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SmartLabel

机译:智能标签

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摘要

Labeling objects in images is an essential prerequisite for many visual learning and recognition applications that depend on training data, such as image retrieval, object detection and recognition. Manually creating labels in images is not only time-consuming but also subject to human labeling errors, and eventually, becomes impossible for a large scale image database. Semi-supervised learning (SSL)algorithms such as Gaussian random field (GRF)can be applied to labeling objects in images since they have the ability to include a large amount of unlabeled data while requiring only a small amount of labeled data. However, the one-shot property of GRF prevents it from achieving good labeling performance. In this paper, we presents a novel object labeling tool, SmartLabel, to semi-automatically label objects in images. The algorithm of SmartLabel has four innovations over GRF:1)soft labeling,2)graph construction with spatial constraints, 3)iterated harmonic energy minimization, and 4)using relevance feedback to incorporate human interaction in the loop. As demonstrated in datasets of six object categories, the proposed SmartLabel not only works effectively even with a very small amount of user input (e.g., 1 .5%of image size)but also achieves significant improvement over GRF.
机译:在图像中标记对象是许多依赖于训练数据的视觉学习和识别应用(例如图像检索,对象检测和识别)的基本前提。在图像中手动创建标签不仅耗时,而且容易受到人为标签错误的影响,最终对于大型图像数据库而言是不可能的。半监督学习(SSL)算法(例如高斯随机场(GRF))可以应用于图像中的标记对象,因为它们能够包含大量未标记数据,而仅需要少量标记数据。但是,GRF的一次性特性会阻止其获得良好的标签性能。在本文中,我们提出了一种新颖的对象标记工具SmartLabel,可以对图像中的对象进行半自动标记。 SmartLabel的算法在GRF上有四项创新:1)软标记; 2)具有空间约束的图形构造; 3)迭代谐波能量最小化; 4)使用相关性反馈将人机交互纳入循环中。如六个对象类别的数据集所示,所提出的SmartLabel不仅即使在用户输入量很小(例如图像大小的1.5%)的情况下也能有效工作,而且在GRF方面也取得了显着改善。

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