Zhang Shaomin, Zhi Lijia, Zhao Dazhe, Lin Shukuan, Zhao Hong. Entropic graph estimation integrated with SIFT features for medical image non-rigid registration[J]. Journal of Image and Graphics, 2012, 17(3): 412-418. DOI: 10.11834/jig.20120316.
Entropic graph estimation integrated with SIFT features for medical image non-rigid registration
Accuracy is important for the regrstration of medical images. Pixel gray values are a widely used feature in image registration. However
the gray values come from a single source and ignore the spatial information. In some cases
it will cause misalignment. To solve the problem
entropic graph estimation integrated with SIFT features is proposed as a medical image non-rigid registration algorithm. In the algorithm
mutual information based rigid registration is used to roughly register two images. Then the pixel gray value and the SIFT features are extracted to form a k-nearest neighbor graph (kNNG)
which is used to estimate α-mutual information (αMI). Comparison results of the images obtained from lung CT images and brain MRI images showed that the proposed algorithm provides better accuracy than both
the conventional rigid registration algorithm based on mutual information and the non-rigid registration algorithm based on entropic graph estimation and single pixel gray values.