Author/Authors :
Miao, Yu School of Computer Science and Technology - WeiXing Road - Changchun, China , Gao, Jiaying School of Computer Science and Technology - WeiXing Road - Changchun, China , Zhang ,Ke School of Computer Science and Technology - WeiXing Road - Changchun, China , Shi, Weili School of Computer Science and Technology - WeiXing Road - Changchun, China , Li, Yanfang School of Computer Science and Technology - WeiXing Road - Changchun, China , Zhao, Jiashi School of Computer Science and Technology - WeiXing Road - Changchun, China , Jiang, Zhengang School of Computer Science and Technology - WeiXing Road - Changchun, China , Yang, Huamin School of Computer Science and Technology - WeiXing Road - Changchun, China , He, Fei School of Computer Science and Technology - WeiXing Road - Changchun, China , He, Wei School of Computer Science and Technology - WeiXing Road - Changchun, China , Qin, Jun School of Computer Science and Technology - WeiXing Road - Changchun, China , Chen, Tao Department of General Surgery - Nanfang Hospital - Southern Medical University - Guangzhou - Guangdong Province, China
Abstract :
Multimodal medical images are useful for observing tissue structure clearly in clinical practice. To integrate multimodal information, multimodal registration is significant. The entropy-based registration applies a structure descriptor set to replace the
original multimodal image and compute similarity to express the correlation of images. The accuracy and converging rate of the
registration depend on this set. We propose a new method, logarithmic fuzzy entropy function, to compute the descriptor set. It is
obvious that the proposed method can increase the upper bound value from log(r) to log(r) + ∆(r) so that a more representative
structural descriptor set is formed. The experiment results show that our method has faster converging rate and wider quantified
range in multimodal medical images registration.
Keywords :
Fuzzy , Multimodal , Measurement , MI