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Enhanced pedestrian detection using deep learning based semantic image segmentation

机译:使用基于深度学习的语义图像分割增强行人检测

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Pedestrian detection and semantic segmentation are highly correlated tasks which can be jointly used for better performance. In this paper, we propose a pedestrian detection method making use of semantic labeling to improve pedestrian detection results. A deep learning based semantic segmentation method is used to pixel-wise label images into 11 common classes. Semantic segmentation results which encodes high-level image representation are used as additional feature channels to be integrated with the low-level HOG+LUV features. Some false positives, such as falsely detected pedestrians located on a tree, can be easier eliminated by making use of the semantic cues. Boosted forest is used for training the integrated feature channels in a cascaded manner for hard negatives mining. Experiments on the Caltech-USA pedestrian dataset show improvements on detection accuracy by using the additional semantic cues.
机译:行人检测和语义分割是高度相关的任务,可以结合使用以提高性能。在本文中,我们提出了一种行人检测方法,该方法利用语义标记来改善行人检测结果。基于深度学习的语义分割方法用于将图像按像素标记为11个常见类。编码高级图像表示的语义分割结果用作与低级HOG + LUV功能集成的附加功能通道。通过使用语义提示,可以更轻松地消除某些误报,例如位于树上的错误检测到的行人。人工林用于级联训练综合特征通道,用于硬底片挖掘。在美国加州理工学院的行人数据集上进行的实验表明,通过使用其他语义提示,可以提高检测精度。

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