Abstract

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%.

Highlights

  • With the development of robot technology, the application of robot is wider

  • According to the subjective perception characteristics of automobile modeling analysis, the preliminary extraction, and so on, a lot of artificial intervention and laborious manual digitization modeling problem, in this article, based on the model of image processing, analysis, and modeling of ideas, put forward the automobile modeling analysis and modeling method based on the deep learning and learning based on the database mining, automobile modeling analysis, and modeling, which can realize the whole process automation without any interaction

  • For intelligent vehicle model modeling method based on image processing, a limit point that lies in single-view 3D reconstruction can lead to some perspectives for incomplete shape features under reconstruction error of the larger problem, in the future work, which can realize multiple views of the 3D model reconstruction, in addition, in this article, the reconstruction of the data is only 3D wireframe data, lack of automobile body modeling detail information, such as waist fender, and engine cover area of concave and convex characteristics, follow-up studies can be extracted from the image detail characteristics of car body so as to rebuild the implementation more detailed 3D model of car

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Summary

Introduction

With the development of robot technology, the application of robot is wider. In early 2004, senior members of the IEEE’s future industry pointed out that biotechnology, nanotechnology, supercomputer technology and intelligent robotics technology are the most influential technologies in the future. Japan regards robotics as a strategic industry and addresses the current problems faced by the Japanese robotics industry, puts forward specific measures to strengthen robot research and promote robot industrialization. South Korea has listed robot technology as an “engine” industry for future national development and has given key support to robot technology. The United States has classified robotics as a technology of vigilance, which believes it will have a huge impact on future wars and has imposed a technological blockade on other countries. Experts suggest that the research on robot technology should be further strengthened to promote the development of China’s intelligent robot industry

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