Faculty of Engineering, Bar Ilan University, Ramat Gan 52900, Israel.
IEEE Trans Image Process. 2013 Aug;22(8):2983-94. doi: 10.1109/TIP.2013.2237916. Epub 2013 Jan 10.
We present a framework for image inpainting that utilizes the diffusion framework approach to spectral dimensionality reduction. We show that on formulating the inpainting problem in the embedding domain, the domain to be inpainted is smoother in general, particularly for the textured images. Thus, the textured images can be inpainted through simple exemplar-based and variational methods. We discuss the properties of the induced smoothness and relate it to the underlying assumptions used in contemporary inpainting schemes. As the diffusion embedding is nonlinear and noninvertible, we propose a novel computational approach to approximate the inverse mapping from the inpainted embedding space to the image domain. We formulate the mapping as a discrete optimization problem, solved through spectral relaxation. The effectiveness of the presented method is exemplified by inpainting real images, where it is shown to compare favorably with contemporary state-of-the-art schemes.
我们提出了一种利用扩散框架方法进行光谱降维的图像修复框架。我们表明,在嵌入域中构建修复问题时,待修复的域通常更平滑,特别是对于纹理图像。因此,可以通过简单的基于示例和变分方法来修复纹理图像。我们讨论了所诱导的平滑度的性质,并将其与当前修复方案中使用的基本假设联系起来。由于扩散嵌入是非线性和不可逆的,我们提出了一种新的计算方法来近似从修复后的嵌入空间到图像域的逆映射。我们将映射表示为一个离散优化问题,并通过谱松弛来解决。通过对真实图像进行修复,证明了所提出方法的有效性,并且与当前最先进的方案相比具有优势。