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基于深度学习的交通标志识别:巴西环境中的植被遮挡检测。

Traffic Sign Recognition with Deep Learning: Vegetation Occlusion Detection in Brazilian Environments.

机构信息

Computational Modeling and Industrial Technology Program, SENAI CIMATEC, Salvador 41650-010, Brazil.

Industrial Management and Technology Program, SENAI CIMATEC, Salvador 41650-010, Brazil.

出版信息

Sensors (Basel). 2023 Jun 26;23(13):5919. doi: 10.3390/s23135919.

Abstract

Traffic Sign Recognition (TSR) is one of the many utilities made possible by embedded systems with internet connections. Through the usage of vehicular cameras, it's possible to capture and classify traffic signs in real time with Artificial Intelligence (AI), more specifically, Convolutional Neural Networks (CNNs) based techniques. This article discusses the implementation of such TSR systems, and the building process of datasets for AI training. Such datasets include a brand new class to be used in TSR, vegetation occlusion. The results show that this approach is useful in making traffic sign maintenance faster since this application turns vehicles into moving sensors in that context. Leaning on the proposed technique, identified irregularities in traffic signs can be reported to a responsible body so they will eventually be fixed, contributing to a safer traffic environment. This paper also discusses the usage and performance of different YOLO models according to our case studies.

摘要

交通标志识别 (TSR) 是嵌入式系统与互联网连接所带来的众多实用功能之一。通过使用车辆摄像头,结合人工智能(AI),尤其是基于卷积神经网络(CNN)的技术,实时捕获和分类交通标志成为可能。本文讨论了此类 TSR 系统的实现,以及用于 AI 训练的数据集中的构建过程。这些数据集包括一个新的类别,用于 TSR,即植被遮挡。结果表明,由于该应用程序在这种情况下将车辆转变为移动传感器,因此这种方法在加快交通标志维护方面非常有用。通过使用所提出的技术,可以向负责机构报告交通标志的异常情况,以便最终进行修复,从而营造更安全的交通环境。本文还根据我们的案例研究讨论了不同 YOLO 模型的使用和性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/28fc/10346319/2482ea267d12/sensors-23-05919-g001.jpg

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