基于CNN的自动驾驶车辆红绿灯高效检测与识别

Tayyaba Sahar, Hayl Khadami, Muhammad Rauf
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引用次数: 0

摘要

智慧城市基础设施和智能交通系统(ITS)需要现代交通监控和驾驶员辅助系统,如自动交通信号检测。智能交通系统是人工智能领域的一个重要研究领域。交通信号检测是自动驾驶汽车的关键模块,其中精度和推理时间是最重要的参数之一。在这方面,本研究的目的是检测交通信号聚焦,以提高准确性和实时性。结果和讨论包括基于cnn的YOLO V3算法和手工制作的技术的比较性能,该技术可以在白天和夜间光线下增强检测和推理。重要的是要考虑到现实世界的物体与复杂的背景、遮挡、气候条件和光照有关,这些都会降低敏感智能应用程序的性能。本研究为TLD在日间和夜间照明下的混合技术的提出提供了方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Detection and Recognition of Traffic Lights for Autonomous Vehicles Using CNN
Smart city infrastructure and Intelligent Transportation Systems (ITS) need modern traffic monitoring and driver assistance systems such as autonomous traffic signal detection. ITS is a dominant research area among several fields in the domain of artificial intelligence. Traffic signal detection is a key module of autonomous vehicles where accuracy and inference time are amongst the most significant parameters. In this regard, the aim of this study is to detect traffic signals focusing to enhance accuracy and real-time performance. The results and discussion enclose a comparative performance of a CNN-based algorithm YOLO V3 and a handcrafted technique that gives insight for enhanced detection and inference in day and night light. It is important to consider that real-world objects are associated with complex backgrounds, occlusion, climate conditions, and light exposure that deteriorate the performance of sensitive intelligent applications. This study provides a direction to propose a hybrid technique for TLD not only in the daytime but also in night light.
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