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What Can Help Pedestrian Detection?

2017-05-08CVPR 2017Unverified0· sign in to hype

Jiayuan Mao, Tete Xiao, Yuning Jiang, Zhimin Cao

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Abstract

Aggregating extra features has been considered as an effective approach to boost traditional pedestrian detection methods. However, there is still a lack of studies on whether and how CNN-based pedestrian detectors can benefit from these extra features. The first contribution of this paper is exploring this issue by aggregating extra features into CNN-based pedestrian detection framework. Through extensive experiments, we evaluate the effects of different kinds of extra features quantitatively. Moreover, we propose a novel network architecture, namely HyperLearner, to jointly learn pedestrian detection as well as the given extra feature. By multi-task training, HyperLearner is able to utilize the information of given features and improve detection performance without extra inputs in inference. The experimental results on multiple pedestrian benchmarks validate the effectiveness of the proposed HyperLearner.

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Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
CaltechHyperLearnerReasonable Miss Rate5.5Unverified

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