研究目的
To propose a computationally simple denoising algorithm using the nonlocal self-similarity and the low-rank approximation (LRA) for effective noise reduction in images.
研究成果
The proposed SVD-based denoising method effectively reduces noise and is competitive with state-of-the-art algorithms in terms of quantitative metrics and visual quality. It exploits the optimal energy compaction property of SVD for low-rank approximation of similar patch groups, avoiding the computationally expensive learning of local basis for image patches.
研究不足
The method's performance is dependent on the accuracy of patch grouping and the assumption of low-rank structure in similar patch groups. Computational cost is higher than some fixed transform methods due to SVD calculations.