Improved Weber’s law based local binary pattern for dynamic texture recognition

被引:0
作者
Deepshika Tiwari
Vipin Tyagi
机构
[1] Jaypee University of Engineering and Technology,
来源
Multimedia Tools and Applications | 2017年 / 76卷
关键词
Dynamic texture; Local binary pattern; Uniform pattern; Noise resistance; Weber law;
D O I
暂无
中图分类号
学科分类号
摘要
Dynamic texture is the moving sequence of images that shows some form of temporal regularity. Various static texture descriptors have been extended to spatiotemporal domain for dynamic texture classification. Local Binary Pattern (LBP) is a simple descriptor computationally but sensitive to noise and sometimes fails to capture different patterns. In view of this, a novel approach for dynamic texture classification is introduced that maintains the advantageous characteristics of uniform LBP. Inspired by the Weber’s law, a simple yet very powerful, robust texture descriptor, i.e., Weber’s law based LBP with center pixel (WLBPC) is proposed from the local patches based on the conventional Local Binary Pattern approach. A noise resistant variant of Weber’s law based LBP with center pixel (NR-WLBPC) is also proposed. To do this, WLBPC is extended to a 3-valued code based on a new threshold. Proposed noise resistant variant of WLBPC descriptor makes use of the indecisive bit and the uniform pattern to compute the feature vector. Center pixel information is fused with both the dynamic texture descriptors to improve the discriminative power. Extensive experimental evaluations on representative dynamic texture databases (DynTex++ and UCLA) show that the proposed descriptors show better performance in comparison to recent state-of-the-art LBP variants and other methods under both normal and noisy conditions. Noise invariant of the proposed descriptor also performs better in the presence of noise due to its robustness and discriminating capabilities.
引用
收藏
页码:6623 / 6640
页数:17
相关论文
共 86 条
[1]  
Baktashmotlagh M(2014)Discriminative non-linear stationary subspace analysis for video classification IEEE Trans Pattern Anal Mach Intell 36 2353-2366
[2]  
Harandi M(2012)Local ordinal contrast pattern histograms for spatiotemporal, lip-based speaker authentication IEEE Trans Inf Forensic Secur 7 602-612
[3]  
Lovell BC(2005)Probabilistic kernels for the classification of auto-regressive visual processes Proc IEEE Conf Comput Vis Pattern Recognit 1 846-851
[4]  
Salzmann M(2010)WLD: a robust local image descriptor IEEE Trans Pattern Anal Mach Intell 32 1705-1720
[5]  
Chan C(2012)Space time texture representation and recognition based on a spatiotemporal orientation analysis IEEE Trans Pattern Anal Mach Intell 34 1193-1205
[6]  
Goswami B(2003)Dynamic textures Int J Comput Vis 51 91-109
[7]  
Kittler J(2010)Maximum margin distance learning for dynamic texture recognition Eur Conf Comput Vis 6312 223-236
[8]  
Christmas WJ(2013)BRINT: binary rotation invariant and noise tolerant texture classification IEEE Int Conf Image Proc, ICIP 2013 255-259
[9]  
Chang AB(2013)WLBP: weber local binary pattern for local image description Neurocomputing 120 325-335
[10]  
Vasconcelos N(2012)Extended local binary patterns for texture classification Image Vis Comput 30 86-99