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CBSA: content-based soft annotation for multimodal image retrieval using Bayes point machines

机译:CBSA:使用贝叶斯点机进行多模式图像检索的基于内容的软注释

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We propose a content-based soft annotation (CBSA) procedure for providing images with semantical labels. The annotation procedure starts with labeling a small set of training images, each with one single semantical label (e.g., forest, animal, or sky). An ensemble of binary classifiers is then trained for predicting label membership for images. The trained ensemble is applied to each individual image to give the image multiple soft labels, and each label is associated with a label membership factor. To select a base binary-classifier for CBSA, we experiment with two learning methods, support vector machines (SVMs) and Bayes point machines (BPMs), and compare their class-prediction accuracy. Our empirical study on a 116-category 25K-image set shows that the BPM-based ensemble provides better annotation quality than the SVM-based ensemble for supporting multimodal image retrievals.
机译:我们提出了一种基于内容的软注释(CBSA)过程,用于为图像提供语义标签。注释过程从标记少量训练图像开始,每个训练图像都带有一个单一的语义标签(例如,森林,动物或天空)。然后训练一组二进制分类器以预测图像的标签成员。将训练有素的集合应用于每个单独的图像以为该图像提供多个软标签,并且每个标签都与标签隶属度相关联。为了选择CBSA的基本二进制分类器,我们尝试了两种学习方法,即支持向量机(SVM)和贝叶斯点机(BPM),并比较了它们的类预测准确性。我们对116类25K图像集的实证研究表明,与基于SVM的集成相比,基于BPM的集成在支持多模式图像检索方面提供了更好的注释质量。

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