Modern society is interested in capturing high-resolution and fine-quality images due to the surge of sophisticated cameras. However, the noise contamination in the images not only inferior people's expectations but also conversely affects the subsequent processes if such images are utilized in computer vision tasks such as remote sensing, object tracking, etc. Even though noise filtration plays an essential role, real-time processing of a high-resolution image is limited by the hardware limitations of the image-capturing instruments. Geodesic Gramian Denoising (GGD) is a manifold-based noise filtering method that we introduced in our past research which utilizes a few prominent singular vectors of the geodesics' Gramian matrix for the noise filtering process. The applicability of GDD is limited as it encounters $\mathcal{O}(n^6)$ when denoising a given image of size $n\times n$ since GGD computes the prominent singular vectors of a $n^2 \times n^2$ data matrix that is implemented by singular value decomposition (SVD). In this research, we increase the efficiency of our GGD framework by replacing its SVD step with four diverse singular vector approximation techniques. Here, we compare both the computational time and the noise filtering performance between the four techniques integrated into GGD.
翻译:现代社会对获取高分辨率和优质图像感兴趣,因为尖端相机的激增。然而,图像中的噪音污染不仅降低人们的期望,而且反过来影响随后的流程,如果这些图像用于遥感、天体跟踪等计算机视觉任务。 即使噪音过滤起着重要作用,但实时处理高分辨率图像受到图像采集仪器硬件限制的限制。大地格莱米·迪诺瓦(GGDD)是一种基于多重的噪音过滤方法,我们在过去的研究中引入了这种方法,利用了几大大地格拉姆矩阵的一些突出的单一矢量来进行噪音过滤过程。在这项研究中,GDD的可应用性有限,因为它遇到$\mathcal{O}(n_6)美元,因为GGD将一个突出的单一矢量2美元时间(GGD)的单个矢量(GGD)安装了以单值分解位置(SVD)执行的数据矩阵。 在这项研究中,我们用GDD的4个统一度计算技术来取代了我们GGD的GM 4级的精确度,我们用GGM(GG) 4级计算技术来提高GGGM(GD) 4) 。