一种高效的自然图像深度量化压缩感知编码框架

Wenxue Cui, F. Jiang, Xinwei Gao, Shengping Zhang, Debin Zhao
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引用次数: 9

摘要

传统的图像压缩感知(CS)编码框架解决的是基于测量编码工具(预测、量化、熵编码等)和基于优化的图像重构方法的逆问题。这些CS编码框架面临着提高编码器编码效率的挑战,同时也面临着解码器计算复杂度高的问题。本文进一步提出了一种新的基于深度网络的自然图像CS编码框架,该框架由三个子网络组成:采样子网络、偏移子网络和重构子网络,分别负责采样、量化和重构。通过协同利用这些子网络,它可以以端到端度量的形式与提出的率失真优化损失函数进行训练。该框架不仅提高了编码性能,而且大大降低了图像重构的计算成本。在基准数据集上的实验结果表明,与现有的方法相比,该方法能够获得更好的率失真性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Deep Quantized Compressed Sensing Coding Framework of Natural Images
Traditional image compressed sensing (CS) coding frameworks solve an inverse problem that is based on the measurement coding tools (prediction, quantization, entropy coding, etc.) and the optimization based image reconstruction method. These CS coding frameworks face the challenges of improving the coding efficiency at the encoder, while also suffering from high computational complexity at the decoder. In this paper, we move forward a step and propose a novel deep network based CS coding framework of natural images, which consists of three sub-networks: sampling sub-network, offset sub-network and reconstruction sub-network that responsible for sampling, quantization and reconstruction, respectively. By cooperatively utilizing these sub-networks, it can be trained in the form of an end-to-end metric with a proposed rate-distortion optimization loss function. The proposed framework not only improves the coding performance, but also reduces the computational cost of the image reconstruction dramatically. Experimental results on benchmark datasets demonstrate that the proposed method is capable of achieving superior rate-distortion performance against state-of-the-art methods.
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