Title
Combining frequent itemsets and statistical features for texture classification in relative phase domain
Abstract
Relative phase is a newly developing technology for extracting features of images from phase domain and this paper studies a method of texture classification in relative phase domain. Because relative phase information can be obtained only in complex wavelet, we select DTCWT (Dual Tree Complex Wavelet Transform) and PDTDFB (Pyramidal Dual Tree Directional Filter Bank) to decompose images into different subbands at different levels and directions, and then the wavelet coefficients are mapped into relative phase domain. In relative phase domain, we calculate the frequent 2-itemsets and statistical characteristics mean and standard deviation of each subband as image features for texture classification. The experimental results show that our texture classification method has better performance in relative phase domain built from either DTCWT or PDTDFB.
Year
DOI
Venue
2014
10.1109/FSKD.2014.6980864
FSKD
Keywords
Field
DocType
frequent 2-itemsets,statistical characteristic,image decomposition,trees (mathematics),wavelet transforms,statistical analysis,texture classification,pyramidal dual tree directional filter bank,image feature extraction,standard deviation,relative phase domain,frequent 2-itemset,dual tree complex wavelet transform,statistical features,statistical characteristics mean,channel bank filters,feature extraction,image classification,relative phase,dtcwt,pdtdfb,image texture
Data mining,Pattern recognition,Computer science,Artificial intelligence,Relative phase,Machine learning
Conference
Citations 
PageRank 
References 
0
0.34
0
Authors
3
Name
Order
Citations
PageRank
Li Li17624.03
Chen Chen244057.36
Longfei Yang300.34