SWGMM: a semi-wrapped Gaussian mixture model for clustering of circular–linear data

被引:0
作者
Anandarup Roy
Swapan K. Parui
Utpal Roy
机构
[1] Indian Statistical Institute,Computer Vision and Pattern Recognition Unit
[2] Visva-Bharati University,Department of Computer and System Sciences
来源
Pattern Analysis and Applications | 2016年 / 19卷
关键词
Circular–linear joint distribution; Semi-wrapped Gaussian distribution; Statistical mixture model; Clustering;
D O I
暂无
中图分类号
学科分类号
摘要
Finite mixture models are widely used to perform model-based clustering of multivariate data sets. Most of the existing mixture models work with linear data; whereas, real-life applications may involve multivariate data having both circular and linear characteristics. No existing mixture models can accommodate such correlated circular–linear data. In this paper, we consider designing a mixture model for multivariate data having one circular variable. In order to construct a circular–linear joint distribution with proper inclusion of correlation terms, we use the semi-wrapped Gaussian distribution. Further, we construct a mixture model (termed SWGMM) of such joint distributions. This mixture model is capable of approximating the distribution of multi-modal circular–linear data. An unsupervised learning of the mixture parameters is proposed based on expectation maximization method. Clustering is performed using maximum a posteriori criterion. To evaluate the performance of SWGMM, we choose the task of color image segmentation in LCH space. We present comprehensive results and compare SWGMM with existing methods. Our study reveals that the proposed mixture model outperforms the other methods in most cases.
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页码:631 / 645
页数:14
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