Real-Time Pedestrian Conflict Prediction Model at the Signal Cycle Level Using Machine Learning Models

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作者
Zhang, Shile [1 ]
Abdel-Aty, Mohamed [1 ]
机构
[1] Department of Civil Environmental and Construction Engineering, University of Central Florida, Orlando,FL,32816, United States
关键词
Intelligent systems - Machine learning - Statistical tests - Traffic signals;
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摘要
Compared with traditional traffic studies, real-time safety analyses can be better incorporated into proactive traffic management strategies to improve traffic safety. However, few studies have investigated the real-time pedestrian safety model. Intersections usually have mixed traffic conditions with more pedestrian-vehicle interactions. This paper uses conflict indicators, PET (Post Encroachment Time) and TTC (Time to Collision) to identify pedestrians' conflicts from CCTV (closed-circuit television) videos. The high-resolution traffic data from the Automated Traffic Signal Performance Measures (ATSPM) system are used to derive traffic flow-related variables. The pedestrian exposure is also estimated. Pedestrians' conflicts are predicted using multiple machine learning models and Logistic Regression. The resampling methods, random over-sampling, and random under-sampling are compared. The best model, Extreme Gradient Boosting (XGBT) with random over-sampling method can achieve AUC (area under the ROC curve) value of 0.841 and recall value of 0.739 on the test data set. The proposed model can predict pedestrians' conflicts one cycle ahead, which can be 2-3 min. The proposed model has the potential to be implemented in the Connected and Automated Vehicles (CAV) environment to adjust signal timing accordingly and enhance traffic safety. © 2022 IEEE.
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页码:176 / 186
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