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Multi-label Classification for Image Annotation via Sparse Similarity Voting

机译:通过稀疏相似性投票进行图像注释的多标签分类

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摘要

We present a supervised multi-label classification method for automatic image annotation. Our method estimates the annotation labels for a test image by accumulating similarities between the test image and labeled training images. The similarities are measured on the basis of sparse representation of the test image by the training images, which avoids similarity votes for irrelevant classes. Besides, our sparse representation-based multi-label classification can estimate a suitable combination of labels even if the combination is unlearned. Experimental results using the PASCAL dataset suggest effectiveness for image annotation compared to the existing SVM-based multi-labeling methods. Nonlinear mapping of the image representation using the kernel trick is also shown to enhance the annotation performance.
机译:我们提出了一种用于自动图像注释的有监督的多标签分类方法。我们的方法通过累积测试图像和标记的训练图像之间的相似性来估计测试图像的注释标签。相似度是基于训练图像对测试图像的稀疏表示来度量的,从而避免了无关类别的相似度投票。此外,即使没有学习组合,我们基于稀疏表示的多标签分类也可以估计合适的标签组合。与现有的基于SVM的多标签方法相比,使用PASCAL数据集的实验结果表明了对图像标注的有效性。还显示了使用内核技巧的图像表示的非线性映射,以增强注释性能。

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