Title :
Texture discrimination using local features and count data models
Author_Institution :
Concordia Inst. for Inf. Syst. Eng., Concordia Univ., Montreal, QC, Canada
Abstract :
In this paper we consider the problem of textured images modeling and discrimination using local features. Local features are quantized to form a textons visual dictionary. This procedure allows the representation of each textured image by a vector of counts which represent the frequencies of the textons in the texture. Having the count vectors in hand, we introduce a new mixture model for the accurate modeling of these vectors. This mixture model is based on a composition of the Beta-Liouville distribution and the multinomial. The novel proposed model, that we call multinomial Beta-Liouville mixture, is optimized by expectation-maximization (EM) and minimum description length, and strives to achieve a high accuracy of textured image data discrimination. The developed approach is competitive with recent proposed count mixture models and its classification power is demonstrated through experimental results on various textured images data sets.
Keywords :
expectation-maximisation algorithm; image classification; image representation; image texture; polynomials; quantisation (signal); vectors; beta-Liouville distribution; classification power; count data model; count mixture model; expectation-maximization; local feature quantization; local features; minimum description length; multinomial Beta-Liouville mixture; textons visual dictionary; texture discrimination; textured image data discrimination; textured image modeling; textured image representation; vector; Accuracy; Data models; Fabrics; Feature extraction; Training; Vocabulary;
Conference_Titel :
Communications, Computing and Control Applications (CCCA), 2011 International Conference on
Conference_Location :
Hammamet
Print_ISBN :
978-1-4244-9795-9
DOI :
10.1109/CCCA.2011.6031201