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Learning Convolutional Networks for Content-Weighted Image Compression

机译:学习内容加权图像压缩的卷积网络

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Lossy image compression is generally formulated as a joint rate-distortion optimization problem to learn encoder, quantizer, and decoder. Due to the non-differentiable quantizer and discrete entropy estimation, it is very challenging to develop a convolutional network (CNN)-based image compression system. In this paper, motivated by that the local information content is spatially variant in an image, we suggest that: (i) the bit rate of the different parts of the image is adapted to local content, and (ii) the content-aware bit rate is allocated under the guidance of a content-weighted importance map. The sum of the importance map can thus serve as a continuous alternative of discrete entropy estimation to control compression rate. The binarizer is adopted to quantize the output of encoder and a proxy function is introduced for approximating binary operation in backward propagation to make it differentiable. The encoder, decoder, binarizer and importance map can be jointly optimized in an end-to-end manner. And a convolutional entropy encoder is further presented for lossless compression of importance map and binary codes. In low bit rate image compression, experiments show that our system significantly outperforms JPEG and JPEG 2000 by structural similarity (SSIM) index, and can produce the much better visual result with sharp edges, rich textures, and fewer artifacts.
机译:有损图像压缩通常是为学习编码器,量化器和解码器学习的关节率失​​真优化问题。由于非可分子化的量化器和离散熵估计,开发卷积网络(CNN)的图像压缩系统非常具有挑战性。在本文中,通过本地信息内容在图像中是空间变体的动机,我们建议:(i)图像的不同部分的比特率适用于本地内容,并且(ii)内容感知位根据内容加权的重要性地图的指导分配速率。因此,重要性地图的总和可以用作离散熵估计来控制压缩率的连续替代。采用双标器来量化编码器的输出,并引入代理功能,用于近似于向后传播中的二进制操作,以使其可差。编码器,解码器,双析器和重要性地图可以以端到端的方式共同优化。进一步提出了一种卷积熵编码器,用于对重要性地图和二进制代码的无损压缩。在低比特率图像压缩中,实验表明,我们的系统通过结构相似性(SSIM)指数显着优于JPEG和JPEG 2000,并且可以产生更好的视觉结果,锐利边缘,丰富的纹理和少量的伪像。

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