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Real-world pedestrian detection method enhanced by semantic segmentation

机译:语义分割增强的真实行人检测方法

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摘要

Although pedestrian detection has been largely improved with the emergence of convolutional neural networks (CNN), the performance in autonomous driving still faces various challenges, which mainly include large-scale variation, illumination variation, and occlusion of different levels. A robust pedestrian detector enhanced by semantic segmentation is proposed. Inspired by the benefits of multitask learning, our main idea lies in integrating the task of semantic segmentation into the detection framework with auxiliary supervision, inheriting the merits of the two-stream network. Specifically, anchor boxes with various scales are paved on the feature maps of a base CNN; detection is performed based on bounding box classification and regression. On the other stream, semantic segmentation is also performed based on the same feature maps. Extensive experiments on the recently published large-scale pedestrian detection benchmark, i.e., CityPersons, show that the additional supervision from semantic segmentation can significantly improve the detection accuracy without extra computational burdens during inference, which demonstrates the superiority of the proposed method. (C) 2019 SPIE and IS&T
机译:尽管随着卷积神经网络(CNN)的出现,行人检测得到了很大的改善,但自动驾驶的性能仍然面临各种挑战,主要包括大规模变化,照度变化和不同级别的遮挡。提出了一种通过语义分割增强的鲁棒行人检测器。受多任务学习的好处启发,我们的主要思想是在辅助监督下将语义分段的任务集成到检测框架中,从而继承了两流网络的优点。具体而言,在基础CNN的特征图上铺上各种比例的锚框。基于边界框分类和回归执行检测。另一方面,还基于相同的特征图执行语义分割。对最近发布的大规模行人检测基准(即CityPersons)进行的大量实验表明,语义分割的额外监督可以显着提高检测准确性,而在推理过程中不会产生额外的计算负担,这证明了该方法的优越性。 (C)2019 SPIE和IS&T

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