Modeling Pedestrian Near-Crash Events at a Rectangular Rapid Flashing Beacon-Controlled Intersection Using Video Analytics and Long Short-Term Memory Neural Network

Panick Kalambay, Srinivas S. Pulugurtha
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Abstract

Pedestrian safety is a long-standing issue in urban areas, where pedestrian near-crash events are more frequent than in suburban or rural areas. To address the pedestrian safety problem, a proactive approach was explored to assess and predict the severity of these events, which are valuable indicators of potential crashes. Object detection and tracking techniques were used to establish the temporal relationship of pedestrian near-crash events involving vehicles at an intersection controlled with rectangular rapid flashing beacons. A long short-term memory (LSTM) neural network model is proposed to warn a driver 2 s before the vehicle reaches the conflict zone. However, this scenario can be considered optimistic, as the 2 s interval represents an ideal driver’s reaction time, which is more likely to happen in a connected and automated vehicle environment where vehicles receive real-time information about their surroundings and perform some basic tasks such as braking without waiting for the driver reaction. The results demonstrate the effectiveness of the proposed LSTM neural network model, with an area under the curve value of 78.5% on the training data and an overall recall of 71.1% on the test data. The practical significance of this model is its potential to provide timely information about near-crash events, thereby enhancing pedestrian safety at critical points such as intersections.
利用视频分析和长短期记忆神经网络模拟矩形快速闪光信号灯控制交叉口的行人近撞事件
在城市地区,行人安全是一个长期存在的问题,因为与郊区或农村地区相比,城市地区的行人濒临撞车事件更为频繁。为了解决行人安全问题,我们探索了一种积极主动的方法来评估和预测这些事件的严重性,它们是潜在碰撞事故的重要指标。在一个使用矩形快速闪烁信标控制的十字路口,使用了物体检测和跟踪技术来确定涉及车辆的行人近距离碰撞事件的时间关系。提出了一种长短期记忆(LSTM)神经网络模型,可在车辆到达冲突区前 2 秒向驾驶员发出警告。然而,这种情况可以说是乐观的,因为 2 秒的时间间隔代表了驾驶员的理想反应时间,而在互联和自动驾驶汽车环境中,这种情况更有可能发生,因为在这种环境中,车辆会实时接收周围环境的信息,并执行一些基本任务,如制动,而无需等待驾驶员的反应。结果证明了所提出的 LSTM 神经网络模型的有效性,在训练数据上的曲线下面积值为 78.5%,在测试数据上的总体召回率为 71.1%。该模型的实际意义在于它可以及时提供近似碰撞事件的信息,从而提高十字路口等关键点的行人安全。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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