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Joint multi-view representation and image annotation via optimal predictive subspace learning

机译:通过最佳预测子空间学习联合多视图表示和图像注释

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摘要

Image representation and annotation are two key tasks in practical applications such as image search. Existing methods have tried to learn an effective representation or to predict tags directly using multi-view low-level visual features, which usually contain redundant information. However, these two tasks are closely related and interact on each other. A suitable image representation can yield better image annotation results, which in turn can effectively guide the image representation learning. In this paper, we propose to jointly conduct multi-view representation and image annotation via optimal predictive subspace learning, making the two tasks promote each other. Specifically, for subspace learning, visual structure and semantic information of images are exploited to make the learned subspace more discriminative and compact. For tag prediction, support vector machines (SVM) is adopted to obtain better tag prediction results. Then to simultaneously learn image representation, tag predictors and projection function, the three subproblems are combined into a unified optimization objective function and an alternative optimization algorithm is derived to solve it. Experimental results on four image datasets illustrate that our method is superior to the other image annotation methods.
机译:图像表示和注释是实际应用中的两个关键任务,例如图像搜索。现有方法已经尝试学习有效的表示或使用多视图低级视觉功能直接预测标签,这通常包含冗余信息。但是,这两个任务密切相关并相互作用。合适的图像表示可以产生更好的图像注释结果,这反过来可以有效地引导图像表示学习。在本文中,我们建议通过最佳预测子空间学习共同开展多视图表示和图像注释,使两个任务互相促进。具体地,对于子空间学习,利用图像的视觉结构和语义信息来使学习子空间更加辨别和紧凑。对于标签预测,采用支持向量机(SVM)来获得更好的标签预测结果。然后同时学习图像表示,标签预测器和投影功能,三个子问题组合成统一的优化目标函数,并导出替代优化算法来解决它。四个图像数据集上的实验结果表明,我们的方法优于其他图像注释方法。

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