A Method for Image Registration by Maximization of Mutual Information

Registration is an important problem and a fundamental task in image processing technique. in the medical image processing fields, some techniques are proposed to find a geometrical transformation that relates the points of an image to their corresponding points of another image. In recent years, multimodality image registration techniques are proposed in the medical imaging field. Especially, CT and MR imaging of the head for diagnosis and surgical planning indicates that physicians and surgeons gain important information from these modalities, in radiotherapy planning manual registration techniques performed on MR image and CT images of the brain. Now-a-days, physicians segment the volumes of interest (VOIs) from each set of slices manually. However, manual segmentation of the object area may require several hours for analysis. Furthermore, MDCT images and MR images contain more than 100 slices. Therefore, manual segmentation and registration method cannot apply for clinical application in the head CT and MR images. Many automatic and semiautomatic image registration methods have been proposed. The main techniques of image registration are performed by the manual operation, using landmark and using voxel information, in this paper, we develop a new method for automatic registration of head images by computer which obtained CT and MR images employing maximization of mutual information. The mutual information registration criterion allows fully automated, highly robust registration of multimodal images. The primary objective of this study is to increase accuracy of the registration and reduce the processing time

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