图像抠图:技术综述、比较分析、应用及未来前景

D. C. Lepcha, Bhawna Goyal, Ayush Dogra
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摘要

在技术飞速发展的时代,图像抠图与图像合成一样,在图像和视频编辑中起着至关重要的作用。在电影制作等许多重要的现实应用中,它已被广泛用于视觉效果、虚拟变焦、图像翻译、图像编辑和视频编辑。随着数码相机的进步,专业人士和消费者都越来越多地参与抠图技术,以促进图像编辑活动。图像抠图对未知区域的alpha抠图进行估计,利用输入图像和对应的表示前景和未知区域的三图来区分图像的前景和背景区域。为了从图像和视频序列中提取高质量的图像,最近提出了许多图像抠图技术。本文系统地概述了当前图像和视频抠图技术,重点介绍了当前和最近提出的先进算法。一般来说,图像抠图技术根据其底层方法进行分类,即基于采样的算法、基于传播的算法、基于采样与传播相结合的算法和基于深度学习的算法。传统的图像抠图算法主要依靠颜色信息来预测alpha哑光,如基于采样、基于传播或基于采样和基于传播的组合算法。然而,这些技术大多使用低级特征,并受到高级背景的影响,当前景对象的颜色相同或半透明时,往往会产生不必要的伪影。近年来,基于深度学习的图像抠图技术被引入,以解决传统算法的不足。它不是简单地依赖于颜色信息,而是使用深度学习机制来使用输入图像和图像的trimap来估计alpha哑光。本文对近年来的图像抠图算法进行了全面的综述,并对这些算法进行了深入的比较分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Matting: A Comprehensive Survey on Techniques, Comparative Analysis, Applications and Future Scope
In the era of rapid growth of technologies, image matting plays a key role in image and video editing along with image composition. In many significant real-world applications such as film production, it has been widely used for visual effects, virtual zoom, image translation, image editing and video editing. With recent advancements in digital cameras, both professionals and consumers have become increasingly involved in matting techniques to facilitate image editing activities. Image matting plays an important role to estimate alpha matte in the unknown region to distinguish foreground from the background region of an image using an input image and the corresponding trimap of an image which represents a foreground and unknown region. Numerous image matting techniques have been proposed recently to extract high-quality matte from image and video sequences. This paper illustrates a systematic overview of the current image and video matting techniques mostly emphasis on the current and advanced algorithms proposed recently. In general, image matting techniques have been categorized according to their underlying approaches, namely, sampling-based, propagation-based, combination of sampling and propagation-based and deep learning-based algorithms. The traditional image matting algorithms depend primarily on color information to predict alpha matte such as sampling-based, propagation-based or combination of sampling and propagation-based algorithms. However, these techniques mostly use low-level features and suffer from high-level background which tends to produce unwanted artifacts when color is same or semi-transparent in the foreground object. Image matting techniques based on deep learning have recently introduced to address the shortcomings of traditional algorithms. Rather than simply depending on the color information, it uses deep learning mechanism to estimate the alpha matte using an input image and the trimap of an image. A comprehensive survey on recent image matting algorithms and in-depth comparative analysis of these algorithms has been thoroughly discussed in this paper.
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