Interactive Image Segmentation: From Graph-based Algorithms to Feature-Space Annotation

Jordão Bragantini, A. Falcão
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引用次数: 1

Abstract

In recent years, machine learning algorithms that solve problems from a collection of examples (i.e. labeled data), have grown to be the predominant approach for solving computer vision and image processing tasks. These algorithms’ performance is highly correlated with the abundance of examples and their quality, especially methods based on neural networks, which are significantly data-hungry. Notably, image segmentation annotation requires extensive effort to produce high-quality labeling due to the fine-scale of the units (pixels) and resorts to interactive methodologies to provide user assistance. Therefore, improving interactive image segmentation methodologies with the goal of improving data labeling problems is of paramount importance to advance applications of computer vision methods. With this in mind, we investigated the existing literature on interactive image segmentation, contributing to it by introducing novel algorithms that perform the segmentation from markers, contours, and finally proposing a new paradigm for image annotation at scale.
交互式图像分割:从基于图的算法到特征空间标注
近年来,从一组示例(即标记数据)中解决问题的机器学习算法已经发展成为解决计算机视觉和图像处理任务的主要方法。这些算法的性能与样本的丰富程度及其质量高度相关,特别是基于神经网络的方法,这是非常需要数据的。值得注意的是,由于单位(像素)的精细尺度,图像分割注释需要大量的努力来产生高质量的标签,并采用交互式方法来提供用户帮助。因此,改进交互式图像分割方法以改善数据标记问题对于推进计算机视觉方法的应用至关重要。考虑到这一点,我们研究了现有的交互式图像分割文献,引入了从标记、轮廓进行分割的新算法,并最终提出了一种大规模图像注释的新范式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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