Author_Institution :
Res. Lab. of Autom., Signal & Image Process. (LARATSI), Univ. of Monastir-Tunisia, Monastir, Tunisia
Abstract :
Material recognition has several applications, such as image retrieval, object recognition and robotic manipulation. To make the material classification more suitable for real-world applications, it is fundamental to satisfy two characteristics: robustness to scale and to pose variations. In this study, the authors propose a novel discriminant descriptor for texture classification based on a new operator called local combination adaptive ternary pattern (LCATP) descriptor used to encode both colour and local information. They start by building the LCATP descriptor using a combination of three different adaptive thresholding techniques. Moreover, they present a novel operator, mean histogram (MH), used jointly with the LCATP in order to incorporate colour information into the descriptor. This approach is then extended to four different colour spaces: LC1C2, I1I2I3, LSHuv and O1O2O3. The final descriptor, LCATP fusion (LCATP_F), is produced by fusing the basic histogram (H) and MH extracted from the different colour spaces. Finally, the LCATP_F descriptor properties, such as the robustness to scale and pose changes are evaluated using the challenging KTH-textures under varying illumination, pose and scale (TIPS2b) dataset along with the least squares support vector machines classifier. The obtained experimental results, using the LCATP_F descriptor, show a significant improvement with respect to the state-of-the-art results.
Keywords :
image colour analysis; image retrieval; image segmentation; image texture; least squares approximations; pattern classification; support vector machines; LCATP descriptor; MH; adaptive thresholding techniques; colour information; colour spaces; descriptor properties; image retrieval; least squares support vector machines classifier; local combination adaptive ternary pattern; material recognition; mean histogram; novel discriminant descriptor; object recognition; pose variations; robotic manipulation; texture classification; texture descriptor;