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Axial Data Modeling with Collapsed Nonparametric Watson Mixture Models and Its Application to Depth Image Analysis

机译:轴向数据建模与折叠非参数WATSON混合模型及其在深度图像分析中的应用

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Recently, axial data (i.e. the observations are axes of direction) have been involved with various fields ranging from blind speech separation to gene expression data clustering. In this paper, axial data modeling is performed by proposing a nonparametric infinite Watson mixture model which is constructed in a collapsed space (denoted by Co-InWMM) where the mixing coefficients are integrated out. Then, an effective collapsed variational Bayes (CVB) inference method is theoretically developed to learn the Co-InWMM with closed-from solutions. The proposed Co-In WMM with CVB inference for modeling axial data is validated through both synthetical data sets and a challenging application regarding depth image analysis.
机译:最近,轴向数据(即观察是方向的轴线)已经涉及从盲语言论到基因表达数据聚类的各种领域。在本文中,通过提出在折叠空间(由Co-Inmm表示的折叠空间中构造的非参数无限Watson混合模型来执行轴向数据建模,其中混合系数被整合出。然后,理论上,理论上开发了有效的折叠变分贝叶斯(CVB)推断方法,以学习具有闭合溶液的共同修正。通过综合数据集和关于深度图像分析的具有挑战性的应用,验证具有用于建模轴向数据的CVB推理的CVB推理的所提出的共同WMM。

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