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Joint Multi-Label Multi-Instance Learning for Image Classification

机译:图像分类的联合多标签多实例学习

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In real world, an image is usually associated with multiple labels which are characterized by different regions in the image. Thus image classification is naturally posed as both a multi-label learning and multi-instance learning problem. Different from existing research which has considered these two problems separately, we propose an integrated multi-label multi-instance learning (MLMIL) approach based on hidden conditional random fields (HCRFs), which simultaneously captures both the connections between semantic labels and regions, and the correlations among the labels in a single formulation. We apply this MLMIL framework to image classification and report superior performance compared to key existing approaches over the MSR Cambridge (MSRC) and Corel data sets.
机译:在现实世界中,图像通常与多个标签相关联,该标签以图像中的不同区域为特征在一起。因此,图像分类自然地作为多标签学习和多实例学习问题构成。与现有的研究不同,该研究分别考虑这两个问题,我们提出了一种基于隐藏的条件随机字段(HCRF)的集成多标签多实例学习(MLMIL)方法,同时捕获语义标签和地区之间的连接,以及单一制剂中标签之间的相关性。与MSR剑桥(MSRC)和COREL数据集上的关键现有方法相比,我们将此MLMIL框架应用于图像分类并报告卓越的性能。

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