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Papers/Is Faster R-CNN Doing Well for Pedestrian Detection?

Is Faster R-CNN Doing Well for Pedestrian Detection?

Liliang Zhang, Liang Lin, Xiaodan Liang, Kaiming He

2016-07-24Region ProposalPedestrian Detectionobject-detectionObject Detection
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Abstract

Detecting pedestrian has been arguably addressed as a special topic beyond general object detection. Although recent deep learning object detectors such as Fast/Faster R-CNN [1, 2] have shown excellent performance for general object detection, they have limited success for detecting pedestrian, and previous leading pedestrian detectors were in general hybrid methods combining hand-crafted and deep convolutional features. In this paper, we investigate issues involving Faster R-CNN [2] for pedestrian detection. We discover that the Region Proposal Network (RPN) in Faster R-CNN indeed performs well as a stand-alone pedestrian detector, but surprisingly, the downstream classifier degrades the results. We argue that two reasons account for the unsatisfactory accuracy: (i) insufficient resolution of feature maps for handling small instances, and (ii) lack of any bootstrapping strategy for mining hard negative examples. Driven by these observations, we propose a very simple but effective baseline for pedestrian detection, using an RPN followed by boosted forests on shared, high-resolution convolutional feature maps. We comprehensively evaluate this method on several benchmarks (Caltech, INRIA, ETH, and KITTI), presenting competitive accuracy and good speed. Code will be made publicly available.

Results

TaskDatasetMetricValueModel
Autonomous VehiclesCaltechReasonable Miss Rate7.3RPN+BF
Autonomous VehiclesCaltechReasonable Miss Rate8.7FasterRCNN
Pedestrian DetectionCaltechReasonable Miss Rate7.3RPN+BF
Pedestrian DetectionCaltechReasonable Miss Rate8.7FasterRCNN

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