Publication | Closed Access
Multilevel Features Convolutional Neural Network for Multifocus Image Fusion
100
Citations
37
References
2019
Year
Machine VisionImage AnalysisMachine LearningMultifocus Image FusionPattern RecognitionImage FusionEngineeringSingle Clean ImageFusion LearningMulti-focus Image FusionMulti-image FusionDeep LearningFeature FusionMultilevel FusionComputer Vision
Multifocus image fusion is an important technique that aims to generate a single clean image by fusing multiple input images. In this paper, we propose a novel multilevel features convolutional neural network (MLFCNN) architecture for image fusion. In the MLFCNN model, all features learned from previous layers are passed to the subsequent layer. Inside every path between the previous layer and the subsequent layer, we add a 1 × 1 convolution module to reduce the redundancy. In our method, the source images first are fed to our pre-trained MLFCNN model to obtain the initial focus map. Then, the initial focus map is performed by morphological opening and closing operations and followed by a Gaussian filter to obtain the final decision map. Finally, the fused all-in-focus image is generated based on a weighted-sum strategy with the decision map. The experimental results demonstrate that the proposed method outperforms some state-of-the-art image fusion algorithms in terms of both qualitative and objective evaluations.
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