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Self-Augmented Heterogeneous Face Recognition

机译:自增强的异构面部识别

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Heterogeneous face recognition (HFR) is quite challenging due to the large discrepancy introduced by cross-domain face images. The limited number of paired face images results in a severe overfitting problem in existing methods. To tackle this issue, we proposes a novel self-augmentation method named Mixed Adversarial Examples and Logits Replay (MAELR). Concretely, we first generate adversarial examples, and mix them with clean examples in an interpolating way for data augmentation. Simultaneously, we extend the definition of the adversarial examples according to cross-domain problems. Benefiting from this extension, we can reduce domain discrepancy to extract domain-invariant features. We further propose a diversity preserving loss via logits replay, which effectively uses the discriminative features obtained on the large-scale VIS dataset. In this way, we improve the feature diversity that can not be obtained from mixed adversarial examples methods. Extensive experiments demonstrate that our method alleviates the over-fitting problem, thus significantly improving the recognition performance of HFR.
机译:由于跨域面部图像引入的大差异,异构性面部识别(HFR)非常具有挑战性。有限数量的配对面图像导致现有方法中严重的过度拟合问题。为了解决这个问题,我们提出了一种名为Mixed Profersarial示例的新型自增强方法和Logits Replay(Maelr)。具体而言,我们首先生成对抗性示例,并以干净的例子以内插的方式与数据增强混合。同时,根据跨域问题,我们延长了对抗示例的定义。受益于此扩展,我们可以减少域差异以提取域不变的功能。我们进一步提出了通过Logits Replay的多样性保存损失,从而有效地使用大规模VIS数据集获得的辨别功能。以这种方式,我们改善了不能从混合的逆势示例方法获得的特征分集。广泛的实验表明,我们的方法减轻了过度拟合的问题,从而显着提高了HFR的识别性能。

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