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Targeting Accurate Object Extraction From an Image: A Comprehensive Study of Natural Image Matting

机译:从图像中精确定向目标提取:自然图像遮罩的全面研究

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摘要

With the development of digital multimedia technologies, image matting has gained increasing interests from both academic and industrial communities. The purpose of image matting is to precisely extract the foreground objects with arbitrary shapes from an image or a video frame for further editing. It is generally known that image matting is inherently an ill-posed problem because we need to output three images out of only one input image. In this paper, we provide a comprehensive survey of the existing image matting algorithms and evaluate their performance. In addition to the blue screen matting, we systematically divide all existing natural image matting methods into four categories: 1) color sampling-based; 2) propagation-based; 3) combination of sampling-based and propagation-based; and 4) learning-based approaches. Sampling-based methods assume that the foreground and background colors of an unknown pixel can be explicitly estimated by examining nearby pixels. Propagation-based methods are instead based on the assumption that foreground and background colors are locally smooth. Learning-based methods treat the matting process as a supervised or semisupervised learning problem. Via the learning process, users can construct a linear or nonlinear model between the alpha mattes and the image colors using a training set to estimate the alpha matte of an unknown pixel without any assumption about the characteristics of the testing image. With three benchmark data sets, the various matting algorithms are evaluated and compared using several metrics to demonstrate the strengths and weaknesses of each method both quantitatively and qualitatively. Finally, we conclude this paper by outlining the research trends and suggesting a number of promising directions for future development.
机译:随着数字多媒体技术的发展,图像消光越来越引起学术界和工业界的兴趣。图像消光的目的是从图像或视频帧中精确提取具有任意形状的前景对象,以进行进一步编辑。众所周知,图像消光本质上是一个不适的问题,因为我们只需要在一个输入图像中输出三个图像即可。在本文中,我们提供了对现有图像抠像算法的全面调查,并评估了它们的性能。除了蓝屏消光之外,我们将所有现有的自然图像消光方法系统地分为四类:1)基于颜色采样; 2)基于传播; 3)结合基于采样和基于传播; 4)基于学习的方法。基于采样的方法假设可以通过检查附近的像素来显式估计未知像素的前景色和背景色。相反,基于传播的方法是基于前景和背景颜色局部平滑的假设。基于学习的方法将抠图过程视为监督或半监督学习问题。通过学习过程,用户可以使用训练集在alpha遮罩和图像颜色之间构建线性或非线性模型,以估计未知像素的alpha遮罩,而无需假设测试图像的特征。利用三个基准数据集,使用几种指标对各种消光算法进行评估和比较,以定量和定性地展示每种方法的优缺点。最后,我们通过概述研究趋势并为未来的发展提出了许多有希望的方向,从而对本文进行了总结。

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