Abstract

Multi-modal image fusion integrates different images of the same scene collected by different sensors into one image, making the fused image recognizable by the computer and perceived by human vision easily. The traditional tensor decomposition is an approximate decomposition method and has been applied to image fusion. In this way, the image details may be lost in the process of fusion image reconstruction. To preserve the fine information of the images, an image fusion method based on tensor matrix product decomposition is proposed to fuse multi-modal images in this article. First, each source image is initialized into a separate third-order tensor. Then, the tensor is decomposed into a matrix product form by using singular value decomposition (SVD), and the Sigmoid function is used to fuse the features extracted in the decomposition process. Finally, the fused image is reconstructed by multiplying all the fused tensor components. Since the algorithm is based on a series of singular value decomposition, a stable closed solution can be obtained and the calculation is also simple. The experimental results show that the fusion image quality obtained by this algorithm is superior to other algorithms in both objective evaluation metrics and subjective evaluation.

Highlights

  • The purpose of image fusion is to synthesize multiple images of the same scene into a fusion image containing part or all information of each source image (Zhang, 2004)

  • In addition to the infrared and visible images used in the previous section, CT and MRI medical images are used for contrast experiments

  • We propose a method based on matrix product state (MPS) for multimodal image fusion

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Summary

Introduction

The purpose of image fusion is to synthesize multiple images of the same scene into a fusion image containing part or all information of each source image (Zhang, 2004). The fused image contains more information than each source image, it is more suitable for machine processing and human visual perception. Image fusion has a wide range of applications in many fields, such as computer vision, remote sensing, medical imaging, and video surveillance (Goshtasby and Nikolov, 2007). The same type of sensors acquire information in a similar way, so the single-modal image fusion cannot provide information of the same scene from different aspects. Multi-modal image fusion (Ma et al, 2019) realizes the complementarity of different features of the same scene through fusing the images collected by different types of sensors and generates an informative image for subsequent processing. Multi-modal image fusion has a wide range of applications in engineering practice

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