通过闭路电视实时检测事故并推荐最近的医疗设施

Akanksha A. Pai, Harini K. S., Deeptha Giridhar, Shanta Rangaswamy
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引用次数: 0

摘要

汽车事故是世界范围内暴力死亡的主要原因,这促使研究人员开发一种自动检测方法。对事故现场的医疗反应的有效性和生存机会受到人为因素的影响,强调了对自动化系统的需求。随着视频监控和先进交通系统的广泛应用,研究人员提出了一种基于视频的交通事故自动检测模型。所提出的方法假设在时间序列中出现的视觉元素对应于交通事故。该模型架构包括两个阶段:视觉特征提取和时间模式检测。在训练过程中使用卷积和循环层从头开始学习视觉和时间特征,以及从公开可用的数据集学习。本文提出的基于纠偏线性单元和Softmax激活函数的卷积神经网络模型的事故检测预警系统是实时检测不同类型事故的有效工具。事故检测系统与及时医疗救助的报警机制相结合,实现了高准确率和高召回率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real Time Accident Detection from Closed Circuit Television and Suggestion of Nearest Medical Amenities
The prevalence of automobile accidents as a major cause of violent deaths around the world has prompted researchers to develop an automated method for detecting them. The effectiveness of medical response to accident scenes and the chances of survival are influenced by the human element, underscoring the need for an automated system. With the widespread use of video surveillance and advanced traffic systems, researchers have proposed a model to automatically detect traffic accidents on video. The proposed approach assumes that visual elements occurring in a temporal sequence correspond to traffic accidents. The model architecture consists of two phases: visual feature extraction and temporal pattern detection. Convolution and recurrent layers are employed during training to learn visual and temporal features from scratch as well as from publicly available datasets. The proposed accident detection and alerting system using Convolution Neural Network models with Rectified Linear Unit and Softmax activation functions is an effective tool for detecting different types of accidents in real-time. The system of accident detection, integrated with the alerting mechanism for prompt medical assistance achieved high accuracy and recall rates.
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