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Convolutional Neural Network for Image Compression with Application to JPEG Standard

机译:用于图像压缩的卷积神经网络,应用于JPEG标准

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In this paper the authors propose a novel structure of convolutional neural network for lossy compression of images intended to be used as an extension of JPEG image compression standard. The convolutional network is trained on the set of images randomly selected from the database of high-quality images representing human faces and its effectiveness is verified experimentally using both human faces images as well as standard test images. The performance of the proposed network expressed in terms of its compression capabilities and image reconstruction quality is compared to other approaches utilizing the standard Discrete Cosine Transform, Lapped Orthogonal Transform, Modulated Lapped Transform and Karhunen-Loeve Transform, also incorporated into JPEG image compression standard. The obtained experimental results indicate that the proposed approach not only performs significantly better than the remaining approaches in terms of objective image quality measures, but also enables significant reduction of the blocking defects, which was verified by visual examination, when compared to the remaining tested transforms.
机译:本文提出了一种新颖的卷积神经网络结构,用于旨在用作JPEG图像压缩标准的扩展的图像的有损压缩。卷积网络在从代表人类面的高质量图像的数据库中随机选择的图像集培训,并且其有效性通过双方图像和标准测试图像通过实验验证。在利用标准离散余弦变换的其他方法比较的情况下,拟议的网络表达的性能与利用标准离散余弦变换,LAPPE正交变换,调制的LAPED变换和Karhunen-Loeve变换,也结合到JPEG图像压缩标准中。所获得的实验结果表明,该方法不仅比客观形象质量措施方面的剩余方法显着更好地表现得显着,但也能够显着降低阻塞缺陷,而通过视觉检查,与剩余的测试变换相比,通过视觉检查验证。

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