基于空间复用和约束最小二乘恢复的符合标准的多重描述图像编码

Xiangjun Zhang, Xiaolin Wu
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引用次数: 5

摘要

我们提出了一种实用的符合标准的多重描述(MD)图像编码技术。通过自适应预滤波和均匀下采样过程,在空间域中生成图像的多个描述。所得到的边描述是彼此交错的常规方形样本网格。因此,可以用任何现有的图像压缩标准对每个侧描述进行编码。侧解码器通过首先对下采样图像进行解压缩,然后在二维加窗分段自回归模型的指导下求解最小二乘反问题来重建输入图像。中心解码器在算法上类似于侧解码器,但它通过在求解底层逆问题时使用接收侧描述作为附加约束来提高重构质量。与先前的图像MD技术相比,所提出的图像MD技术具有最低的编码器复杂性,完全符合标准,具有竞争力的率失真性能和优越的主观质量。
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Standard-compliant multiple description image coding by spatial multiplexing and constrained least-squares restoration
We propose a practical standard-compliant multiple description (MD) image coding technique. Multiple descriptions of an image are generated in the spatial domain by an adaptive prefiltering and uniform down sampling process. The resulting side descriptions are conventional square sample grids that are interleaved with one the other. As such each side description can be coded by any of the existing image compression standards. A side decoder reconstructs the input image by first decompressing the down-sampled image and then solving a least-squares inverse problem, guided by a two-dimensional windowed piecewise autoregressive model. The central decoder is algorithmically similar to the side decoder, but it improves the reconstruction quality by using received side descriptions as additional constraints when solving the underlying inverse problem. Compared with its predecessors the proposed image MD technique offers the lowest encoder complexity, complete standard compliance, competitive rate-distortion performance, and superior subjective quality.
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