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Autoencoder-based part clustering for part-in-whole retrieval of CAD models

机译:基于AutoEncoder的CAD模型的整体检索部分群集

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Part-in-whole retrieval (PWR) is an important problem in the field of computer-aided design (CAD) with applications in design reuse, feature recognition and suppression and so on. Initially, we present a non parametric (and hence threshold independent) algorithm for segmenting CAD models (represented as meshes) which does not require any user intervention. As there is no labelled segmented dataset available for part clustering, we propose the use of autoencoders, one of the approaches used in deep networks along with hierarchical clustering. The features for autoencoder is derived from the Gauss map of the segments. The autoencoder network is then trained and validated using a hierarchical clustering-based approach that generates a dictionary of labels for each segment. PWR is then done by testing a query model with the network that retrieves models having the query as their subset. Comparison of the segmentation algorithm with the state-of-the-art approaches indicate that it performs better or on par. The algorithm was also tested for noisy models. Results of the part clustering and PWR are also presented for models from a CAD dataset along with the discussions. (C) 2019 Elsevier Ltd. All rights reserved.
机译:整体检索(PWR)是计算机辅助设计(CAD)领域的重要问题,具有设计重用,功能识别和抑制等应用。最初,我们向非参数(以及因此阈值独立)算法用于分割CAD模型(表示为网格),其不需要任何用户干预。由于没有可用于部分群集的标记的分段数据集,我们提出了使用AutoEncoders,在深网络中使用的方法之一以及分层群集。 AutoEncoder的功能来自段的高斯地图。然后使用基于分层聚类的方法培训和验证AutoEncoder网络,该方法为每个段生成标签字典。然后通过将查询模型与网络检索具有查询作为子集的型号的网络进行测试来完成PWR。与最先进的方法的分割算法的比较表明它表现得更好或更好。还测试了噪声模型的算法。零组群和PWR的结果也用于来自CAD数据集的模型以及讨论。 (c)2019 Elsevier Ltd.保留所有权利。

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