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Graph-based semi-supervised learning with multi-modality propagation for large-scale image datasets

机译:基于图的半监督学习与多模式传播的大规模图像数据集

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摘要

Semi-supervised learning (SSL) is widely-used to explore the vast amount of unlabeled data in the world. Over the decade, graph-based SSL becomes popular in automatic image annotation due to its power of learning globally based on local similarity. However, recent studies have shown that the emergence of large-scale datasets challenges traditional methods. On the other hand, most previous works have concentrated on single-label annotation, which may not describe image contents well. To remedy the deficiencies, this paper proposes a new graph-based SSL technique with multi-label propagation, leveraging the distributed computing power of the MapReduce programming model. For high learning performance, the paper further presents both a multi-layer learning structure and a tag refinement approach, where the former unifies both visual and textual information of image data during learning, while the latter simultaneously suppresses noisy tags and emphasizes the other tags after learning. Experimental results based on a medium-scale and a large-scale image datasets show the effectiveness of the proposed methods.
机译:半监督学习(SSL)被广泛用于探索世界上大量的未标记数据。在过去的十年中,基于图的SSL由于基于局部相似度进行全局学习的能力,在自动图像注释中变得很流行。但是,最近的研究表明,大规模数据集的出现对传统方法提出了挑战。另一方面,大多数以前的工作都集中在单标签注释上,这可能无法很好地描述图像内容。为了弥补这些不足,本文提出了一种新的基于图的SSL技术,该技术具有多标签传播功能,并利用了MapReduce编程模型的分布式计算能力。为了获得较高的学习性能,本文还提出了多层学习结构和标签细化方法,其中前者在学习过程中将图像数据的视觉和文本信息统一起来,而后者则同时抑制了嘈杂的标签并强调了其他标签。学习。基于中型和大型图像数据集的实验结果表明了所提方法的有效性。

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