Self-organized operational neural networks for severe image restoration problems
المؤلف | Malik J. |
المؤلف | Kiranyaz, Mustafa Serkan |
المؤلف | Gabbouj M. |
تاريخ الإتاحة | 2022-04-26T12:31:18Z |
تاريخ النشر | 2021 |
اسم المنشور | Neural Networks |
المصدر | Scopus |
المعرّف | http://dx.doi.org/10.1016/j.neunet.2020.12.014 |
الملخص | Discriminative learning based on convolutional neural networks (CNNs) aims to perform image restoration by learning from training examples of noisy-clean image pairs. It has become the go-to methodology for tackling image restoration and has outperformed the traditional non-local class of methods. However, the top-performing networks are generally composed of many convolutional layers and hundreds of neurons, with trainable parameters in excess of several million. We claim that this is due to the inherently linear nature of convolution-based transformation, which is inadequate for handling severe restoration problems. Recently, a non-linear generalization of CNNs, called the operational neural networks (ONN), has been shown to outperform CNN on AWGN denoising. However, its formulation is burdened by a fixed collection of well-known non-linear operators and an exhaustive search to find the best possible configuration for a given architecture, whose efficacy is further limited by a fixed output layer operator assignment. In this study, we leverage the Taylor series-based function approximation to propose a self-organizing variant of ONNs, Self-ONNs, for image restoration, which synthesizes novel nodal transformations on-the-fly as part of the learning process, thus eliminating the need for redundant training runs for operator search. In addition, it enables a finer level of operator heterogeneity by diversifying individual connections of the receptive fields and weights. We perform a series of extensive ablation experiments across three severe image restoration tasks. Even when a strict equivalence of learnable parameters is imposed, Self-ONNs surpass CNNs by a considerable margin across all problems, improving the generalization performance by up to 3 dB in terms of PSNR. |
اللغة | en |
الناشر | Elsevier Ltd |
الموضوع | Convolution Convolutional neural networks Linear transformations Mathematical operators Mathematical transformations Personnel training Restoration Ablation experiments Discriminative learning Function approximation Generalization performance Image restoration problem Receptive fields Restoration problems Strict equivalence Image reconstruction article convolutional neural network drug efficacy human image reconstruction learning receptive field automated pattern recognition image processing nerve cell photostimulation physiology procedures Humans Image Processing, Computer-Assisted Neural Networks, Computer Neurons Pattern Recognition, Automated Photic Stimulation |
النوع | Article |
الصفحات | 201-211 |
رقم المجلد | 135 |
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