基于CNN技术的凹坑自动检测与车速管理综合系统

N. Gangatharan, Swetha Reddy A, Saravanan C, Sairam Sathvik I V, Sabarish G, Sharun Krishnan U
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引用次数: 0

摘要

路边坑洼增加了道路管理人员的维护成本,同时对车辆造成严重伤害,危及司机和乘客的安全。在这项研究中,我们使用卷积神经网络(CNN)技术提出了一个完整的自动坑洼识别和车辆速度管理系统。坑穴检测模块和车速控制模块是系统的两个主要部分。凹坑识别模块采用基于cnn的算法对图像进行评估。该模型经过训练,可以识别坑洼,并将其与其他路边特征区分开来。当发现坑洼时,车辆速度控制机构接收信息。在实际道路图像数据集上,对该模型进行了测试,坑洼识别准确率达到99.56%。该系统为路面凹坑识别和车速控制提供了一种实用而有效的解决方案,有助于减少交通事故,节省维修费用,提高驾驶体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comprehensive System for Automated Pothole Detection and Vehicle Speed Management using CNN Technology
Roadside potholes raise maintenance costs for road officials while causing serious harm to vehicle and endangering the safety of drivers and passengers. In this study, we use Convolutional Neural Network (CNN) technology to suggest a complete system for automatic pothole recognition and vehicle speed management. A pothole detection module and a vehicle speed control module are the two major parts of our system. A CNN-based algorithm is used by the pothole recognition module to evaluate the images. The model is trained to recognize potholes and identify them apart from other roadside characteristics. The vehicle speed control mechanism receives an information when a pothole is found. On a dataset of actual road images, the proposed model is tested and the potholes are identified with an accuracy of 99.56%. The proposed system provides a useful and effective solution for pothole recognition and vehicle speed control, which can help reduce accidents, save money on maintenance, and enhance the driving experience in general.
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