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首页> 外文期刊>Journal of circuits, systems and computers >Diffusion Geometry Derived Keypoints and Local Descriptors for 3D Deformable Shape Analysis
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Diffusion Geometry Derived Keypoints and Local Descriptors for 3D Deformable Shape Analysis

机译:扩散几何衍生关键点和本地描述符3D可变形形状分析

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Geometric analysis of three-dimensional (3D) surfaces with local deformations is a challenging task, required by mobile devices. In this paper, we propose a new local feature-based method derived from diffusion geometry, including a keypoint detector named persistence-based Heat Kernel Signature (pHKS), and a feature descriptor named Heat Propagation Strips (HeaPS). The pHKS detector first constructs a scalar field using the heat kernel signature function. The scalar field is generated at a small scale to capture fine geometric information of the local surface. Persistent homology is then computed to extract all the local maxima from the scalar field, and to provide a measure of persistence. Points with a high persistence are selected as pHKS keypoints. In order to describe a keypoint, an intrinsic support region is generated by the diffusion area. This support region is more robust than its geodesic distance counterpart, and provides a local surface with adaptive scale for subsequent feature description. The HeaPS descriptor is then developed by encoding the information contained in both the spatial and temporal domains of the heat kernel. We conducted several experiments to evaluate the effectiveness of the proposed method. On the TOSCA Dataset, the HeaPS descriptor achieved a high performance in terms of descriptiveness. The feature detector and descriptor were then tested on the SHREC 2010 Feature Detection and Description Dataset, and produced results that were better than the state-of-the-art methods. Finally, their application to shape retrieval was evaluated. The proposed pHKS detector and HeaPS descriptor achieved a notable improvement on the SHREC 2014 Human Dataset.
机译:具有本地变形的三维(3D)表面的几何分析是移动设备所需的具有挑战性的任务。在本文中,我们提出了一种从扩散几何导出的基于新的基于特征的方法,包括名为基于持久性的热内核签名(PHK)的关键点检测器,以及名为热传播条(堆积)的特征描述符。 PHKS检测器首先使用热内核签名功能构造标量字段。标量字段以小刻度生成,以捕获局部表面的精细几何信息。然后计算持续同源以从标量字段中提取所有本地最大值,并提供持久性的度量。选择高持久性的点作为PHKS键盘。为了描述关键点,由扩散区域产生固有的支撑区域。该支撑区域比其测地距离对应物更鲁棒,并且为后续特征描述提供具有自适应刻度的局部表面。然后通过编码热核的空间和时间域中包含的信息来开发堆描述符。我们进行了几次实验以评估所提出的方法的有效性。在TOSCA数据集上,堆描述符在描述性方面实现了高性能。然后在SHRC 2010特征检测和描述数据集上测试特征检测器和描述符,并产生优于最先进的方法的结果。最后,评估它们的塑造检索的应用。所提出的PHKS检测器和堆描述符在SHREC 2014人类数据集上实现了一个值得注意的改进。

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