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Image classifier learning from noisy labels via generalized graph smoothness priors

机译:图像分类器通过广义图的光滑度前沿从嘈杂标签学习

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When collecting samples via crowd-sourcing for semi-supervised learning, often labels that designate events of interest are assigned unreliably, resulting in label noise. In this paper, we propose a robust method for graph-based image classifier learning given noisy labels, leveraging on recent advances in graph signal processing. In particular, we formulate a graph-signal restoration problem, where the objective includes a fidelity term to minimize the lo-norm between the observed labels and a reconstructed graph-signal, and generalized graph smoothness priors, where we assume that the reconstructed signal and its gradient are both smooth with respect to a graph. The optimization problem can be efficiently solved via an iterative reweighted least square (IRLS) algorithm. Simulation results show that for two image datasets with varying amounts of label noise, our proposed algorithm outperforms both regular SVM and a noisy-label learning approach in the literature noticeably.
机译:通过人群采购收集样本进行半监督学习,通常指定感兴趣事件的标签是不可逗剧的,导致标签噪声。在本文中,我们提出了一种基于图形的图像分类器学习的鲁棒方法,给出了噪声标签,利用了绘图信号处理的最新进步。特别地,我们制定了一个图形信号恢复问题,其中目标包括保真术语,以最小化观察到的标签和重建的图形信号之间的LO-NOM,以及我们假设重建信号和的广义图形光滑度前沿。它的梯度相对于图形均匀。可以通过迭代重新重量最小二乘(IRLS)算法有效地解决优化问题。仿真结果表明,对于具有不同量的标签噪声的两个图像数据集,我们所提出的算法明显优于常规SVM和嘈杂的标签学习方法。

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