Infrared images are fuzzy and noisy by nature; thus the segmentation of human targets in infrared images is a challenging task. In this paper, a fast thresholding method of infrared human images based on two-dimensional fuzzy Tsallis entropy is introduced. First, to address the fuzziness of infrared image, the fuzzy Tsallis entropy of objects and that of background are defined, respectively, according to probability partition principle. Next, this newly defined entropy is extended to two dimensions to make good use of spatial information to deal with the noise in infrared images, and correspondingly a fast computation method of two-dimensional fuzzy Tsallis entropy is put forward to reduce its computation complexity from O(L2) to O(L). Fina...
To handle the fuzziness and spatial uncertainties among pixels entailed in color images, this paper ...
Abstract—Two-dimensional (2-D) thresholding can give a better segmentation than one-dimensional thre...
Entropy based image thresholding methods are widely adopted for multilevel image segmentation. Bilev...
AbstractInfrared thermograph is of great significance in electric equipment monitoring, but due to b...
Image segmentation is a significant step in image analysis and computer vision. Many entropy based a...
Abstract—Image segmentation is one of the key techniques in the field of image understanding and com...
The fuzzy 2-partition entropy approach has been widely used to select threshold value for image segm...
Though traditional thresholding methods are simple and efficient, they may result in poor segmentati...
Image segmentation plays an important role in various image processing applications including robot ...
Abstract: Owing to considering the distribution of the gray information and the spatial neighbor inf...
Multi-level thresholding methods are a class of most popular image segmentation techniques, however,...
Histogram Thresholding is an image processing technique whose aim is that of separating the objects ...
Soft computing is likely to play aprogressively important role in many applications including image ...
Effectiveness of various fuzzy thresholding techniques (based on entropy of fuzzy sets, fuzzy geomet...
Image segmentation using fuzzy entropy is an important and common segmentation method. The threshold...
To handle the fuzziness and spatial uncertainties among pixels entailed in color images, this paper ...
Abstract—Two-dimensional (2-D) thresholding can give a better segmentation than one-dimensional thre...
Entropy based image thresholding methods are widely adopted for multilevel image segmentation. Bilev...
AbstractInfrared thermograph is of great significance in electric equipment monitoring, but due to b...
Image segmentation is a significant step in image analysis and computer vision. Many entropy based a...
Abstract—Image segmentation is one of the key techniques in the field of image understanding and com...
The fuzzy 2-partition entropy approach has been widely used to select threshold value for image segm...
Though traditional thresholding methods are simple and efficient, they may result in poor segmentati...
Image segmentation plays an important role in various image processing applications including robot ...
Abstract: Owing to considering the distribution of the gray information and the spatial neighbor inf...
Multi-level thresholding methods are a class of most popular image segmentation techniques, however,...
Histogram Thresholding is an image processing technique whose aim is that of separating the objects ...
Soft computing is likely to play aprogressively important role in many applications including image ...
Effectiveness of various fuzzy thresholding techniques (based on entropy of fuzzy sets, fuzzy geomet...
Image segmentation using fuzzy entropy is an important and common segmentation method. The threshold...
To handle the fuzziness and spatial uncertainties among pixels entailed in color images, this paper ...
Abstract—Two-dimensional (2-D) thresholding can give a better segmentation than one-dimensional thre...
Entropy based image thresholding methods are widely adopted for multilevel image segmentation. Bilev...