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On the Impact of Labeled Sample Selection in Semisupervised Learning for Complex Visual Recognition Tasks

机译:关于复杂的视觉识别任务的半化样本选择对标记样本选择的影响

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摘要

One of the most important aspects in semisupervised learning is training set creation among a limited amount of labeled data in such a way as to maximize the representational capability and efficacy of the learning framework. In this paper, we scrutinize the effectiveness of different labeled sample selection approaches for training set creation, to be used in semisupervised learning approaches for complex visual pattern recognition problems. We propose and explore a variety of combinatory sampling approaches that are based on sparse representative instances selection (SMRS), OPTICS algorithm, k-means clustering algorithm, and random selection. These approaches are explored in the context of four semisupervised learning techniques, i.e., graph-based approaches (harmonic functions and anchor graph), low-density separation, and smoothness-based multiple regressors, and evaluated in two real-world challenging computer vision applications: image-based concrete defect recognition on tunnel surfaces and video-based activity recognition for industrial workflow monitoring.
机译:半质量学习中最重要的一项方面是培训在有限数量的标记数据中创建创建,以便最大化学习框架的代表能力和功效。在本文中,我们仔细审查了不同标签样本选择方法的训练集创建的有效性,以用于复杂的视觉模式识别问题的半质量学习方法。我们提出并探索基于稀疏代表实例选择(SMR),光学算法,K-Means聚类算法和随机选择的各种组合采样方法。这些方法在四种半熟的学习技术的背景下探讨,即基于图形的方法(谐波函数和锚图),低密度分离和基于光滑的多元回归,并在两个现实世界挑战计算机视觉应用中进行评估:基于图像的隧道曲面和基于视频活动识别的实图像的具体缺陷识别,用于工业工作流程监控。

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