0.352), NYUD-V2 (ODS=0.760 and AC=0.223), BIPED dataset (ODS=0.898 and AC=0.426), and CID (ODS=0.59). Our approach provides a novel perspective for addressing these challenges in edge detection.