监督人们计数使用头顶鱼眼相机

Shengye Li, M. Tezcan, P. Ishwar, J. Konrad
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引用次数: 24

摘要

我们提出了两种监督的方法来计数的人使用头顶鱼眼相机。与标准相机相比,鱼眼相机提供了更大的视野,当安装在头顶时,可以减少遮挡。然而,为标准相机开发的方法在鱼眼图像上表现不佳,因为它们没有考虑到径向图像的几何形状。此外,没有具有径向对齐边界框注释的大规模鱼眼图像数据集可用于训练。我们采用在标准图像上训练的YOLOv3来计算鱼眼图像中的人。在一种方法中,YOLOv3应用于24个旋转的重叠窗口,并对结果进行后处理以产生人口计数。在另一种方法中,YOLOv3应用于通过背景减法提取的感兴趣窗口。为了评估,我们收集并注释了我们公开的室内鱼眼图像数据集。在该数据集上的实验表明,我们的方法将两个自然基准的计算MAE的人数减少了60%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supervised People Counting Using An Overhead Fisheye Camera
We propose two supervised methods for people counting using an overhead fisheye camera. As opposed to standard cameras, fisheye cameras offer a large field of view and, when mounted overhead, reduce occlusions. However, methods developed for standard cameras perform poorly on fisheye images since they do not account for the radial image geometry. Furthermore, no large-scale fisheye-image datasets with radially-aligned bounding box annotations are available for training. We adapt YOLOv3 trained on standard images for people counting in fisheye images. In one method, YOLOv3 is applied to 24 rotated, overlapping windows and the results are post-processed to produce a people count. In another method, YOLOv3 is applied to windows of interest extracted by background subtraction. For evaluation, we collected and annotated an indoor fisheye-image dataset that we make public. Experiments on this dataset show that our methods reduce the people counting MAE of two natural benchmarks by over 60%.
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