Human Pose Estimation in Real Traffic Scenes

Viktor Kress, Janis Jung, Stefan Zernetsch, Konrad Doll, B. Sick
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引用次数: 10

Abstract

This work evaluates human pose estimation from a moving vehicle for use in road traffic applications such as automated or autonomous driving. The lack of annotated human pose datasets is a challenge for research on autonomous driving with sufficient safety for pedestrians and cyclists. Hence, a dedicated dataset was created, which was recorded in real traffic and contains both pedestrians and cyclists. The dataset represents diverse conditions in road traffic and different appearances of people and allows for a realistic evaluation of the performance of human pose estimation. In order to obtain ground truth, the data were labeled manually and $3D$ poses were measured by means of an intersection equipped with a wide angle stereo camera system. One recent method for $2D$ pose estimation and another approach for $3D$ pose estimation from literature are investigated. As shown by this research, $2D$ poses estimated in traffic scenes achieve a similar accuracy as state-of-the-art results obtained on other datasets. Moreover, $3D$ pose estimation based on single images outperforms a naive distance measurement of individual joints in disparity maps obtained by a stereo camera and the reached accuracy suggests that the use of $3D$ pose estimation for intention detection and trajectory forecast is feasible. Overall, a dependency of the results on the distance of the respective person and less reliable results for cyclists compared to pedestrians were observed.
真实交通场景中的人体姿态估计
这项工作评估了在自动驾驶或自动驾驶等道路交通应用中使用的移动车辆的人体姿势估计。缺乏带注释的人体姿势数据集是对行人和骑自行车者足够安全的自动驾驶研究的挑战。因此,我们创建了一个专门的数据集,它记录了真实的交通状况,包括行人和骑自行车的人。该数据集代表了道路交通的不同条件和人的不同外观,并允许对人体姿势估计的性能进行现实的评估。为了获得地面真实情况,对数据进行人工标记,并通过配备广角立体摄像机系统的交叉点测量$3D$姿态。从文献中研究了一种新的二维姿态估计方法和另一种三维姿态估计方法。这项研究表明,在交通场景中估计的2D姿势与在其他数据集上获得的最新结果具有相似的准确性。此外,基于单幅图像的$3D$姿态估计优于由立体摄像机获得的视差图中单个关节的原始距离测量,并且达到的精度表明使用$3D$姿态估计进行意图检测和轨迹预测是可行的。总的来说,结果依赖于各自人的距离,并且与行人相比,骑自行车的人的结果不太可靠。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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