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Small-size Pedestrian Detection in Large Scene Based on Fast R-CNN

机译:基于快速R-CNN的大场景小尺寸行人检测

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Pedestrian detection is a canonical sub-problem of object detection with high demand during recent years. Although recent deep learning object detectors such as Fast/Faster R-CNN have shown excellent performance for general object detection, they have limited success for small size pedestrian detection in large-view scene. We study that the insufficient resolution of feature maps lead to the unsatisfactory accuracy when handling small instances. In this paper, we investigate issues involving Fast R-CNN for pedestrian detection. Driven by the observations, we propose a very simple but effective baseline for pedestrian detection based on Fast R-CNN, employing the DPM detector to generate proposals for accuracy, and training a fast R-CNN style network to jointly optimize small size pedestrian detection with skip connection concatenating feature from different layers to solving coarseness of feature maps. And the accuracy is improved in our research for small size pedestrian detection in the real large scene.
机译:行人检测是近年来对对象检测的一个典型子问题,需求量很大。尽管最近的深度学习对象检测器(如快速/快速R-CNN)在一般对象检测方面表现出出色的性能,但在大视野场景中进行小尺寸行人检测方面却取得了有限的成功。我们研究了特征图的分辨率不足导致在处理小实例时精度不理想的问题。在本文中,我们研究了涉及快速R-CNN的行人检测问题。在观察的驱动下,我们提出了一种基于Fast R-CNN的行人检测非常简单但有效的基线,采用DPM检测器生成准确性建议,并训练快速R-CNN样式网络以共同优化小尺寸行人检测。跳过来自不同层的连接级联特征以解决特征图的粗糙性。在实际大型场景中的小型行人检测中,我们的研究精度得到了提高。

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