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使用卷积神经网络预测行人在人行横道的行为。

Predicting pedestrian crosswalk behavior using Convolutional Neural Networks.

作者信息

Liang Eric, Stamp Mark

机构信息

Department of Computer Science, San Jose State University, San Jose, CA, USA.

出版信息

Traffic Inj Prev. 2023;24(4):338-343. doi: 10.1080/15389588.2023.2186734. Epub 2023 Mar 13.

Abstract

OBJECTIVE

Pedestrian accidents contribute significantly to the high number of annual traffic casualties. It is therefore crucial for pedestrians to use safety measures, such as a crosswalk, and to activate pedestrian signals. However, people often fail to activate the signal or are unable to do so - those who are visually impaired or have occupied hands may be unable to activate the system. Failure to activate the signal can result in an accident. This paper proposes an improvement to crosswalk safety by designing a system that can detect pedestrians and trigger the pedestrian signal automatically when necessary.

METHODS

In this study, a dataset of images was collected in order to train a Convolutional Neural Network (CNN) to distinguish between pedestrians (including bicycle riders) when crossing the street. The resulting system can capture and evaluate images in real-time, and the result can be used to automatically activate a system such as a pedestrian signal. A threshold system is also implemented that triggers the crosswalk only when the positive predictions pass the threshold. This system was tested by deploying it at three real-world environments and comparing the results with a recorded video of the camera's view.

RESULTS

The CNN prediction model is able to correctly predict pedestrian and cyclist intentions with an average accuracy of 84.96% and had an absence trigger rate of 0.037%. The prediction accuracy varies based on the location and whether a cyclist or pedestrian is in front of the camera. Pedestrians crossing the street were correctly predicted more accurately than cyclists crossing the street by up to 11.61%, while passing (i.e., non-crossing) cyclists were correctly ignored more than passing pedestrians, by up to 18.75%.

CONCLUSION

Based on the testing of the system in real-world environments, the authors conclude that it is feasible as a back-up system that can complement existing pedestrian signal buttons, and thereby improve the overall safety of crossing the street. Further improvements to the accuracy can be achieved with a more comprehensive dataset for a specific location where the system is deployed. Implementing different computer vision techniques optimized for tracking objects should also increase the accuracy.

摘要

目的

行人事故在每年的交通伤亡总数中占比显著。因此,行人采取安全措施至关重要,比如使用人行横道并激活行人信号灯。然而,人们常常未能激活信号灯或无法激活——那些视力受损者或双手有事要忙的人可能无法激活该系统。未激活信号灯可能导致事故。本文通过设计一种能够检测行人并在必要时自动触发行人信号灯的系统,对人行横道安全提出了一种改进方案。

方法

在本研究中,收集了一个图像数据集,用于训练卷积神经网络(CNN),以区分行人(包括骑自行车的人)过马路的情况。由此产生的系统能够实时捕捉和评估图像,其结果可用于自动激活诸如行人信号灯之类的系统。还实施了一个阈值系统,只有当肯定预测超过阈值时才触发人行横道。该系统通过在三个实际环境中进行部署并将结果与摄像机视角的录制视频进行比较来进行测试。

结果

CNN预测模型能够正确预测行人和骑自行车者的意图,平均准确率为84.96%,误触发率为0.037%。预测准确率因位置以及骑自行车的人或行人是否在摄像机前而有所不同。过马路的行人比过马路的骑自行车者被正确预测的准确率高出多达11.61%,而路过(即未过马路)的骑自行车者比路过的行人被正确忽略的比例高出多达18.75%。

结论

基于该系统在实际环境中的测试,作者得出结论,作为一种可以补充现有行人信号按钮的备用系统是可行的,从而提高过马路的整体安全性。通过为系统部署的特定位置提供更全面的数据集,可以进一步提高准确率。实施针对跟踪对象优化的不同计算机视觉技术也应能提高准确率。

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