NOH-NMS: Improving Pedestrian Detection by Nearby Objects Hallucination

27 Jul 2020  ·  Penghao Zhou, Chong Zhou, Pai Peng, Junlong Du, Xing Sun, Xiaowei Guo, Feiyue Huang ·

Greedy-NMS inherently raises a dilemma, where a lower NMS threshold will potentially lead to a lower recall rate and a higher threshold introduces more false positives. This problem is more severe in pedestrian detection because the instance density varies more intensively. However, previous works on NMS don't consider or vaguely consider the factor of the existent of nearby pedestrians. Thus, we propose Nearby Objects Hallucinator (NOH), which pinpoints the objects nearby each proposal with a Gaussian distribution, together with NOH-NMS, which dynamically eases the suppression for the space that might contain other objects with a high likelihood. Compared to Greedy-NMS, our method, as the state-of-the-art, improves by $3.9\%$ AP, $5.1\%$ Recall, and $0.8\%$ $\text{MR}^{-2}$ on CrowdHuman to $89.0\%$ AP and $92.9\%$ Recall, and $43.9\%$ $\text{MR}^{-2}$ respectively.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Pedestrian Detection CityPersons NOH-NMS Reasonable MR^-2 10.8 # 13
Heavy MR^-2 53.0 # 15
Partial MR^-2 11.2 # 7
Bare MR^-2 6.6 # 6
Object Detection CrowdHuman (full body) NOH-NMS AP 89.0 # 12
mMR 43.9 # 11

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