4.7 Article

VSP-Fuse: Multifocus Image Fusion Model Using the Knowledge Transferred From Visual Salience Priors

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCSVT.2022.3229691

Keywords

Multifocus image fusion; pre-training task; transfer learning; visual salience priors; attention

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Multifocus image fusion (MFIF) is an efficient way to improve the visual effect of images with partial focus defects, and it is of great significance in the field of image enhancement. In this study, an edge-sensitive model for MFIF is presented, taking into account the correlation between salience object detection (SOD) and MFIF. Additionally, a randomized approach is proposed to generate massive training sets and pseudo-labels based on limited unlabeled data.
Multifocus image fusion (MFIF), as an efficient way to improve the visual effect of images with partial focus defects, is of great significance in the field of image enhancement. According to the imaging principle of the lens, we summarize the visual salience priors (VSP) from the daily photo scene and two relationships from MFIF. Thereby, an edge-sensitive model for MFIF is presented in this study. Supported by VSP, we consider the correlation between salience object detection (SOD) and MFIF, and select the former as a pre-training task. SOD provides the network with realistic depth of field and bokeh effects to learn, and enhances the network's ability to extract and express the edges of focused objects. Meanwhile, given the scarcity of real multifocus training sets, we propose a randomized approach to generate massive training sets and pseudo-labels based on limited unlabeled data. Besides, two attention modules are designed based on isometric domain transformation (IDT) in the traditional edge-preservation field. IDT removes interference information from feature maps in a low-cost manner, thereby facilitating channel-wise and spatial-wise weight assignments. Experimental results on four datasets show that the performance of our model is superior to that of many supervised models, without the need of any real MFIF training set.

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