基于反馈机制的信息多重蒸馏超分辨网络

Yiming Wu, Zeyu Chen, Shiming He, Jin Wang
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引用次数: 0

摘要

遥感领域有大量的图像数据,由于图像传感器的限制,大多数图像数据的分辨率都很低。超分辨率方法可以有效地将低分辨率图像还原为高分辨率图像。然而,现有的超分辨率方法计算量大,参数多,极大地限制了超分辨率方法在移动终端上的应用。为了节约成本,我们提出了基于反馈机制的信息多重蒸馏网络(feedback - imdn),该网络以反馈机制为框架,通过高层次的提炼来获得较低层次的特征。此外,对于高级特征提取,在参数较少的情况下,我们使用信息多蒸馏块(information multiple distillation block, imdb),采用课程学习的方法进行分层特征提取。与其他最先进的轻量级算法相比,本文提出的算法能够以更少的参数更快地达到收敛,并且在图像纹理和物体轮廓重建上显著增强网络的性能,具有更好的峰值信噪比(PSNR)和结构相似度(SSIM)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Information multiple distillation super resolution network based on feedback mechanism
There are lots of image data in the field of remote sensing, most of which have low-resolution due to the limited image sensor. The super-resolution method can effectively restore the low-resolution image to the high-resolution image. However, the existing super-resolution method has both heavy computing burden and number of parameters, which greatly limits the super resolution method in the mobile terminal. For saving costs, we propose the information multiple distillation network based on feedback mechanism (Feedback-IMDN), which considers the feedback mechanism as the framework to attain lower features through high-level refining. Further, for high-level feature extraction, we use the information multiple distillation blocks (IMDBs) to carry out hierarchical feature extraction with the method of course learning in the case of a small number of parameters. Compared to other state-of-the-art lightweight algorithms, our proposed algorithm can reach convergences more rapidly with fewer parameters, and the performance of the network can be markedly enhanced on the image texture and object contour reconstruction with better peak signal-to-noise ratio (PSNR) and structural similarity (SSIM).
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