深度学习方法在行车记录仪视频行人碰撞检测中的应用。

Q2 Medicine
Shouhei Kunitomi, Shinichi Takayama, Masayuki Shirakawa
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引用次数: 0

摘要

本研究的目的是阐明深度学习方法在行人碰撞检测中的实用性,该方法使用行车记录仪视频进行高级自动碰撞通知,重点关注行人,因为行人是日本交通死亡人数最多的人群。首先,我们从行车记录仪的视频中创建了一个深度学习的数据集。研究人员从一家视频托管网站和日本汽车研究所(JARI)收集了总计78段行人与汽车碰撞事故的行车记录仪视频。从总计1212张静止图像的视频数据中选择单个帧,并将其与类别和位置信息一起添加到我们的数据集中。然后将该数据集划分为训练、验证和测试数据集。接下来,基于训练数据集进行深度学习,以学习行人碰撞图像的特征,这些图像捕捉了碰撞时行人的行为。根据具有不同特征组合的不同测试集,以图像数据中行人碰撞的正确预测百分比来评估训练模型的行人碰撞检测性能。我们的研究结果表明,该方法在白天具有高精度的碰撞检测,清晰的行人包裹轨迹事故数据,包括准确的行人碰撞位置信息检测。然而,夜间,不明确的事故数据导致错误检测或没有检测。通过降低曝光值和分辨率来降低检出率。本研究的结果表明,通过使用行车记录仪视频的深度学习,行人碰撞检测是可能的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Deep Learning Methods for Pedestrian Collision Detection Using Dashcam Videos.

The goal of this study is to clarify the usefulness of deep learning methods for pedestrian collision detection using dashcam videos for advanced automatic collision notification, focusing on pedestrians, as they make up the highest number of traffic fatalities in Japan. First, we created a dataset for deep learning from dashcam videos. A total of 78 dashcam videos of pedestrian-to-automobile accidents were collected from a video hosting website and from the Japan Automobile Research Institute (JARI). Individual frames were selected from the video data amounting to a total of 1,212 still images, which were added to our dataset with class and location information. This dataset was then divided to create training, validation, and test datasets. Next, deep learning was performed based on the training dataset to learn the features of pedestrian collision images, which are images that capture pedestrian behavior at the time of the collision. Pedestrian collision detection performance of the trained model was evaluated as the percentage of correct predictions of pedestrian collisions in image data according to varied test sets with different combinations of characteristics. Our results for the proposed method show high-precision collision detection for daytime, clear pedestrian wrap trajectory accident data, including accurate detection of pedestrian collision location information. However, nighttime, unclear accident data resulted in false detection or no detection. Reduction of exposure value and resolution was confirmed to reduce detection rate. The results of the present study suggest the possibility of pedestrian collision detection by deep learning using dashcam videos.

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来源期刊
Stapp car crash journal
Stapp car crash journal Medicine-Medicine (all)
CiteScore
3.20
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