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What Can Help Pedestrian Detection?

机译:什么可以帮助行人检测?

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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.
机译:聚集额外的特征已经被认为是增强传统行人检测方法的有效方法。但是,关于基于CNN的行人探测器是否以及如何从这些额外功能中受益的研究仍很缺乏。本文的第一个贡献是通过将其他功能汇总到基于CNN的行人检测框架中来探索这个问题。通过广泛的实验,我们定量评估了各种额外功能的影响。此外,我们提出了一种新颖的网络架构,即HyperLearner,以共同学习行人检测以及给定的额外功能。通过多任务训练,HyperLearner能够利用给定功能的信息并提高检测性能,而无需额外的推断。在多个行人基准上的实验结果验证了所提出的HyperLearner的有效性。

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