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A Channel-Cascading Pedestrian Detection Network for Small-Size Pedestrians

机译:小型行人的通道级联行人检测网络

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摘要

At present, there are several new challenges for multi-scale pedestrian detection in wide-angle field of view, especially small-size pedestrians. So the problem is how we can detect pedestrians efficiently and accurately with limited resources in wide-angle field of vision. In this work, we propose a Channel-Cascading pedestrian detection network for small-size pedestrians. In combination with the two-stage idea of Faster-RCNN in our detector, the optimized network was applied and the regional proposal network was improved. We propose a novel feature extraction network as optimized network, which we call the "Channel-Cascading Network" (CCN), that fuses information between channels by progressive cascading strategy and adapts our idea to other network designs. The experimental results show that our detector performs better for small-size pedestrians, it not only the precision of pedestrian detection in wide field of view is greatly improved especially small-size pedestrian, but also the speed is accelerated.
机译:当前,在广角视野中,尤其是小型行人的多尺度行人检测存在一些新的挑战。因此,问题在于如何在有限的资源下,在广角视野中高效,准确地检测行人。在这项工作中,我们提出了一种针对小型行人的通道级联行人检测网络。结合我们的检测器中Faster-RCNN的两阶段思想,应用了优化网络并改进了区域提议网络。我们提出了一种新颖的特征提取网络作为优化网络,我们称之为“通道级联网络”(CCN),该网络通过渐进级联策略在通道之间融合信息,并使我们的想法适应其他网络设计。实验结果表明,我们的检测器对于小尺寸的行人有更好的表现,不仅大大提高了大视野下的行人检测精度,特别是小尺寸的行人,而且速度加快了。

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