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Multi-Scale Feature Pyramid Network: A Heavily Occluded Pedestrian Detection Network Based on ResNet

机译:多尺度特征金字塔网络:基于Reset的严重封闭的行人检测网络

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摘要

The existing pedestrian detection algorithms cannot effectively extract features of heavily occluded targets which results in lower detection accuracy. To solve the heavy occlusion in crowds, we propose a multi-scale feature pyramid network based on ResNet (MFPN) to enhance the features of occluded targets and improve the detection accuracy. MFPN includes two modules, namely double feature pyramid network (FPN) integrated with ResNet (DFR) and repulsion loss of minimum (RLM). We propose the double FPN which improves the architecture to further enhance the semantic information and contours of occluded pedestrians, and provide a new way for feature extraction of occluded targets. The features extracted by our network can be more separated and clearer, especially those heavily occluded pedestrians. Repulsion loss is introduced to improve the loss function which can keep predicted boxes away from the ground truths of the unrelated targets. Experiments carried out on the public CrowdHuman dataset, we obtain 90.96% AP which yields the best performance, 5.16% AP gains compared to the FPN-ResNet50 baseline. Compared with the state-of-the-art works, the performance of the pedestrian detection system has been boosted with our method.
机译:现有的行人检测算法不能有效地提取重闭合目标的特征,这导致较低的检测精度。为了解决人群中的沉重闭塞,我们提出了一种基于Reset(MFPN)的多尺度特征金字塔网络,以增强封闭目标的特征,提高检测精度。 MFPN包括两个模块,即与Reset(DFR)集成的双重特征金字塔网络(FPN)和最小值的排斥损失(RLM)。我们提出了双重FPN,它改善了架构,进一步增强了遮挡行人的语义信息和轮廓,并为封闭目标的特征提取提供了一种新的方式。我们的网络提取的功能可以更分开和更清晰,特别是那些严重封闭的行人。引入排斥损失以改善损失函数,可以将预测的盒子远离无关目标的地面真理。在公共Crowdhuman数据集上进行的实验,我们获得了90.96%的AP,其产生了最佳性能,5.16%的AP增益与FPN-Resnet50基线相比。与最先进的作品相比,人行道检测系统的性能已升高了我们的方法。

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