论文标题

SketchCleannet-一种深度学习方法,以增强和校正3D CAD模型检索系统的查询草图

SketchCleanNet -- A deep learning approach to the enhancement and correction of query sketches for a 3D CAD model retrieval system

论文作者

Manda, Bharadwaj, Kendre, Prasad, Dey, Subhrajit, Muthuganapathy, Ramanathan

论文摘要

搜索和检索仍然是多个领域的主要研究主题,包括计算机图形,计算机视觉,工程设计等。搜索引擎主要需要输入搜索查询和项目数据库。在本文的主要背景工程中,数据库由3D CAD型号组成,例如垫圈,活塞,连杆等。用户的查询通常以草图的形式,它试图捕获3D模型的详细信息。但是,草图具有某些典型的缺陷,例如间隙,过度划分的部分(多冲程)等。由于检索到的结果仅与输入查询一样好,因此草图需要清理和增强,以更好地检索结果。 在本文中,提出了一种深度学习方法来改进或清洁查询草图。最初,分析了来自各个类别的草图,以了解可能发生的许多可能的缺陷。然后根据对这些缺陷的理解创建清理或增强查询草图的数据集。因此,进行了深神网络的端到端培训,以提供有缺陷和干净的草图之间的映射。该网络将有缺陷的查询草图作为输入,并生成清洁或增强的查询草图。拟议方法与其他最新技术的定性和定量比较表明,所提出的方法是有效的。使用有缺陷和增强的查询草图报告了搜索引擎的结果,并且显示出使用来自开发方法的增强查询草图可以改善搜索结果。

Search and retrieval remains a major research topic in several domains, including computer graphics, computer vision, engineering design, etc. A search engine requires primarily an input search query and a database of items to search from. In engineering, which is the primary context of this paper, the database consists of 3D CAD models, such as washers, pistons, connecting rods, etc. A query from a user is typically in the form of a sketch, which attempts to capture the details of a 3D model. However, sketches have certain typical defects such as gaps, over-drawn portions (multi-strokes), etc. Since the retrieved results are only as good as the input query, sketches need cleaning-up and enhancement for better retrieval results. In this paper, a deep learning approach is proposed to improve or clean the query sketches. Initially, sketches from various categories are analysed in order to understand the many possible defects that may occur. A dataset of cleaned-up or enhanced query sketches is then created based on an understanding of these defects. Consequently, an end-to-end training of a deep neural network is carried out in order to provide a mapping between the defective and the clean sketches. This network takes the defective query sketch as the input and generates a clean or an enhanced query sketch. Qualitative and quantitative comparisons of the proposed approach with other state-of-the-art techniques show that the proposed approach is effective. The results of the search engine are reported using both the defective and enhanced query sketches, and it is shown that using the enhanced query sketches from the developed approach yields improved search results.

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