IEEE Access (Jan 2020)

Pedestrian as Points: An Improved Anchor-Free Method for Center-Based Pedestrian Detection

  • Jiawei Cai,
  • Feifei Lee,
  • Shuai Yang,
  • Chaowei Lin,
  • Hanqing Chen,
  • Koji Kotani,
  • Qiu Chen

DOI
https://doi.org/10.1109/ACCESS.2020.3027590
Journal volume & issue
Vol. 8
pp. 179666 – 179677

Abstract

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Although excessive proposals using traditional sliding-window methods or prevailing anchor-based techniques have been proposed to deal with deep learning-based pedestrian detection, it is still a promising yet challenging problem. In this paper, we propose a precise, flexible and thoroughly anchor-free, as well as proposal-free framework named Pedestrian-as-Points Network (PP-Net) for pedestrian detection. Specifically, we model a pedestrian as a single point, i.e., the center point of the instance, and predict the pedestrian scale at each detected center point. In order to achieve higher accuracy, we build a pyramid-like structure based on the backbone as a feature extractor to aggregate multi-level information. In addition, we construct a deep guidance module (DGM) at the top of the backbone, so that the higher-level information can be captured in the process of building a feature pyramid network (FPN) to avoid the dilution of high-level information on the top-down pathway. We further design a feature fusion unit (FFU) to fuse the fine-level features well with the coarse-level semantic information from the top-down pathway. With the only post-processing non-maximum suppression (NMS), we achieve better performance than many state-of-the-arts methods on the challenging pedestrian detection datasets.

Keywords