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Joint learning of similarity graph and image classifier from partial labels

机译:从局部标签联合学习相似度图和图像分类器

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Learning of a binary classifier from partial labels is a fundamental and important task in image classification. Leveraging on recent advance in graph signal processing (GSP), a recent work poses classifier learning as a graph-signal restoration problem from partial observations, where the ill-posed problem is regularized using a graph-signal smoothness prior. In this paper, we extend this work by using the same smoothness prior to refine the underlying similarity graph also, so that the same graph-signal projected on the modified graph will be even smoother. Specifically, assuming an edge weight connecting two vertices i and j is computed as the exponential kernel of the weighted sum of feature function differences at the two vertices, we find locally “optimal” feature weights via iterative Newton's method. We show that the conditioning of the Hessian matrix reveals redundancy in the feature functions, which thus can be eliminated for improved computation efficiency. Experimental results show that our joint optimization of the classifier graph-signal and the underlying graph has better classification performance then the previous work and spectral clustering.
机译:从局部标签学习二元分类器是图像分类中的基础和重要任务。利用最近在图形信号处理(GSP)中取得的进步,最近的工作使分类器学习成为来自局部观测的图形信号恢复问题,其中不适定问题是使用图形信号平滑度预先调整的。在本文中,我们通过使用相同的平滑度来扩展这项工作,同时还细化了基础相似图,因此投影在修改后的图形上的相同图形信号将更加平滑。具体来说,假设连接两个顶点i和j的边缘权重被计算为两个顶点处特征函数差的加权和的指数核,我们通过牛顿迭代法找到局部“最优”特征权重。我们表明,Hessian矩阵的条件揭示了特征函数中的冗余,因此可以消除冗余以提高计算效率。实验结果表明,与之前的工作和频谱聚类相比,我们对分类器图信号和基础图的联合优化具有更好的分类性能。

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