Weakly Supervised Multi-Modal 3D Human Body Pose Estimation for Autonomous Driving

P. Bauer, Arij Bouazizi, U. Kressel, F. Flohr
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引用次数: 3

Abstract

Accurate 3D human pose estimation (3D HPE) is crucial for enabling autonomous vehicles (AVs) to make informed decisions and respond proactively in critical road scenarios. Promising results of 3D HPE have been gained in several domains such as human-computer interaction, robotics, sports and medical analytics, often based on data collected in well-controlled laboratory environments. Nevertheless, the transfer of 3D HPE methods to AVs has received limited research attention, due to the challenges posed by obtaining accurate 3D pose annotations and the limited suitability of data from other domains.We present a simple yet efficient weakly supervised approach for 3D HPE in the AV context by employing a high-level sensor fusion between camera and LiDAR data. The weakly supervised setting enables training on the target datasets without any 2D / 3D keypoint labels by using an off-the-shelf 2D joint extractor and pseudo labels generated from LiDAR to image projections. Our approach outperforms state-of-the-art results by up to ~ 13% on the Waymo Open Dataset in the weakly supervised setting and achieves state-of-the-art results in the supervised setting.
用于自动驾驶的弱监督多模态三维人体姿态估计
准确的3D人体姿态估计(3D HPE)对于自动驾驶汽车(av)在关键道路场景中做出明智的决策和主动响应至关重要。3D HPE在人机交互、机器人、体育和医学分析等多个领域取得了可喜的成果,这些成果通常基于在控制良好的实验室环境中收集的数据。然而,由于获得准确的3D姿态注释和其他领域数据的有限适用性所带来的挑战,将3D HPE方法转移到自动驾驶汽车上的研究受到了有限的关注。我们提出了一种简单而有效的弱监督方法,用于自动驾驶环境下的3D HPE,该方法采用相机和激光雷达数据之间的高级传感器融合。弱监督设置允许在没有任何2D / 3D关键点标签的情况下对目标数据集进行训练,使用现成的2D联合提取器和从激光雷达到图像投影生成的伪标签。我们的方法在弱监督设置下比Waymo开放数据集上的最先进结果高出13%,并在监督设置下达到最先进的结果。
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