利用深度学习方法识别非基础设施环境中的各种道路障碍

C. Pandey, Neeraj Kumar, V. Mishra, Abhishek Ba Bajpaipai
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引用次数: 1

摘要

在缺乏基础设施的环境中,交通状况在很多方面都不适合驾驶。这是由于道路曲率不明确,车道标记褪色和不维护以及各种障碍情况造成重大生命损失和事故中车辆损坏。本文提供了一种有效的方法,利用我们的深度学习方法,基于通过智能手机收集的数据,找到各种道路障碍情况。现有的方法适用于规划或结构道路。建议的方法既适用于已规划的道路,也适用于未规划的道路,即没有基础设施的环境。该方法能够使用深度学习方法有效地将道路障碍物分类为预定义的类别。与其他类似的方法相比,这种方法是一种经济有效的方法。收稿日期:2017年5月30日收稿日期:2017年7月12日
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Identifying Various Roadways Obstacles in Infrastructure less Environment Using Depth Learning Approach
Traffic conditions in infrastructure-less environment are in many ways not ideal for driving. This is due to undefined road curvature, faded and unmaintained lane markings and various obstacles situations cause vital life loses and damage of vehicles in accidents. This paper provides an efficient approach of finding various roadways obstacles situation using our depth learning approach based on the data collected through a Smartphone. The existing methods are suitable for planned or structured roads. The proposed approach is suitable for planed as well as unplanned roads i.e. for infrastructure-less environment. The approach is capable of effectively classifying roadways obstacles into predefined categories using depth learning approach. While compared with other similar approach this approach is a cost effective approach. Article history Received: 30 May 2017 Accepted:12 July 2017
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