A Multi-source Heterogeneous Image Registration Method Based on Regional Features
An image registration and regional feature technology, applied in image analysis, image data processing, instruments, etc., can solve the problems of low registration accuracy, registration failure, complex algorithm, etc., to overcome the complexity of calculation and eliminate the influence of noise. , match the effect of precise parameters
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Embodiment 1
[0034] Embodiment 1: select the visible light image as the reference image, and the SAR image as the image to be registered;
[0035] A multi-source heterogeneous image registration method based on regional features, comprising the following steps:
[0036]S1: Carry out k-means clustering processing on the reference image and the image to be registered separately, and segment the closed area of the reference image and the image to be registered. The basic idea of the k-means clustering algorithm is to select the reference image and the image to be registered respectively The k initial clustering centers of the image divide all the objects in the data set into k categories. According to the principle of the minimum distance, through iterative calculations, each type of center is updated successively until the algorithm converges to a certain end condition, and the clustering is output As a result, for two images, x * Represents the gray value of an image pixel, Represent...
Embodiment 2
[0057] Embodiment 2: select the SAR image as the reference image, and the visible light image as the image to be registered;
[0058] A multi-source heterogeneous image registration method based on regional features, comprising the following steps:
[0059] S1: Carry out k-means clustering processing on the reference image and the image to be registered separately, and segment the closed area of the reference image and the image to be registered. The basic idea of the k-means clustering algorithm is to select the reference image and the image to be registered respectively The k initial clustering centers of the image divide all the objects in the data set into k categories. According to the principle of the minimum distance, through iterative calculations, each type of center is updated successively until the algorithm converges to a certain end condition, and the clustering is output As a result, for two images, x * Represents the gray value of an image pixel, Represen...
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