出版社:International Institute for Science, Technology Education
摘要:The aim of fur lesion categorization is applicable to both MSL’s and NMSL’s has involved investigate area as cruelty of the infection in the early stage is low. The routine categorization of MSL’s has been projected in this work. To begin with the imagery are segmented and its overall and limited description are extract using speeded up robust feature methods which are additional occupied to categorize fur lesion. Then, a set of feature from starting the speeded up robust features using the unverified categorization using genetic method to present binary categorization as tumour or benevolent. The intensity of the NMSL affect pathway can be detect and analyzed using color, SR, texture. Ex-perimental result demonstrate that the projected scheme out-perform other than categorization method in conditions of sen-sitivity and spe-cificity .
其他摘要:The aim of fur lesion categorization is applicable to both MSL’s and NMSL’s has involved investigate area as cruelty of the infection in the early stage is low. The routine categorization of MSL’s has been projected in this work. To begin with the imagery are segmented and its overall and limited description are extract using speeded up robust feature methods which are additional occupied to categorize fur lesion. Then, a set of feature from starting the speeded up robust features using the unverified categorization using genetic method to present binary categorization as tumour or benevolent. The intensity of the NMSL affect pathway can be detect and analyzed using color, SR, texture. Ex-perimental result demonstrate that the projected scheme out-perform other than categorization method in conditions of sen-sitivity and spe-cificity . Keywords: Color, Sub region, texture, RGB colors, Fitness and population methods, Gaussian filter, Sobel Edge Detection, Gray level co occurrence matrix.
关键词:Color; Sub region; texture; RGB colors; Fitness and population methods; Gaussian filter; Sobel Edge Detection; Gray level co occurrence matrix.