[1] HARALICK R M. Statistical and structural approaches to texture[J]. Proceedings of the Institute of Electrical and Electronics Engineers, 1979, 67(5): 786-804.
[2] ZHU Xianfeng. Study of key techniques of imaging flow cytometry for bioparticle detection and recongnition[D]. TIANJIN: Tianjin university, 2010.
[3] GOMEZ G P, RAMIREZ C M, GONZALEZ B J, et al. A feature extraction method based on morphological operators for automatic classification of leukocytes[C]. Seventh Mexican International Conference on Artificial Intelligence. Mexican 2008, 10: 227-232.
[4] THEERA U N, DHOMPONGSA S. Morphological granulometric features of nucleus in automatic bone marrow white blood cell classification[J]. IEEE Transactions on Information Technology in, Biomedicine,2007, 11(3): 353-359.
[5] ANGULO J, KLOSSA J, FLANDARIN G. Ontologybased lymphocyte population description using mathematical morphology on colour blood images[J]. Cellular and Molecular Biology TM, 2006, 52(6): 2-15.
[6] TAJERIPOUR F, KABIR E, SHEIKHI A. Fabric defect detection using modified local binary patterns[C]. EURASIP Journal on Advances in Signal Processing, 2008: 1-12.
[7] WESZKA J S, DYER C R, RESENFEID A. A comparative study of texture measures for terrain classifycation[J]. IEEE Transaction on Systems,Man and Cybernetics, 1976, 6(4): 269-285.
[8] CAPINETTI L, CASTIELLO C, FANELLI A M, et al. Texture segmentation with local fuzzy patterns and neurofuzzy decision support[C]. SpringerVerlag, 2006: 340347.
[9] ALMEIDA M B, PADUA BRAGA A, BRAGA J P. SVMKM: Speeding SVMs learning with a priori cluster selection and kmeans[C]. VI Brazilian Symposium on Neural Networks, 2000: 162-167.
[10] HAN Guang, ZHAO Chunxia. Rotation invariant texture classification based on orientationfrequency decomposition[J]. Acta Photonica Sinica, 2010, 39(2): 352-356.
[11] OJALA T,PIETIKINEN M, HARWOOD D. A comparative study of texture measures with classification based on feature distributions[J]. Pattern Recognition, 1996, 29(1): 51-59.
[12] TAJERIPOUR F, KABIR E, SHEIKHI A. fabric defect detection using modified local binary patterns[J]. EURASIP Journal on Advances in Signal Processing , 2008(1): 12-21.
[13] SUN Huixian.Research on the methods and application of machine vision inspection with texture analysis[D]. Hunan: National University of Defense Technology doctor degree paper, 2010.
[15] IAKOVIDIS K, KERAMIDAS G, DIMITEIS M. Fuzzy local binary patterns for ultrasound texture characterization[C]. LNCS 5112, SpringerVerlag, 2008: 750-759.
[16] FATICHAH C, TANGEL M L, WIDYANTO M R, et al. Parameter optimization of local fuzzy patterns based on fuzzy contrast measure for white blood cell texture feature extraction[J]. Journal of Advanced Computational Intelligence and Intelligent Informatics, 2012, 16(3): 412-419.