Single image denoising (SID) has achieved significant breakthroughs with the development of deep learning. However, the proposed methods are often accompanied by plenty of parameters, which greatly limits their application scenarios. Different from previous works that blindly increase the depth of the network, we explore the degradation mechanism of the noisy image and propose a lightweight Multiple Degradation and Reconstruction Network (MDRN) to progressively remove noise. Meanwhile, we propose two novel Heterogeneous Knowledge Distillation Strategies (HMDS) to enable MDRN to learn richer and more accurate features from heterogeneous models, which make it possible to reconstruct higher-quality denoised images under extreme conditions. Extensive experiments show that our MDRN achieves favorable performance against other SID models with fewer parameters. Meanwhile, plenty of ablation studies demonstrate that the introduced HMDS can improve the performance of tiny models or the model under high noise levels, which is extremely useful for related applications.
翻译:随着深层学习的发展,单一图像脱色(SID)取得了重大突破,然而,拟议的方法往往伴随着大量参数,大大限制了应用设想。不同于以前盲目地扩大网络深度的工程,我们探索了噪音图像的降解机制,并提议了一个轻量的多重退化和重建网络(MDRN)以逐步消除噪音。与此同时,我们提议了两个新颖的异质知识蒸馏战略(HMDS),以使MDRN能够从多种模型中学习更丰富、更准确的特征,从而有可能在极端条件下重建更高质量的脱色图像。广泛的实验表明,我们的MDRN取得了优于其他SID模型且参数较少的优异性表现。 与此同时,大量减罪研究表明,引进的HMDS可以改善小模型或高噪音水平下模型的性能,这对于相关应用极为有用。