使用深度学习的印度交通密度调查和道路事故分析

Chinkit Manchanda, Rajat Rathi, Nikhil Sharma
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引用次数: 9

摘要

交通拥堵在大城市和城镇是一件常见的事情。这个问题是人口和车辆数量快速增长的结果,所以预测交通拥堵的程度对每个人都是有益的。然而,流量状态的解释和实现可能异常困难。随着车辆的增加,现有的算法可能会因为我们无法处理的各个方面的特征而受到一些限制。本文介绍了一种混合深度神经网络(HDNN),用于使用卷积神经网络(CNN)对图像进行道路交通状况预测,并预测特定区域在特定时间的道路交通事故统计数据。该模型将利用机器学习中算法的发展,主要是对深度学习算法CNN的抓取。实验结果表明,HDNN在交通状况预测和道路事故分析方面取得了优异的成绩,在交通拥堵程度方面优于标准基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traffic Density Investigation & Road Accident Analysis in India using Deep Learning
Traffic congestion is a common affair in the big cities and towns. This issue is the outcome of the rapid increase in the population and increasing number of vehicles, so predicting the level of traffic congestion will be beneficial for every individual. However, interpretation and implementation of traffic state can be exceptionally tough. With this pace of increasing vehicles, existing algorithms may come up with some limitations due to various aspects of features which we cannot process. In this paper, we introduce a Hybrid Deep Neural Network (HDNN) for forecasting the traffic conditions on roads with the images using Convolutional Neural Network (CNN) and predicting road accident statistics of a particular area on a specific time. This model will exploit the development of algorithms in machine learning and majorly grasping over the Deep learning algorithm CNN. Experimental results show superior results of traffic conditions prediction and road accidentsanalysis, HDNN outshine the standard benchmark for the level of traffic congestion.
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