Image Fusion With Cosparse Analysis Operator
It addresses image fusion for applications like photography or vision systems, but it appears incremental as it builds on existing sparse models.
The paper tackles the problem of combining multiple images with different focus distances into a higher quality all-in-focus image, and it shows that the proposed approach outperforms state-of-the-art methods in experimental evaluations.
The paper addresses the image fusion problem, where multiple images captured with different focus distances are to be combined into a higher quality all-in-focus image. Most current approaches for image fusion strongly rely on the unrealistic noise-free assumption used during the image acquisition, and then yield limited robustness in fusion processing. In our approach, we formulate the multi-focus image fusion problem in terms of an analysis sparse model, and simultaneously perform the restoration and fusion of multi-focus images. Based on this model, we propose an analysis operator learning, and define a novel fusion function to generate an all-in-focus image. Experimental evaluations confirm the effectiveness of the proposed fusion approach both visually and quantitatively, and show that our approach outperforms state-of-the-art fusion methods.