Frontiers in Neuroscience (Jul 2023)

Learning parallel and hierarchical mechanisms for edge detection

  • Ling Zhou,
  • Chuan Lin,
  • Chuan Lin,
  • Chuan Lin,
  • Xintao Pang,
  • Xintao Pang,
  • Xintao Pang,
  • Hao Yang,
  • Hao Yang,
  • Yongcai Pan,
  • Yongcai Pan,
  • Yuwei Zhang,
  • Yuwei Zhang

DOI
https://doi.org/10.3389/fnins.2023.1194713
Journal volume & issue
Vol. 17

Abstract

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Edge detection is one of the fundamental components of advanced computer vision tasks, and it is essential to preserve computational resources while ensuring a certain level of performance. In this paper, we propose a lightweight edge detection network called the Parallel and Hierarchical Network (PHNet), which draws inspiration from the parallel processing and hierarchical processing mechanisms of visual information in the visual cortex neurons and is implemented via a convolutional neural network (CNN). Specifically, we designed an encoding network with parallel and hierarchical processing based on the visual information transmission pathway of the “retina-LGN-V1” and meticulously modeled the receptive fields of the cells involved in the pathway. Empirical evaluation demonstrates that, despite a minimal parameter count of only 0.2 M, the proposed model achieves a remarkable ODS score of 0.781 on the BSDS500 dataset and ODS score of 0.863 on the MBDD dataset. These results underscore the efficacy of the proposed network in attaining superior edge detection performance at a low computational cost. Moreover, we believe that this study, which combines computational vision and biological vision, can provide new insights into edge detection model research.

Keywords