Title :
Unsupervised Clustering of Depth Images Using Watson Mixture Model
Author :
Hasnat, M.A. ; Alata, O. ; Tremeau, A.
Author_Institution :
Univ. Jean Monnet, St. Etienne, France
Abstract :
In this paper, we propose an unsupervised clustering method for axially symmetric directional unit vectors. Our method exploits the Watson distribution and Bregman Divergence within a Model Based Clustering framework. The main objectives of our method are: (a) provide efficient solution to estimate the parameters of a Watson Mixture Model (WMM), (b) generate a set of WMMs and (b) select the optimal model. To this aim, we develop: (a) an efficient soft clustering method, (b) a hierarchical clustering approach in parameter space and (c) a model selection strategy by exploiting information criteria and an evaluation graph. We empirically validate the proposed method using synthetic data. Next, we apply the method for clustering image normals and demonstrate that the proposed method is a potential tool for analyzing the depth image.
Keywords :
image processing; parameter estimation; pattern clustering; statistical distributions; vectors; Bregman divergence; WMM; Watson distribution; Watson mixture model; axially symmetric directional unit vectors; evaluation graph; hierarchical clustering approach; image normals; information criteria; model selection strategy; model-based clustering framework; optimal model selection; parameter estimation; soft clustering method; unsupervised depth image clustering; Clustering methods; Computational modeling; Data models; Image analysis; Integrated circuit modeling; Mathematical model; Vectors; Depth Image Analysis; Mixture Model; Model Based Clustering; Unsupervised Clustering; Watson Distribution;
Conference_Titel :
Pattern Recognition (ICPR), 2014 22nd International Conference on
Conference_Location :
Stockholm
DOI :
10.1109/ICPR.2014.46