论文标题
ECML:合奏级联指标学习机制
ECML: An Ensemble Cascade Metric Learning Mechanism towards Face Verification
论文作者
论文摘要
面部验证可以视为2级细粒视觉识别问题。增强功能的判别能力是提高其性能的关键问题之一。公制学习技术通常用于满足这一需求,同时实现不足和过度拟合之间的良好权衡在公制学习中起着至关重要的作用。因此,我们提出了一种新型的集合级联指标学习(ECML)机制。特别是,层次度量学习以级联的方式执行,以减轻拟合不足。同时,在每个学习级别上,这些功能分为非重叠组。然后,以整体方式在特征组之间执行度量学习以抵抗过度拟合。考虑到面部的特征分布特征,还提出了一种具有闭合溶液的强大的摩alanobis度量学习方法(RMML)。它可以避免在某些知名的度量学习方法(例如KISSME)面临的反矩阵上的计算失败问题。将RMML嵌入提出的ECML机制中,我们的度量学习范式(EC-RMML)可以以一种通用的学习方式运行。实验结果表明,EC-RMML优于用于面部验证的最先进的度量学习方法。而且,提议的合奏级联指标学习机制也适用于其他度量学习方法。
Face verification can be regarded as a 2-class fine-grained visual recognition problem. Enhancing the feature's discriminative power is one of the key problems to improve its performance. Metric learning technology is often applied to address this need, while achieving a good tradeoff between underfitting and overfitting plays the vital role in metric learning. Hence, we propose a novel ensemble cascade metric learning (ECML) mechanism. In particular, hierarchical metric learning is executed in the cascade way to alleviate underfitting. Meanwhile, at each learning level, the features are split into non-overlapping groups. Then, metric learning is executed among the feature groups in the ensemble manner to resist overfitting. Considering the feature distribution characteristics of faces, a robust Mahalanobis metric learning method (RMML) with closed-form solution is additionally proposed. It can avoid the computation failure issue on inverse matrix faced by some well-known metric learning approaches (e.g., KISSME). Embedding RMML into the proposed ECML mechanism, our metric learning paradigm (EC-RMML) can run in the one-pass learning manner. Experimental results demonstrate that EC-RMML is superior to state-of-the-art metric learning methods for face verification. And, the proposed ensemble cascade metric learning mechanism is also applicable to other metric learning approaches.