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Learning distance metric for regression by semidefinite programming with application to human age estimation

机译:半定规划的回归学习距离度量及其在人类年龄估计中的应用

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A good distance metric for the input data is crucial in many pattern recognition and machine learning applications. Past studies have demonstrated that learning a metric from labeled samples can significantly improve the performance of classification and clustering algorithms. In this paper, we investigate the problem of learning a distance metric that measures the semantic similarity of input data for regression problems. The particular application we consider is human age estimation. Our guiding principle for learning the distance metric is to preserve the local neighborhoods based on a specially designed distance as well as to maximize the distances between data that are not in the same neighborhood in the semantic space.Without any assumption about the structure and the distribution of the input data, we show that this can be done by using semidefinite programming. Furthermore, the low-level feature space can be mapped to the high-level semantic space by a linear transformation with very low computational cost. Experimental results on the publicly available FG-NET database show that 1) the learned metric correctly discovers the semantic structure of the data even when the amount of training data is small and 2) significant improvement over the traditional Euclidean metric for regression can be obtained using the learned metric. Most importantly, simple regression methods such as k nearest neighbors (kNN), combined with our learned metric, become quite competitive (and sometimes even superior) in terms of accuracy when compared with the state-of-the-art human age estimation approaches.
机译:在许多模式识别和机器学习应用中,输入数据的良好距离度量至关重要。过去的研究表明,从标记的样本中学习指标可以显着提高分类和聚类算法的性能。在本文中,我们调查学习距离度量的问题,该距离度量用于度量回归问题的输入数据的语义相似性。我们考虑的特定应用是人类年龄估算。我们学习距离度量的指导原则是基于特殊设计的距离保留本地邻域,并在语义空间中最大化不在同一邻域中的数据之间的距离。对于输入数据,我们表明可以通过使用半定编程来完成。此外,可以通过线性转换将底层特征空间映射到高层语义空间,而计算成本却非常低。在公开的FG-NET数据库上的实验结果表明:1)即使在训练数据量很小的情况下,学习的度量也能正确发现数据的语义结构; 2)使用传统的欧几里得度量可以显着改善回归学习的指标。最重要的是,与最先进的人类年龄估算方法相比,诸如k最近邻(kNN)之类的简单回归方法与我们所学的度量标准相结合,在准确性方面具有相当的竞争力(有时甚至更高)。

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