基于深度和姿态估计的危险行人预测

Stephanie Nix, Kana Koishi, H. Madokoro, T. K. Saito, Kazuhito Sato
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引用次数: 0

摘要

根据东京消防厅的数据,从2015年到2019年,有211人因行人在走路时使用智能手机而被送往医院。这些事故中约有40%是由于行人撞到自行车、行人和其他物体。已经通过了一些地方法令来减少行人从事这种不安全行为所带来的危险,但这并没有显著减少走路时使用智能手机的情况。在本文中,我们提出了一个度量来评估视频中行人所构成的危险程度。在我们提出的方法中,我们使用MediaPipe提取行人的骨架,然后通过估计行人在图像中的姿态和深度来预测危险级别。然后,我们通过计算车载摄像机拍摄的视频的深度和姿态估计器的精度来评估我们的模型的精度。我们估计了当地道路上的危险等级,得到了0.459的准确度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Dangerous Pedestrians using Depth and Stance Estimation
According to the Tokyo Fire Department, from 2015 to 2019, there were 211 people who were taken to the hospital due to accidents involving pedestrians using their smartphones while walking. Around 40% of these accidents were due to pedestrians running into bicycles, people, and other objects. Local ordinances have been passed to reduce the danger posed by pedestrians engaging in this unsafe behavior, but this has not significantly reduced the use of smartphones while walking. In this paper, we propose a metric for evaluating the level of danger posed by pedestrians captured on video. In our proposed method, we extract the skeletons of pedestrians using MediaPipe, then predict the danger level by estimating the pedestrian stance and depth within the image. Then, we evaluate the accuracy of our model by calculating the accuracy of the depth and stance estimators on a video taken by a car-mounted camera. We estimated danger levels on a local road and obtained an accuracy of 0.459.
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