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Layered Image Compression Using Scalable Auto-Encoder

机译:使用可伸缩自动编码器的分层图像压缩

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This paper presents a novel convolutional neural network (CNN) based image compression framework via scalable auto-encoder (SAE). Specifically, our SAE based deep image codec consists of hierarchical coding layers, each of which is an end-to-end optimized auto-encoder. The coarse image content and texture are encoded through the first (base) layer while the consecutive (enhance) layers iteratively code the pixel-level reconstruction errors between the original and former reconstructed images. The proposed SAE structure alleviates the need to train multiple models for different bit-rate points by recently proposed auto-encoder based codecs. The SAE layers can be combined to realize multiple rate points, or to produce a scalable stream. The proposed method has similar rate-distortion performance in the low-to-medium rate range as the state-of-the-art CNN based image codec (which uses different optimized networks to realize different bit rates) over a standard public image dataset. Furthermore, the proposed codec generates better perceptual quality in this bit rate range.
机译:本文提出了一种通过可伸缩自动编码器(SAE)的基于卷积神经网络(CNN)的新型图像压缩框架。具体来说,我们基于SAE的深度图像编解码器由分层编码层组成,每个分层都是端到端优化的自动编码器。粗略的图像内容和纹理通过第一(基础)层进行编码,而连续的(增强)层则对原始和先前重建图像之间的像素级重建误差进行迭代编码。通过最近提出的基于自动编码器的编解码器,提出的SAE结构减轻了针对不同比特率点训练多个模型的需求。 SAE层可以组合以实现多个速率点,或产生可伸缩的流。所提出的方法在中低速率范围内的速率失真性能与标准公共图像数据集上基于最新CNN的图像编解码器(使用不同的优化网络实现不同的比特率)相似。此外,提出的编解码器在此比特率范围内产生更好的感知质量。

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