使用树莓派深度学习和图像处理的交通灯和背光识别

J. Nine, R. Mathavan
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引用次数: 0

摘要

交通灯检测和背光识别是智能汽车领域的重要研究课题,因为它们可以避免车辆碰撞,提供驾驶员安全。改进的检测和语义清晰度可能有助于自动驾驶汽车在拥挤的路口预防交通事故,从而提高整体驾驶安全性。另一方面,复杂的交通情况使算法更难识别和识别物体。基于深度学习和计算机视觉的最新算法成功地解决了自动驾驶的大部分实时问题,例如检测交通信号、交通标志、行人。我们提出了一种结合深度学习和图像处理的方法,同时使用MobileNetSSD(深度神经网络架构)模型和迁移学习来实时检测和识别交通灯和背光。该推理模型由基于COCO数据训练的Tensor-Flow和Tensor-Flow Lite等框架获得。本研究探讨在广泛使用的嵌入式计算板树莓派3B+上执行目标检测的可行性。该算法的性能是根据每秒帧数(FPS)、精度和推理时间来衡量的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traffic Light and Back-light Recognition using Deep Learning and Image Processing with Raspberry Pi
Traffic light detection and back-light recognition are essential research topics in the area of intelligent vehicles because they avoid vehicle collision and provide driver safety. Improved detection and semantic clarity may aid in the prevention of traffic accidents by self-driving cars at crowded junctions, thus improving overall driving safety. Complex traffic situations, on the other hand, make it more difficult for algorithms to identify and recognize objects. The latest state-of-the-art algorithms based on Deep Learning and Computer Vision are successfully addressing the majority of real-time problems for autonomous driving, such as detecting traffic signals, traffic signs, and pedestrians. We propose a combination of deep learning and image processing methods while using the MobileNetSSD (deep neural network architecture) model with transfer learning for real-time detection and identification of traffic lights and back-light. This inference model is obtained from frameworks such as Tensor-Flow and Tensor-Flow Lite which is trained on the COCO data. This study investigates the feasibility of executing object detection on the Raspberry Pi 3B+, a widely used embedded computing board. The algorithm’s performance is measured in terms of frames per second (FPS), accuracy, and inference time.
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