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Car model reconstruction from images through character line recognition

机译:通过字符线识别从图像重建汽车模型

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Purpose This paper aims to automatically derive a 2D parametric model of the main characteristic lines of a car from images, blueprints or hand-made sketches of its side view. Then this model can be used for the further computer-aided design manipulation starting from images of the side view of a car.Design/methodology/approach The method combines different image edge detection techniques and edge removal processes with optimization techniques according to local and global constraints specific of the single curves to automatically construct a precise parametric model of the main character lines of a car from images. First, process the car image to compute the most important curves and then warp a car template model to match its feature points and curves with the ones detected in the image.Findings The paper provides method to construct parametric model from an image using maximum cover ratio to the edge points obtained by state-of-the-art edge detection algorithms. A feature points' organization mechanism produces quadric curves to express feature curves of a product.Research limitations/implications The robustness of the presented method depends on the completeness of edge detection results and the accuracy of some key points' registration result, so if the image is not good, the result cannot be trusted. Only side-view is considered in this paper. Additional limits in the process regard the side view verification: pictures of the front or rear view can be wrongly classified as lateral ones when they contain round lights.Practical implications This program enables designers to convert the image to geometric parametric model directly.Originality/value The method is applicable to shaded pictures, sketches and blue prints of the side view of a car. It can process a database of car images in a batch mode or a specific picture on user demand. The method classifies the cars to different categories: SUV/Wagon/Hatchback, sedan, city and coupe. The authors obtain good results for every category.
机译:目的本文旨在从侧视图的图像,蓝图或手工绘制的草图中自动得出汽车主要特征线的2D参数模型。然后,该模型可以从汽车侧面图像开始用于进一步的计算机辅助设计操作。设计/方法/方法该方法结合了不同的图像边缘检测技术和边缘去除过程,并根据局部和全局结合了优化技术单个曲线的特定约束,以根据图像自动构建汽车主要特征线的精确参数模型。首先,对汽车图像进行处理以计算最重要的曲线,然后对汽车模板模型进行变形以使其特征点和曲线与图像中检测到的特征点和曲线相匹配。发现本文提供了使用最大覆盖率从图像构造参数模型的方法到通过最新边缘检测算法获得的边缘点。特征点的组织机制产生二次曲线来表示产品的特征曲线。研究局限/意义所提出方法的鲁棒性取决于边缘检测结果的完整性和某些关键点配准结果的准确性,因此图像不好,结果不能被信任。本文仅考虑侧视图。该过程的其他限制涉及到侧视图验证:当前视图或后视图的图片包含圆形照明灯时,它们可能被错误地分类为侧面图片。实际意义该程序使设计人员可以将图像直接转换为几何参数模型。该方法适用于汽车侧面的阴影图片,草图和蓝色打印。它可以按批处理模式处理汽车图像数据库或根据用户需求处理特定图片。该方法将汽车分为以下类别:SUV /旅行车/掀背车,轿车,城市和双门轿跑车。作者在每个类别中均获得了良好的结果。

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