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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >A scene adaptive and signal adaptive quantization for subband imageand video compression using wavelets
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A scene adaptive and signal adaptive quantization for subband imageand video compression using wavelets

机译:基于小波的子带图像和视频压缩的场景自适应和信号自适应量化

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The discrete wavelet transform (DWT) provides an advantageous framework of multiresolution space-frequency representation with promising applications in image processing. The challenge as well as the opportunity in wavelet-based compression is to exploit the characteristics of the subband coefficients with respect to both spectral and spatial localities. A common problem with many existing quantization methods is that the inherent image structures are severely distorted with coarse quantization. Observation shows that subband coefficients with the same magnitude generally do not have the same perceptual importance. We propose in this paper a scene adaptive and signal adaptive quantization scheme capable of exploiting the spectral and spatial localization properties resulting from the wavelet transform. The quantization is implemented as maximum a posteriori probability estimation-based clustering in which subband coefficients are quantized to their cluster means, subject to local spatial constraints. The intensity distribution of each cluster within a subband is modeled by an optimal Laplacian source to achieve signal adaptivity, while spatial constraints are enforced by appropriate Gibbs random fields (GRF) to achieve scene adaptivity. With spatially isolated coefficients removed and clustered coefficients retained at the same time, the available bits are allocated to visually important scene structures so that the information loss is least perceptible. Furthermore, the reconstruction noise in the decompressed image can be suppressed using another GRF-based enhancement algorithm
机译:离散小波变换(DWT)提供了多分辨率空频表示的有利框架,在图像处理中具有广阔的应用前景。基于小波的压缩所面临的挑战和机遇是,就频谱和空间局部性而言,利用子带系数的特性。许多现有量化方法的一个普遍问题是,固有的图像结构会因粗略量化而严重失真。观察表明,具有相同幅度的子带系数通常不具有相同的感知重要性。我们在本文中提出了一种场景自适应和信号自适应量化方案,该方案能够利用小波变换产生的频谱和空间定位特性。量化被实现为基于后验概率估计的最大聚类,在该聚类中,子带系数受局部空间约束而量化为其聚类平均值。子带内每个群集的强度分布由最佳拉普拉斯光源建模,以实现信号自适应性,而空间约束则由适当的吉布斯随机场(GRF)强制实现,以实现场景自适应性。在去除空间上隔离的系数并同时保留聚类系数的情况下,可用位分配给视觉上重要的场景结构,从而使信息丢失的感知最小。此外,可以使用其他基于GRF的增强算法抑制解压缩图像中的重建噪声

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