基于时空自我运动估计的以自我为中心的摄像机视图中行为感知的行人轨迹预测

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine learning and knowledge extraction Pub Date : 2023-08-03 DOI:10.3390/make5030050
Phillip Czech, Markus Braun, U. Kressel, Bin Yang
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引用次数: 1

摘要

随着自动驾驶系统的不断发展,预测行人行为的关键任务越来越受到人们的关注。由于动态变化的场景,从自我车辆摄像机的角度预测未来行人的轨迹尤其具有挑战性。因此,我们提出了行为感知行人轨迹预测(BA-PTP),这是一种以自我为中心的摄像机视图下行人轨迹预测的新方法。它结合了从现实交通场景观察中提取的行为特征,如行人的身体和头部方向,以及他们的姿势,以及来自身体和头部边界框的位置信息。对于每种输入模态,我们采用了独立的编码流,这些编码流通过模态注意机制组合在一起。为了解释相机在自我中心视角下的自我运动,我们引入了一种新的自我运动预测方法——时空自我运动模块(STEMM)。与相关工作相比,它利用了自驾车从预定路线中采样的空间目标点。我们用两个数据集实验验证了我们的方法在城市交通场景中行人行为预测的有效性。在消融研究的基础上,我们展示了在图像平面上结合不同行为特征进行行人轨迹预测的优势。此外,我们还展示了将STEMM集成到我们的行人轨迹预测方法BA-PTP中的好处。BA-PTP在PIE数据集上实现了最先进的性能,在MSE-1.5 s和CMSE中优于先前的工作7%,在CFMSE中优于9%。
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Behavior-Aware Pedestrian Trajectory Prediction in Ego-Centric Camera Views with Spatio-Temporal Ego-Motion Estimation
With the ongoing development of automated driving systems, the crucial task of predicting pedestrian behavior is attracting growing attention. The prediction of future pedestrian trajectories from the ego-vehicle camera perspective is particularly challenging due to the dynamically changing scene. Therefore, we present Behavior-Aware Pedestrian Trajectory Prediction (BA-PTP), a novel approach to pedestrian trajectory prediction for ego-centric camera views. It incorporates behavioral features extracted from real-world traffic scene observations such as the body and head orientation of pedestrians, as well as their pose, in addition to positional information from body and head bounding boxes. For each input modality, we employed independent encoding streams that are combined through a modality attention mechanism. To account for the ego-motion of the camera in an ego-centric view, we introduced Spatio-Temporal Ego-Motion Module (STEMM), a novel approach to ego-motion prediction. Compared to the related works, it utilizes spatial goal points of the ego-vehicle that are sampled from its intended route. We experimentally validated the effectiveness of our approach using two datasets for pedestrian behavior prediction in urban traffic scenes. Based on ablation studies, we show the advantages of incorporating different behavioral features for pedestrian trajectory prediction in the image plane. Moreover, we demonstrate the benefit of integrating STEMM into our pedestrian trajectory prediction method, BA-PTP. BA-PTP achieves state-of-the-art performance on the PIE dataset, outperforming prior work by 7% in MSE-1.5 s and CMSE as well as 9% in CFMSE.
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6.30
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