Mobile Base Solution for Individuals with Limited Knowledge About Cars

Heshan Nammunige, Tharindu Chamuditha, S. Udara, Devmith Athapaththu, A. Gamage, N. Gamage
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Abstract

Different modes of transportation were discovered by our ancestors from ancient times. Currently, the majority of people choose to purchase a personal automobile for transport needs. However, the vast majority of people are not automobile industry experts. As a result, the majority of people have trouble when recognizing cars. Due to numerous variations of a single vehicle model, even an expert has trouble correctly identifying a certain car model. People must take into account a number of factors before purchasing a specific automobile. Some of crucial factors are service costs and future market prices. Ordinary people require the assistance of a professional when estimating the market price of a car and calculating the cost of servicing a car. Accidents can also occur at any time when driving a car often. In similar circumstances, consumers require the assistance of an insurance agent or a technician to estimate the cost of damage repair. In this study, we provide a way for non-automotive experts to use their smartphones to identify car models, forecast future market prices, determine and forecast servicing costs, and estimate minor damage repair costs. This paper demonstrates how we accomplished aforementioned tasks using YOLO V4, Multiple Linear Regression, Random Forest Classifier and Faster RCNN.
针对汽车知识有限的个人的移动基地解决方案
我们的祖先从古代就发现了不同的交通方式。目前,大多数人选择购买个人汽车是出于交通需要。然而,绝大多数人并不是汽车行业的专家。因此,大多数人在识别汽车时都有困难。由于单一车型有许多变化,即使是专家也很难正确识别某一车型。人们在购买一辆特定的汽车之前必须考虑许多因素。一些关键因素是服务成本和未来市场价格。一般人在估计汽车的市场价格和计算维修汽车的费用时都需要专业人士的帮助。事故也可能发生在驾驶汽车的任何时候。在类似的情况下,消费者需要保险代理人或技术人员的帮助来估计修理损坏的费用。在这项研究中,我们为非汽车专家提供了一种方法,可以使用他们的智能手机来识别汽车型号,预测未来的市场价格,确定和预测维修成本,并估计轻微损坏的维修成本。本文演示了我们如何使用YOLO V4、多元线性回归、随机森林分类器和Faster RCNN来完成上述任务。
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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