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CADP: A Novel Dataset for CCTV Traffic Camera based Accident Analysis

机译:CADP:基于CCTV交通摄像机的新型数据集事故分析

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This paper presents a novel dataset for traffic accidents analysis. Our goal is to resolve the lack of public data for research about automatic spatio-temporal annotations for traffic safety in the roads. Through the analysis of the proposed dataset, we observed a significant degradation of object detection in pedestrian category in our dataset, due to the object sizes and complexity of the scenes. To this end, we propose to integrate contextual information into conventional Faster R-CNN using Context Mining (CM) and Augmented Context Mining (ACM) to complement the accuracy for small pedestrian detection. Our experiments indicate a considerable improvement in object detection accuracy: +8.51% for CM and +6.20% for ACM. Finally, we demonstrate the performance of accident forecasting in our dataset using Faster R-CNN and an Accident LSTM architecture. We achieved an average of 1.684 seconds in terms of Time-To-Accident measure with an Average Precision of 47.25%. Our Webpage for the paper is https://goo.gl/cqK2wE.
机译:本文提出了一种用于交通事故分析的新颖数据集。我们的目标是解决道路交通安全自动时空标注研究方面缺乏公共数据的问题。通过对提出的数据集进行分析,由于对象的大小和场景的复杂性,我们在数据集中的行人类别中检测到的对象检测效果显着下降。为此,我们建议使用上下文挖掘(CM)和增强上下文挖掘(ACM)将上下文信息集成到常规的Faster R-CNN中,以补充小型行人检测的准确性。我们的实验表明,目标检测精度有了显着提高:CM为+ 8.51%,ACM为+ 6.20%。最后,我们使用Faster R-CNN和事故LSTM架构在数据集中演示事故预测的性能。我们的事故发生时间平均为1.684秒,平均精度为47.25%。我们的论文网页为https://goo.gl/cqK2wE。

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