A Pedestrian Detection Model Based on Binocular Information Fusion

Juan Zhang, Zhonggui Ma, Nuerxiati Nuermaimaiti
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Abstract

Pedestrian detection, as a special kind of target detection, is a research hotspot in the field of image processing and computer vision. Because monocular vision cannot obtain the depth information of the image, it cannot meet the accuracy requirements of pedestrian detection. In order to solve these problems, a new cascading pedestrian detection model based on PSMNet binocular information fusion and improved faster R-CNN pedestrian detection model is proposed. Firstly, binocular images are fed into the original PSMNet binocular information fusion module to get the disparity map, and then left and right images are fused by the disparity map to get the fusion image. Secondly, in the improved faster R-CNN pedestrian detection module, the left, right and fusion image of one frame are as separate inputs, and pedestrian detection is carried out respectively. Finally, the detection results of the three channels are passed through the target consistency validation module, and the verified pedestrian detection target is as the final output detection result. The simulation results show that the accuracy and recall rate of the cascading model are improved, the missed detection rate is reduced to 13.42%, and the accuracy rate is 88.58%.
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基于双目信息融合的行人检测模型
行人检测作为一种特殊的目标检测,是图像处理和计算机视觉领域的研究热点。由于单目视觉无法获得图像的深度信息,无法满足行人检测的精度要求。为了解决这些问题,提出了一种新的基于PSMNet双目信息融合和改进的更快R-CNN行人检测模型的级联行人检测模型。首先将双目图像输入原PSMNet双目信息融合模块得到视差图,然后将左右图像进行视差图融合得到融合图像。其次,在改进的更快的R-CNN行人检测模块中,将一帧的左、右和融合图像作为单独的输入,分别进行行人检测。最后将三个通道的检测结果通过目标一致性验证模块,验证后的行人检测目标作为最终输出的检测结果。仿真结果表明,该级联模型的准确率和召回率得到了提高,漏检率降至13.42%,准确率为88.58%。
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