The Multi-Focus-Image-Fusion Method Based on Convolutional Neural Network and Sparse Representation

Multi-focus-image-fusion is a crucial embranchment of image processing. Many methods have been developed from different perspectives to solve this problem. Among them, the sparse representation (SR)-based and convolutional neural network (CNN)-based fusion methods have been widely used. Fusing the source image patches, the SR-based model is essentially a local method with a nonlinear fusion rule. On the other hand, the direct mapping between the source images follows the decision map which is learned via CNN. The fusion is a global one with a linear fusion rule. Combining the advantages of the above two methods, a novel fusion method that applies CNN to assist SR is proposed for the purpose of gaining a fused image with more precise and abundant information. In the proposed method, source image patches were fused based on SR and the new weight obtained by CNN. Experimental results demonstrate that the proposed method clearly outperforms existing state-of-the-art methods in addition to SR and CNN in terms of both visual perception and objective evaluation metrics, and the computational complexity is greatly reduced. Experimental results demonstrate that the proposed method not only clearly outperforms the SR and CNN methods in terms of visual perception and objective evaluation indicators, but is also significantly better than other state-of-the-art methods since our computational complexity is greatly reduced.

[1]  Lei Wang,et al.  Multi-focus image fusion: A Survey of the state of the art , 2020, Inf. Fusion.

[2]  Vassilis Tsagaris Objective evaluation of color image fusion methods , 2009 .

[3]  Jian Zhang,et al.  Image compressive sensing recovery using adaptively learned sparsifying basis via L0 minimization , 2014, Signal Process..

[4]  Jian Wang,et al.  Generalized Orthogonal Matching Pursuit , 2011, IEEE Transactions on Signal Processing.

[5]  Shadrokh Samavi,et al.  Multi-focus image fusion using dictionary-based sparse representation , 2015, Inf. Fusion.

[6]  Young-Seob Jeong,et al.  Compact and Accurate Scene Text Detector , 2020, Applied Sciences.

[7]  Yu Liu,et al.  Multi-focus image fusion with a deep convolutional neural network , 2017, Inf. Fusion.

[8]  Zheng Liu,et al.  PERFORMANCE ASSESSMENT OF COMBINATIVE PIXEL-LEVEL IMAGE FUSION BASED ON AN ABSOLUTE FEATURE MEASUREMENT , 2007 .

[9]  Lie Wang,et al.  Orthogonal Matching Pursuit for Sparse Signal Recovery With Noise , 2011, IEEE Transactions on Information Theory.

[10]  Marcin Woźniak,et al.  Soft trees with neural components as image-processing technique for archeological excavations , 2020, Personal and Ubiquitous Computing.

[11]  Chinmaya Panigrahy,et al.  Fractal dimension based parameter adaptive dual channel PCNN for multi-focus image fusion , 2020 .

[12]  Yu Liu,et al.  A general framework for image fusion based on multi-scale transform and sparse representation , 2015, Inf. Fusion.

[13]  Yi Chai,et al.  A novel sparse-representation-based multi-focus image fusion approach , 2016, Neurocomputing.

[14]  Zheng Liu,et al.  Objective Assessment of Multiresolution Image Fusion Algorithms for Context Enhancement in Night Vision: A Comparative Study , 2012, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[15]  Tianshuang Qiu,et al.  Medical image fusion based on sparse representation of classified image patches , 2017, Biomed. Signal Process. Control..

[16]  Jinbo Li,et al.  Regional multifocus image fusion using sparse representation. , 2013, Optics express.

[17]  Arif Mahmood,et al.  Multi-focus image fusion using Content Adaptive Blurring , 2019, Inf. Fusion.

[18]  Vladimir S. Petrovic,et al.  Subjective tests for image fusion evaluation and objective metric validation , 2007, Inf. Fusion.

[19]  Rabab Kreidieh Ward,et al.  Image Fusion With Convolutional Sparse Representation , 2016, IEEE Signal Processing Letters.

[20]  Yu Liu,et al.  Simultaneous image fusion and denoising with adaptive sparse representation , 2015, IET Image Process..

[21]  Rick S. Blum,et al.  A new automated quality assessment algorithm for image fusion , 2009, Image Vis. Comput..

[22]  Shutao Li,et al.  Group-Sparse Representation With Dictionary Learning for Medical Image Denoising and Fusion , 2012, IEEE Transactions on Biomedical Engineering.

[23]  Marcin Woźniak,et al.  Deep neural network correlation learning mechanism for CT brain tumor detection , 2021, Neural Computing and Applications.

[24]  Xiuqing Wu,et al.  A novel similarity based quality metric for image fusion , 2008, 2008 International Conference on Audio, Language and Image Processing.

[25]  Shutao Li,et al.  Multispectral and hyperspectral image fusion with spatial-spectral sparse representation , 2019, Inf. Fusion.

[26]  Yanjing Sun,et al.  An Image Fusion Method Based on Sparse Representation and Sum Modified-Laplacian in NSCT Domain , 2018, Entropy.

[27]  Ajith Abraham,et al.  A survey on region based image fusion methods , 2019, Inf. Fusion.

[28]  Yi Chai,et al.  A novel multi-modality image fusion method based on image decomposition and sparse representation , 2017, Inf. Sci..

[29]  Weiwen Wu,et al.  Limited-Angle X-Ray CT Reconstruction Using Image Gradient ℓ₀-Norm With Dictionary Learning , 2021, IEEE Transactions on Radiation and Plasma Medical Sciences.

[30]  Yi Chai,et al.  A Novel Geometric Dictionary Construction Approach for Sparse Representation Based Image Fusion , 2017, Entropy.

[31]  Shutao Li,et al.  Multifocus Image Fusion and Restoration With Sparse Representation , 2010, IEEE Transactions on Instrumentation and Measurement.

[32]  Jean-Yves Tourneret,et al.  Hyperspectral and Multispectral Image Fusion Based on a Sparse Representation , 2014, IEEE Transactions on Geoscience and Remote Sensing.

[33]  Guoyin Wang,et al.  Pixel convolutional neural network for multi-focus image fusion , 2017, Inf. Sci..

[34]  Vladimir Petrovic,et al.  Objective image fusion performance measure , 2000 .

[35]  Marcin Woźniak,et al.  An Image Super-Resolution Reconstruction Method with Single Frame Character Based on Wavelet Neural Network in Internet of Things , 2020, Mob. Networks Appl..

[36]  Chang Dong Yoo,et al.  Fast and Efficient Image Quality Enhancement via Desubpixel Convolutional Neural Networks , 2018, ECCV Workshops.