Medical Image Feature Extraction and Fusion Algorithm Based on K-SVD

Hongli Chen, Zhaohua Huang
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引用次数: 5

Abstract

In order to better fuse the CT and MR images, based on the classical image fusion method, an image feature extraction and fusion algorithm based on K-SVD is presented. The images are sparse representation. The images are divided into blocks via the sliding window. The dictionary is compiled the column vectors. The redundant dictionary is learned by the K-singular value decomposition (K-SVD) algorithm. Then we solve the sparse coefficient matrix for each original image. And combining sparse coefficient of nonzero elements realizes the image feature fusion. Finally, the reconstructed fusion image is obtained from the combined sparse coefficients and the overcomplete dictionary. The method in this paper is capable of extracting image features and the strong anti noise interference. Experiments show that this method better preserves the useful information in the original image and the fusion image details are clear. Compared with other fusion algorithms, the results show that the proposed method has better fusion performance in both noiseless and noisy situations and is superior.
基于K-SVD的医学图像特征提取与融合算法
为了更好地融合CT和MR图像,在经典图像融合方法的基础上,提出了一种基于K-SVD的图像特征提取与融合算法。图像是稀疏表示。图像通过滑动窗口被分割成块。字典是按列向量汇编的。通过k奇异值分解(K-SVD)算法学习冗余字典。然后求解每个原始图像的稀疏系数矩阵。结合非零元素的稀疏系数实现图像特征融合。最后,结合稀疏系数和过完备字典得到重构的融合图像。该方法具有提取图像特征和抗噪声干扰能力强的特点。实验表明,该方法较好地保留了原始图像中的有用信息,融合后的图像细节清晰。结果表明,该方法在无噪声和有噪声两种情况下都具有较好的融合性能,具有一定的优越性。
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