Rotation invariant texture feature extraction based on Sorted Neighborhood Differences

초록

Rotation invariant texture descriptor plays an important role in texture-based object classification. However the classification accuracy may decrease due to the inconsistent performance of texture descriptor with respect to various rotated angles. In this paper we propose a consistent rotation invariant texture descriptor named Sorted Neighborhood Differences (SND). SND is derived from the integration of sorted neigh- borhood and binary patterns. Experimental results show that overall texture classification accuracy of SND with respect to different rotations using OUTEX TC 0010 texture database is 91.81% whereas those of LBPriu and LBP-HF are 86.42% and 88.28%, respectively. The texture and coin classification accuracies of SND are also consistent in various rotation angles and illumination levels. © 2011 IEEE.

제목
Rotation invariant texture feature extraction based on Sorted Neighborhood Differences
저자
KIM DEOKHWAN
학회명
IEEE International Conference on Multimedia and Expo 2011
개최지
Ramon Llull University-La Salle, Spain
학회 개최일
2011-07-11 ~ 2011-07-15