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利用街景图像和众包互联网市场来衡量泰国曼谷的摩托车头盔使用情况。

Using street imagery and crowdsourcing internet marketplaces to measure motorcycle helmet use in Bangkok, Thailand.

作者信息

Merali Hasan S, Lin Li-Yi, Li Qingfeng, Bhalla Kavi

机构信息

Division of Pediatric Emergency Medicine, McMaster Children's Hospital, Hamilton, Ontario, Canada

Department of Computer Science, Johns Hopkins University, Baltimore, Maryland, USA.

出版信息

Inj Prev. 2020 Apr;26(2):103-108. doi: 10.1136/injuryprev-2018-043061. Epub 2019 Mar 4.

Abstract

INTRODUCTION

The majority of Thailand's road traffic deaths occur on motorised two-wheeled or three-wheeled vehicles. Accurately measuring helmet use is important for the evaluation of new legislation and enforcement. Current methods for estimating helmet use involve roadside observation or surveillance of police and hospital records, both of which are time-consuming and costly. Our objective was to develop a novel method of estimating motorcycle helmet use.

METHODS

Using Google Maps, 3000 intersections in Bangkok were selected at random. At each intersection, hyperlinks of four images 90° apart were extracted. These 12 000 images were processed in Amazon Mechanical Turk using crowdsourcing to identify images containing motorcycles. The remaining images were sorted manually to determine helmet use.

RESULTS

After processing, 462 unique motorcycle drivers were analysed. The overall helmet wearing rate was 66.7 % (95% CI 62.6 % to 71.0 %). Taxi drivers had higher helmet use, 88.4% (95% CI 78.4% to 94.9%), compared with non-taxi drivers, 62.8% (95% CI 57.9% to 67.6%). Helmet use on non-residential roads, 85.2% (95% CI 78.1 % to 90.7%), was higher compared with residential roads, 58.5% (95% CI 52.8% to 64.1%). Using logistic regression, the odds of a taxi driver wearing a helmet compared with a non-taxi driver was significantly increased 1.490 (p<0.01). The odds of helmet use on non-residential roads as compared with residential roads was also increased at 1.389 (p<0.01).

CONCLUSION

This novel method of estimating helmet use has produced results similar to traditional methods. Applying this technology can reduce time and monetary costs and could be used anywhere street imagery is used. Future directions include automating this process through machine learning.

摘要

引言

泰国大多数道路交通死亡事故发生在机动两轮或三轮车辆上。准确测量头盔使用情况对于评估新立法和执法至关重要。目前估计头盔使用情况的方法包括路边观察或对警方及医院记录的监测,这两种方法都既耗时又昂贵。我们的目标是开发一种估计摩托车头盔使用情况的新方法。

方法

利用谷歌地图,在曼谷随机选择了3000个十字路口。在每个十字路口,提取相隔90°的四张图像的超链接。这12000张图像在亚马逊土耳其机器人平台上通过众包进行处理,以识别包含摩托车的图像。其余图像通过人工分类以确定头盔使用情况。

结果

处理后,对462名独特的摩托车驾驶员进行了分析。总体头盔佩戴率为66.7%(95%置信区间为62.6%至71.0%)。出租车司机的头盔使用率较高,为88.4%(95%置信区间为78.4%至94.9%),而非出租车司机为62.8%(95%置信区间为57.9%至67.6%)。非居民区道路上的头盔使用率为85.2%(95%置信区间为78.1%至90.7%),高于居民区道路上的58.5%(95%置信区间为52.8%至64.1%)。使用逻辑回归分析,出租车司机佩戴头盔的几率与非出租车司机相比显著增加了1.490(p<0.01)。非居民区道路上使用头盔的几率与居民区道路相比也增加了1.389(p<0.01)。

结论

这种估计头盔使用情况的新方法产生的结果与传统方法相似。应用这项技术可以降低时间和金钱成本,并且可以在任何使用街道图像的地方使用。未来的方向包括通过机器学习使这个过程自动化。

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