MetaSeg: A survey of meta-learning for image segmentation

Jiaxing Sun, Yujie Li
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引用次数: 5

Abstract

Big data-driven deep learning methods have been widely used in image or video segmentation. However, in practical applications, training a deep learning model requires a large amount of labeled data, which is difficult to achieve. Meta-learning, as one of the most promising research areas in the field of artificial intelligence, is believed to be a key tool for approaching artificial general intelligence. Compared with the traditional deep learning algorithm, meta-learning can update the learning task quickly and complete the corresponding learning with less data. To the best of our knowledge, there exist few researches in the meta-learning-based visual segmentation. To this end, this paper summarizes the algorithms and current situation of image or video segmentation technologies based on meta-learning and point out the future trends of meta-learning. Meta-learning has the characteristics of segmentation that based on semi-supervised or unsupervised learning, all the recent novel methods are summarized in this paper. The principle, advantages and disadvantages of each algorithms are also compared and analyzed.

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MetaSeg:图像分割的元学习研究综述
大数据驱动的深度学习方法已广泛应用于图像或视频分割。然而,在实际应用中,训练深度学习模型需要大量的标记数据,这是很难实现的。元学习是人工智能领域最具发展前景的研究领域之一,被认为是研究通用人工智能的关键工具。与传统的深度学习算法相比,元学习可以快速更新学习任务,用较少的数据完成相应的学习。据我们所知,基于元学习的视觉分割研究很少。为此,本文总结了基于元学习的图像或视频分割技术的算法和现状,并指出了元学习的未来发展趋势。元学习具有基于半监督学习或无监督学习的分割特征,本文对近年来的新方法进行了综述。对各种算法的原理、优缺点进行了比较和分析。
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CiteScore
8.40
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