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Context Modeling and Correction of Quantization Errors in Prediction Loop

机译:预测循环中量化误差的上下文建模与校正

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In lossy predictive coding of Differential Pulse Code Modulation (DPCM) type, quantization performed in the prediction loop induces propagation of quantization errors, resulting in biased predictions of the subsequent samples. In this work, we aim to alleviate the negative effect of quantization errors on the robustness of prediction. We propose some practical techniques for context modeling of quantization errors and cancellation of estimation biases in the DPCM reconstruction. The resulting refined estimates are fed into the prediction to improve coding efficiency. When applied to 1D audio and 2D image signals, the proposed techniques can reduce the bit rate and at the same time improve the PSNR performance significantly.
机译:在差分脉冲代码调制(DPCM)类型的有损预测编码中,在预测环路中执行的量化引起量化误差的传播,导致随后样本的偏置预测。 在这项工作中,我们的目标是减轻量化误差对预测稳健性的负面影响。 我们提出了一些实用的技术,以了解量化误差的上下文建模和DPCM重建中的估计偏差消除。 由此产生的精制估计被送入预测以提高编码效率。 当应用于1D音频和2D图像信号时,所提出的技术可以降低比特率,同时显着提高PSNR性能。

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