Near-Lossless ℓ∞-Constrained Image Decompression via Deep Neural Network

Xi Zhang, Xiaolin Wu
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引用次数: 9

Abstract

Recently a number of CNN-based techniques were proposed to remove image compression artifacts. As in other restoration applications, these techniques all learn a mapping from decompressed patches to the original counterparts under the ubiquitous L2 metric. However, this approach is incapable of restoring distinctive image details which may be statistical outliers but have high semantic importance (e.g., tiny lesions in medical images). To overcome this weakness, we propose to incorporate an ℓ∞ fidelity criterion in the design of neural network so that no small, distinctive structures of the original image can be dropped or distorted. Experimental results demonstrate that the proposed method outperforms the state-of-the-art methods in ℓ∞ error metric and perceptual quality, while being competitive in L2 error metric as well. It can restore subtle image details that are otherwise destroyed or missed by other algorithms. Our research suggests a new machine learning paradigm of ultra high fidelity image compression that is ideally suited for applications in medicine, space, and sciences.
基于深度神经网络的近无损约束图像解压缩
最近提出了一些基于cnn的技术来去除图像压缩伪影。与其他恢复应用一样,这些技术都在普遍存在的L2度量下学习从解压补丁到原始对应的映射。然而,这种方法无法恢复独特的图像细节,这些细节可能是统计异常值,但具有很高的语义重要性(例如,医学图像中的微小病变)。为了克服这个缺点,我们建议在神经网络的设计中加入一个r∞保真度准则,这样原始图像的小而独特的结构就不会被丢弃或扭曲。实验结果表明,该方法在l∞误差度量和感知质量方面优于现有方法,在L2误差度量方面也具有竞争力。它可以恢复微妙的图像细节,否则被其他算法破坏或错过。我们的研究提出了一种新的超高保真图像压缩机器学习范式,非常适合医学、太空和科学领域的应用。
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