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Graph regularized low-rank feature mapping for multi-label learning with application to image annotation

机译:图表正常化的低秩特征映射,用于多标签学习,应用于图像注释

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摘要

Automatic image annotation has emerged as a hot research topic in the last two decades due to its application in social images organization. Most studies treat image annotation as a typical multi-label classification problem, where the shortcoming of this approach lies in that in order to a learn reliable model for label prediction, it requires sufficient number of training images with accurate annotations. Being aware of this, we develop a novel graph regularized low-rank feature mapping for image annotation under semi-supervised multi-label learning framework. Specifically, the proposed method concatenate the prediction models for different tags into a matrix, and introduces the matrix trace norm to capture the correlations among different labels and control the model complexity. In addition, by using graph Laplacian regularization as a smooth operator, the proposed approach can explicitly take into account the local geometric structure on both labeled and unlabeled images. Moreover, considering the tags of labeled images tend to be missing or noisy, we introduce a supplementary ideal label matrix to automatically fill in the missing tags as well as correct noisy tags for given training images. Extensive experiments conducted on five different multi-label image datasets demonstrate the effectiveness of the proposed approach.
机译:由于其在社交形象组织中的应用,自动图像注释在过去二十年中被出现为热门研究课题。大多数研究将图像注释视为典型的多标签分类问题,其中这种方法的缺点在于,为了学习用于标签预测的可靠模型,它需要足够数量的训练图像,准确的注释。要意识到这一点,我们在半监控多标签学习框架下开发了一个新的图形低级功能映射,用于图像注释下的图像注释。具体地,所提出的方法将不同标签的预测模型连接到矩阵中,并介绍矩阵跟踪规范以捕获不同标签之间的相关性并控制模型复杂性。此外,通过使用图拉普拉斯正则化作为光滑的操作员,可以明确地考虑所标记和未标记图像的本地几何结构。此外,考虑标记图像的标签往往丢失或嘈杂,我们介绍了一个补充理想的标签矩阵,以自动填充缺失的标签以及给定培训图像的正确噪声标签。在五个不同的多标签图像数据集上进行的广泛实验证明了所提出的方法的有效性。

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