Adaptive Label Noise Cleaning with Meta-Supervision for Deep Face Recognition

Yaobin Zhang, Weihong Deng, Yaoyao Zhong, Jiani Hu, Dongchao Wen
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引用次数: 9

Abstract

The training of a deep face recognition system usually faces the interference of label noise in the training data. However, it is difficult to obtain a high-precision cleaning model to remove these noises. In this paper, we propose an adaptive label noise cleaning algorithm based on meta-learning for face recognition datasets, which can learn the distribution of the data to be cleaned and make automatic adjustments based on class differences. It first learns re-liable cleaning knowledge from well-labeled noisy data, then gradually transfers it to the target data with meta-supervision to improve performance. A threshold adapter module is also proposed to address the drift problem in transfer learning methods. Extensive experiments clean two noisy in-the-wild face recognition datasets and show the effectiveness of the proposed method to reach state-of-the-art performance on the IJB-C face recognition benchmark.
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基于元监督的深度人脸识别自适应标签噪声清除
深度人脸识别系统的训练通常面临训练数据中标签噪声的干扰。然而,很难获得高精度的清洗模型来去除这些噪声。本文提出了一种基于元学习的人脸识别数据集自适应标签噪声清理算法,该算法可以学习待清理数据的分布,并根据类别差异进行自动调整。它首先从标记良好的噪声数据中学习可靠的清洗知识,然后通过元监督逐步将其转移到目标数据中以提高性能。为了解决迁移学习方法中的漂移问题,还提出了一个阈值适配器模块。大量的实验清理了两个嘈杂的野外人脸识别数据集,并显示了所提出的方法在IJB-C人脸识别基准上达到最先进性能的有效性。
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