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Improved Three-Dimensional Model Feature of Non-rigid Based on HKS

机译:基于HKS的改进的非刚性三维模型特征

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The recognition and retrieval of 3D models have been a hot spot in the field of computer vision. Since the non-rigid shapes can generate various deformations, the recognition and retrieval of non-rigid 3D models are more complex and challenging than rigid one. Therefore, the key to the recognition and retrieval of non-rigid 3D models is to extract a feature which obtains substantial description ability and stability. An improved HKS feature named NSIHKS (NSIHKS, new scale Invariance heat kernel signature) was used to describe the shape of models in the paper. NSIHKS contains intrinsic invariance, scale transformation invariance, robustness et al. Moreover it has good resistance even under faint noise. Firstly, the NSIHKS features of each model were extracted and processed with clustering algorithm. Secondly, an efficient algorithm of similarity measurement was designed on the basis of Ming distance. Finally, NSIHKS features of each model in the standard data set were compared via the aforementioned distance algorithm. Experimental results of standard data set in this field show that this feature has good effect on the application of non-rigid 3D model retrieval.
机译:3D模型的识别和检索一直是计算机视觉领域的热点。由于非刚性形状会产生各种变形,因此非刚性3D模型的识别和检索比刚性模型更为复杂和具有挑战性。因此,识别和检索非刚性3D模型的关键是提取一个具有实质描述能力和稳定性的特征。本文使用改进的HKS功能NSIHKS(NSIHKS,新尺度不变热核签名)来描述模型的形状。 NSIHKS包含固有不变性,尺度变换不变性,鲁棒性等。此外,即使在微弱的噪音下也具有良好的抵抗力。首先,提取每个模型的NSIHKS特征,并用聚类算法进行处理。其次,基于明距设计了一种有效的相似度测量算法。最后,通过上述距离算法比较了标准数据集中每个模型的NSIHKS特征。该领域标准数据集的实验结果表明,该功能对非刚性3D模型检索的应用具有良好的效果。

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