在骑行安全支持信息系统中识别自行车骑行环境以检测交通违规行为

IF 3.2 Q3 TRANSPORTATION
Tetsuya Manabe , Hiroaki Arai , Aya Kojima , Jeyeon Kim
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引用次数: 0

摘要

本文提出了一种仅使用车载设备识别自行车骑行环境的方法。首先,建立了一个识别自行车骑行环境的基本子系统,并对其功能进行了验证。研究结果表明,该子系统利用一个开源的训练有素的模型,可以检测到公路上的骑行情况,但无法检测到人行道上的骑行情况。因此,我们强调需要进行迁移学习,特别是使用人行道视角图像,以实现自行车骑行环境的识别。随后,我们利用转移学习模型和人工标注的训练数据进行了自行车骑行环境识别。结果表明,经过迁移学习,以前无法实现的人行道骑行检测变得可行。识别率超过了 80%。此外,我们还开发了包括迁移学习模型在内的四种骑行环境识别算法,并比较了它们在不同道路环境和骑行条件下的性能。结果表明,兴趣区域(ROI)扩展识别算法具有最高的识别性能(平均 93%)。因此,本文对实现自行车骑行环境识别,特别是在骑行安全支持信息系统中检测交通违规行为方面,提出了宝贵的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bicycle riding environment identification for detecting traffic violation in a riding safety support information system

This paper proposes a method for identifying the bicycle riding environment using only onboard equipment. Initially, a fundamental subsystem is established for identifying the bicycle riding environment, and its functionality is validated. The findings indicate that the subsystem, utilizing an open-source trained model, can detect riding on roadways but not on sidewalks. Consequently, we emphasize the need for transfer learning, specifically using sidewalk viewpoint images, to enable the identification of bicycle riding environments. Subsequently, we conduct bicycle riding environment identification by employing a transfer learning model with manually labeled training data. The results demonstrate that after transfer learning, sidewalk riding detection, which was previously unachievable, becomes feasible. The identification rate was over 80%. Furthermore, we develop four riding environment identification algorithms, including the transfer learning model, and compare their performance across various road environments and riding conditions. Consequently, it is established that the region of interest (ROI) extension identification algorithm exhibits the highest identification performance (93% on average). As a result, this paper contributes valuable insights into the realization of bicycle riding environment identification, particularly in the context of detecting traffic violations within the riding safety support information system.

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来源期刊
IATSS Research
IATSS Research TRANSPORTATION-
CiteScore
6.40
自引率
6.20%
发文量
44
审稿时长
42 weeks
期刊介绍: First published in 1977 as an international journal sponsored by the International Association of Traffic and Safety Sciences, IATSS Research has contributed to the dissemination of interdisciplinary wisdom on ideal mobility, particularly in Asia. IATSS Research is an international refereed journal providing a platform for the exchange of scientific findings on transportation and safety across a wide range of academic fields, with particular emphasis on the links between scientific findings and practice in society and cultural contexts. IATSS Research welcomes submission of original research articles and reviews that satisfy the following conditions: 1.Relevant to transportation and safety, and the multiple impacts of transportation systems on security, human health, and the environment. 2.Contains important policy and practical implications based on scientific evidence in the applicable academic field. In addition to welcoming general submissions, IATSS Research occasionally plans and publishes special feature sections and special issues composed of invited articles addressing specific topics.
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