Adaptive intra prediction filtering (AIPF)

Yuanfeng He, Qijun Wang, Xinge You, Duanquan Xu
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引用次数: 2

Abstract

Intra prediction is an important coding tool to exploit correlation within one picture in image and video compression. Before the ultimate intra prediction values are generated for current block along oblique angles, a fixed low-pass filtering with 3-tap filter (1, 2, 1) will be applied to the three prediction pixel values to avoid the effect of pulse noise. In this paper, we use adaptive intra prediction filter (AIPF) to replace the fixed filter to minimize the prediction errors. To get the adaptive filter coefficients in an on-line way with an acceptable accuracy and no coding overhead, we combine it with template matching (TM). After the best estimation of current block through template matching, the optimal adaptive filter coefficients are calculated with least-square optimization through considering the best estimation as `current' block. The adaptive filter is used to obtain intra prediction values instead of the 3-tap fixed low-pass filter. Experimental results show that the AIPF can get a stable coding gain on all test sequences, and reduce the bit-rate by up to 1.74% comparing with that using only TM.
自适应内预测滤波(AIPF)
在图像和视频压缩中,图像内预测是利用图像内部相关性的重要编码工具。为了避免脉冲噪声的影响,在产生沿斜角方向电流块的最终内预测值之前,将对三个预测像素值进行固定的低通滤波(3分导滤波器1,2,1)。在本文中,我们使用自适应内预测滤波器(AIPF)来代替固定滤波器,以最小化预测误差。为了在线获得精度可接受且无需编码开销的自适应滤波系数,我们将其与模板匹配(TM)相结合。通过模板匹配对电流块进行最佳估计后,考虑最佳估计为“电流”块,采用最小二乘优化方法计算最优自适应滤波系数。采用自适应滤波器代替三抽头固定低通滤波器获得帧内预测值。实验结果表明,AIPF在所有测试序列上都能获得稳定的编码增益,比特率比仅使用TM降低了1.74%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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