National Institute for Research in Computer Science and Control, INRIA/IRISA, Rennes, France.
IEEE Trans Image Process. 2012 Apr;21(4):1885-98. doi: 10.1109/TIP.2011.2170700. Epub 2011 Oct 6.
This paper describes two new intraimage prediction methods based on two data dimensionality reduction methods: nonnegative matrix factorization (NMF) and locally linear embedding. These two methods aim at approximating a block to be predicted in the image as a linear combination of k-nearest neighbors determined on the known pixels in a causal neighborhood of the input block. Variable k can be seen as a parameter controlling some sort of sparsity constraints of the approximation vector. The impact of this parameter as well as of the nonnegativity and sum-to-one constraints for the addressed prediction problem has been analyzed. The prediction and RD performances of these two new image prediction methods have then been evaluated in a complete image coding-and-decoding algorithm. Simulation results show gains up to 2 dB in terms of the PSNR of the reconstructed signal after coding and decoding of the prediction residue when compared with H.264/AVC intraprediction modes, up to 3 dB when compared with template matching, and up to 1 dB when compared with a sparse prediction method.
非负矩阵分解(NMF)和局部线性嵌入。这两种方法旨在将要预测的图像块近似为输入块的因果邻域中已知像素上确定的 k-最近邻居的线性组合。变量 k 可以看作是控制逼近向量某种稀疏性约束的参数。分析了这个参数以及所提出的预测问题的非负性和和为一约束的影响。然后在完整的图像编解码算法中评估了这两种新的图像预测方法的预测和 RD 性能。仿真结果表明,与 H.264/AVC 帧内预测模式相比,在对预测残差进行编码和解码后,重构信号的 PSNR 提高了 2 dB,与模板匹配相比提高了 3 dB,与稀疏预测方法相比提高了 1 dB。