IEEE Access (Jan 2022)

Bidirectional Parallel Feature Pyramid Network for Object Detection

  • Zhengning Zhang,
  • Lin Zhang,
  • Yue Wang,
  • Pengming Feng,
  • Baochen Sun

DOI
https://doi.org/10.1109/ACCESS.2022.3173732
Journal volume & issue
Vol. 10
pp. 49422 – 49432

Abstract

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State-of-the-art Feature Pyramid Networks (FPNs) often focus on extracting features across different levels. In this paper, we propose a novel architecture, Bidirectional Parallel Feature Pyramid Network (BPFPN), to capture multi-scale spatial information from each level of FPN effectively. BPFPN consists of two blocks: Cross-level Channel Attention-Refinement (ClCSAR) Block and Weighted Parallel Feature Aggregation (WPFA) Block. ClCSAR block uses a channel attention mechanism to strengthen the context information of lower-level feature with aid from the upper-level feature. WPFA block exploits discriminating information from variable receptive fields via integrating multi-branch by employing dilated convolutions and using attention mechanisms to capture the salient dependencies over branches. Considering the incremental computation, we also give a lightweight version of BPFPN, namely BPFPN-Lite, integrated with an Efficient WPFA (E-WPFA) to improve detection accuracy while maintaining efficiency. Our proposed network can be easily plugged into existing object detection models and outperforms different feature pyramids methods by $0.2\sim 2.1$ on the COCO test-dev benchmark without bells and whistles.

Keywords