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Handling Noisy Labels in Gaze-Based CBIR System

机译:在基于凝视的CBIR系统中处理嘈杂标签

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Handling noisy labels in classification is a core topic given the number of images available online with unprecise labels or even inaccurate ones. In our context, the label uncertainty is obtained by a fully gaze-based labelling process, called GBIE. We apply a noisy-label tolerant algorithm, P-SVM, which combines classification and regression processes. We have determined, among different strategies, a criterion of reliability to discriminate the most reliable labels involved in the classification from the most uncertain ones involved in the regression. The classification accuracy of the P-SVM is evaluated in different learning contexts, and can even compete in some cases with the baseline, i.e. a standard classification SVM trained with the true-class labels.
机译:在分类中处理嘈杂的标签是核心主题,因为展开标签或甚至不准确的图像可用的图像数量。在我们的背景下,标签不确定性是通过基于完全凝视的标记过程获得的,称为GBIE。我们应用了嘈杂的标签容忍算法,P-SVM,它们组合了分类和回归过程。在不同的策略中,我们确定了可靠性的标准,以区分从最不确定的涉及回归中的分类中涉及的最可靠的标签。 P-SVM的分类准确性在不同的学习环境中评估,甚至可以在某些情况下与基线进行竞争,即用真正的类标签培训的标准分类SVM。

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