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Level Playing Field for Million Scale Face Recognition

机译:百万规模人脸识别的公平竞争环境

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Face recognition has the perception of a solved problem, however when tested at the million-scale exhibits dramatic variation in accuracies across the different algorithms [11]. Are the algorithms very different? Is access to good/big training data their secret weapon? Where should face recognition improve? To address those questions, we created a benchmark, MF2, that requires all algorithms to be trained on same data, and tested at the million scale. MF2 is a public large-scale set with 672K identities and 4.7M photos created with the goal to level playing field for large scale face recognition. We contrast our results with findings from the other two large-scale benchmarks MegaFace Challenge and MS-Celebs-1M where groups were allowed to train on any private/public/big/small set. Some key discoveries: 1) algorithms, trained on MF2, were able to achieve state of the art and comparable results to algorithms trained on massive private sets, 2) some outperformed themselves once trained on MF2, 3) invariance to aging suffers from low accuracies as in MegaFace, identifying the need for larger age variations possibly within identities or adjustment of algorithms in future testing.
机译:人脸识别可以解决问题,但是在百万级别的测试中,不同算法的准确度差异很大[11]。算法有很大不同吗?获取良好/大量培训数据的秘密武器吗?人脸识别应该在哪里改善?为了解决这些问题,我们创建了一个基准MF2,该基准要求所有算法都必须在相同的数据上进行训练,并且必须进行百万级的测试。 MF2是一个公开的大型场景,具有672K身份和470万张照片,旨在平整运动场以进行大规模面部识别。我们将结果与其他两个大型基准测试MegaFace Challenge和MS-Celebs-1M的结果进行对比,在该基准中,团体可以在任何私人/公共/大型/小型组合上进行训练。一些关键发现:1)在MF2上训练的算法能够达到最新水平,并且与在大型私有集上训练的算法具有可比的结果; 2)在MF2上训练后,某些算法的性能优于自身; 3)老化的不变性具有较低的准确性如在MegaFace中一样,在将来的测试中确定身份或调整算法时可能需要识别更大的年龄变化。

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