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Ratio-and-Scale-Aware YOLO for Pedestrian Detection

机译:比例和尺度感知YOLO用于行人检测

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Current deep learning methods seldom consider the effects of small pedestrian ratios and considerable differences in the aspect ratio of input images, which results in low pedestrian detection performance. This study proposes the ratio-and-scale-aware YOLO (RSA-YOLO) method to solve the aforementioned problems. The following procedure is adopted in this method. First, ratio-aware mechanisms are introduced to dynamically adjust the input layer length and width hyperparameters of YOLOv3, thereby solving the problem of considerable differences in the aspect ratio. Second, intelligent splits are used to automatically and appropriately divide the original images into two local images. Ratio-aware YOLO (RA-YOLO) is iteratively performed on the two local images. Because the original and local images produce low- and high-resolution pedestrian detection information after RA-YOLO, respectively, this study proposes new scale-aware mechanisms in which multiresolution fusion is used to solve the problem of misdetection of remarkably small pedestrians in images. The experimental results indicate that the proposed method produces favorable results for images with extremely small objects and those with considerable differences in the aspect ratio. Compared with the original YOLOs (i.e., YOLOv2 and YOLOv3) and several state-of-the-art approaches, the proposed method demonstrated a superior performance for the VOC 2012 comp4, INRIA, and ETH databases in terms of the average precision, intersection over union, and lowest log-average miss rate.
机译:目前的深度学习方法很少考虑小型人行比的影响和输入图像的宽高比的宽度差异,这导致行人检测性能低。本研究提出了比例和尺度感知的YOLO(RSA-YOLO)方法来解决上述问题。此方法采用以下步骤。首先,引入比率感知机制以动态调整YOLOV3的输入层长度和宽度超公数,从而解决纵横比中相当大的差异的问题。其次,智能分裂用于自动并适当地将原始图像分为两个本地图像。比率感知的YOLO(RA-YOLO)在两个本地图像上迭代地执行。因为原始和本地图像分别在RA-YOLO之后产生低分辨率和高分辨率的行人检测信息,所以该研究提出了新的尺度感知机制,其中多分辨率融合用于解决图像中显着小行人的误报问题。实验结果表明,该方法为具有极小物体的图像和具有相当大的宽度差异的图像产生有利的结果。与原始的yolos(即yolov2和yolov3)和几种最先进的方法相比,该方法在平均精度,交叉口方面对VOC 2012 Comp4,Inria和Eth数据库展示了卓越的性能联盟和最低日志平均错过率。

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