Computer Vision Application in Automobile Error Detection

Narayana Darapaneni, M. Ravikumar, Shantanu Singh, Anjula Tiwari, S. Das, A. Paduri, Aravindh Balaraman, G. Pratap
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Abstract

This paper describes the authentic AI application using the computer vision model in the automotive sector, to find out the error in the automobile by scanning the picture or dashboard and vehicle parts. Since the automobile has begun a complex system over the years and it became very difficult to know and understand each part of its function. So, this AI application would help automobile owners and users to find out the system errors when in case the automobile has gone bad and not functioning in the middle of the fleet. The automobile is a fascinating innovation of the last two centuries and more and more developments have been seen in this sector. The safety and performance increased so drastically by the introduction of processing the functions through electronics and software sensing and actuation, thereby the complexity of the vehicle been increased and self-diagnosis of errors and automobile service been the huge opportunity there and been addressing and lots of gaps still in the addressable area. This paper describes such gap-filling applications in the automobile service sector using AI applications.
计算机视觉在汽车误差检测中的应用
本文描述了利用计算机视觉模型在汽车领域的真实人工智能应用,通过扫描图片或仪表板和汽车部件来发现汽车中的错误。由于多年来汽车已成为一个复杂的系统,因此很难了解和理解其功能的每个部分。因此,这款人工智能应用程序可以帮助车主和用户发现系统错误,以防汽车在车队中出现故障或无法正常运行。汽车是过去两个世纪的一项引人入胜的创新,在这个领域有了越来越多的发展。通过引入电子和软件传感和驱动来处理功能,安全性和性能得到了极大的提高,从而增加了车辆的复杂性,错误的自我诊断和汽车服务是一个巨大的机会,并且在可解决的领域仍然存在许多差距。本文描述了使用人工智能应用程序在汽车服务部门填补空白的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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