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Intelligent vehicle modeling design based on image processing

机译:基于图像处理的智能车辆建模设计

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With the urgent demand of consumers for diversified automobile modeling, simple, efficient, and intelligent automobile modeling analysis and modeling method is an urgent problem to be solved in current automobile modeling design. The purpose of this article is to analyze the modeling preference and trend of the current automobile market in time, which can assist the modeling design of new models of automobile main engine factories and strengthen their branding family. Intelligent rapid modeling shortens the current modeling design cycle, so that the product rapid iteration is to occupy an active position in the automotive market. In this article, aiming at the family analysis of automobile front face, the image database of automobile front face modeling analysis was created. The database included two data sets of vehicle signs and no vehicle signs, and the image data of vehicle front face modeling of most models of 22 domestic mainstream brands were collected. Then, this article adopts the image classification processing method in computer vision to conduct car brand classification training on the database. Based on ResNet-8 and other model architectures, it trains and classifies the intelligent vehicle brand classification database with and without vehicle label. Finally, based on the shape coefficient, a 3D wireframe model and a curved surface model are obtained. The experimental results show that the 3D curve model can be obtained based on a single image from any angle, which greatly shortens the modeling period by 92%.
机译:随着消费者对多元化汽车建模的迫切需求,简单,高效,智能的汽车建模分析和建模方法是当前汽车建模设计中亟待解决的迫切问题。本文的目的是分析当前汽车市场的建模偏好和趋势,可以协助汽车主机工厂的新型号的建模设计,并加强其品牌家庭。智能快速建模缩短了当前的建模设计周期,使产品快速迭代是占据汽车市场的积极职位。在本文中,针对汽车前面的家庭分析,创建了汽车前面建模分析的图像数据库。该数据库包括两个数据集的车辆标志,没有车辆迹象,以及大多数国内主流品牌的大多数模型的车辆前面料建模的图像数据被收集。然后,本文采用计算机视觉中的图像分类处理方法,在数据库上进行汽车品牌分类培训。基于Reset-8和其他模型架构,它列车并在没有车辆标签的情况下进行智能车辆品牌分类数据库。最后,基于形状系数,获得3D线框模型和曲面模型。实验结果表明,3D曲线模型可以基于从任何角度的单个图像获得,这大大缩短了建模期限92%。

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