Heterogeneous patterns enhancing static and dynamic texture classification
This work addresses a domain-specific problem in pattern recognition for texture analysis, offering an incremental improvement over existing methods.
The paper tackled the problem of texture classification by addressing the inability of existing methods to adequately describe heterogeneous patterns in texture images, proposing a method that identifies texture patterns at distinct scales and groups similar patterns for refined analysis, resulting in better classification rates compared to conventional approaches on four static and one dynamic texture databases.
Some mixtures, such as colloids like milk, blood, and gelatin, have homogeneous appearance when viewed with the naked eye, however, to observe them at the nanoscale is possible to understand the heterogeneity of its components. The same phenomenon can occur in pattern recognition in which it is possible to see heterogeneous patterns in texture images. However, current methods of texture analysis can not adequately describe such heterogeneous patterns. Common methods used by researchers analyse the image information in a global way, taking all its features in an integrated manner. Furthermore, multi-scale analysis verifies the patterns at different scales, but still preserving the homogeneous analysis. On the other hand various methods use textons to represent the texture, breaking texture down into its smallest unit. To tackle this problem, we propose a method to identify texture patterns not small as textons at distinct scales enhancing the separability among different types of texture. We find sub patterns of texture according to the scale and then group similar patterns for a more refined analysis. Tests were performed in four static texture databases and one dynamic one. Results show that our method provides better classification rate compared with conventional approaches both in static and in dynamic texture.