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MVCNN++: Computer-Aided Design Model Shape Classification and Retrieval Using Multi-View Convolutional Neural Networks

机译:MVCNN ++:计算机辅助设计模型形状分类和使用多视图卷积神经网络的检索

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Deep neural networks (DNNs) have been successful in classification and retrieval tasks of images and text, as well as in the graphics domain. However, these DNNs algorithms do not translate to 3D engineering models used in the product design and manufacturing. This paper studies the use of multi-view convolutional neural network (MVCNN) algorithm enhanced by the addition of engineering metadata, for classification and retrieval of 3D computer-aided design (CAD) models. The proposed algorithm (MVCNN++) builds on the MVCNN algorithm with the addition of part dimension data, improving its efficacy for manufacturing part classification and yielding an improvement in classification accuracy of 5.8% over the original version. Unlike datasets used for 3D shape classification and retrieval in the computer graphics domain, engineering level description of 3D CAD models do not yield themselves to neat, distinct classes. Techniques such as relaxed-classi-fication and prime angled cameras for capturing feature detail were used to address training data capture issues specific to 3D CAD models, along with the use of transfer learning to reduce training time. Our study has shown that DNNs can be used to search and discover relevant 3D engineering models in large public repositories, making 3D models accessible to the community.
机译:深度神经网络(DNN)在图像和文本的分类和检索任务以及图形域中进行了成功。然而,这些DNNS算法不转化为产品设计和制造中使用的3D工程模型。本文研究了通过添加工程元数据来增强多视图卷积神经网络(MVCNN)算法的使用,用于3D计算机辅助设计(CAD)模型的分类和检索。所提出的算法(MVCNN ++)在MVCNN算法上构建了在MVCNN算法上,添加了部分维度数据,提高了其对制造部门分类的功效,并在原始版本上产生5.8%的分类精度的提高。与用于3D形状分类和检索的数据集不同,在计算机图形域中,3D CAD模型的工程级别描述不会屈服于整洁,不同的类。用于捕获特征细节的宽松分类和主要角度相机的技术用于解决特定于3D CAD模型的训练数据捕获问题,以及使用转移学习以减少培训时间。我们的研究表明,DNN可用于在大型公共存储库中搜索和发现相关的3D工程模型,使社区可访问的3D模型。

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