Object Detection of Pedestrian Crossing Accident Using Deep Convolutional Neural Networks

Anan Yasamorn, Athasit Wongcharoen, C. Joochim
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引用次数: 1

Abstract

Pedestrian crossing accident recently, people injured in traffic while crossing the crosswalk. As an accident happened other caution warning systems may not be in time to safe life. Various deep learning techniques are based on a deep convolutional neural network (D-CNN) these methods are capable to fulfill object detection applications. This paper proposes the pedestrian crossing accident dataset for the detection of pedestrian crossing accidents using a video camera of front cars or dash-camera and a few CCTV videos. It presents the performance comparison between the two state-of-the-art CNN algorithms approach Faster R-CNN and YOLOv3, in the context capability to correctly classify accident, fall-down, and out-of-frame classes. This paper demonstrates that Faster RCNN outperforms YOLOv3 with a better detection in accuracy. However, the conclusion of the paper is that YOLOv3 outperforms speed to detection and has good accuracy same time able to use in real-time detection.
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基于深度卷积神经网络的行人过马路事故目标检测
最近发生了人行横道交通事故,有人在过人行横道时受伤。当事故发生时,其他警示系统可能无法及时保护生命安全。各种深度学习技术都是基于深度卷积神经网络(D-CNN),这些方法能够实现目标检测应用。本文提出了一种行人过马路事故数据集,该数据集利用前置摄像头或行车记录仪和少量CCTV视频对行人过马路事故进行检测。本文介绍了两种最先进的CNN算法Faster R-CNN和YOLOv3之间的性能比较,在正确分类事故、坠落和帧外类别的上下文中。本文证明了更快的RCNN在检测精度上优于YOLOv3。然而,本文的结论是YOLOv3在检测速度上更胜一筹,同时具有良好的精度,可以用于实时检测。
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