BM3D has been considered the standard for comparison in the image denoising literature for the last decade. Though it has been shown to be surpassed numerous times by alternative algorithms in terms of PSNR, the margins are very thin, and denoising is approaching a limiting point. The reason for the continued use of BM3D within the literature is due to its off-the-shelf ease-of-use in any application, which alternative improved denoising algorithms sometimes fail to match. This article proposes a new variation of BM3D, which maintains its ease of use but is notably faster. This development brings us closer to real-time ease-of-use application of new state-of-the-art image reconstruction algorithms such as plug-and-play priors. We refer to our variation of BM3D as G-BM3D. In terms of image quality, our algorithm attains very similar denoising performance to the original algorithm. Though our algorithm is written completely in MATLAB software, it is already between 5-20 times faster than the original algorithm, and the modifications to the algorithm are such that it is expected to be significantly faster when ported to CUDA language and with more powerful GPUs. The improved processing time is achieved by two main components. The first component is a new computational strategy that achieves faster block matching, and the second is a new global approach to the 3D wavelet filtering step that allows for significantly improved processing times on GPUs. The fast block matching strategy could also be applied to any of the vast number of nonlocal self-similarity (NSS) denoisers to improve processing times.
翻译:BM3D 被认为是过去十年中图像去除文学文献的比较标准。 虽然从 PSNR 的替代算法来看, BM3D 已被显示多次超越了无数次, 但边距非常薄, 正在接近一个限制点 。 文献中继续使用 BM3D 的原因是在任何应用中, BM3D 的变异性是现成的, 在任何应用中, 替代的已改进的去除算法有时无法匹配。 文章提出了BM3D 的新变异, 保持了使用方便, 但速度明显更快。 这一发展让我们更接近实时更方便地使用 PSNPSNR 的替代算法, 使用新的最先进的图像重建算法, 如插接和播放前, 我们提到的 BM3D 的变异性, 在图像质量上, 我们的算法的变异性性性功能与原始算法非常相似。 虽然我们的算法完全写在MATLAB 软件中, 它已经比原始算法快了5-20倍, 并且对算法的变换法的变异性应用是非系统战略的更精确的变异化战略应用如此强大。 当CAMUDMDMD 进入新的阶段时, 快速的精化后, 将达到新的的变换到GUDMUDMDMDMMM的精制为新的速度, 新的速度, 新的速度要大大到新的速度, 速度要大大到新的速度, 。