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Privacy-Protected Facial Biometric Verification Using Fuzzy Forest Learning

机译:使用模糊森林学习的隐私保护面部生物特征验证

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摘要

Although visual surveillance has emerged as an effective technolody for public security, privacy has become an issue of great concern in the transmission and distribution of surveillance videos. For example, personal facial images should not be browsed without permission. To cope with this issue, face image scrambling has emerged as a simple solution for privacy-related applications. Consequently, online facial biometric verification needs to be carried out in the scrambled domain, thus bringing a new challenge to face classification. In this paper, we investigate face verification issues in the scrambled domain and propose a novel scheme to handle this challenge. In our proposed method, to make feature extraction from scrambled face images robust, a biased random subspace sampling scheme is applied to construct fuzzy decision trees from randomly selected features, and fuzzy forest decision using fuzzy memberships is then obtained from combining all fuzzy tree decisions. In our experiment, we first estimated the optimal parameters for the construction of the random forest and, then, applied the optimized model to the benchmark tests using three publically available face datasets. The experimental results validated that our proposed scheme can robustly cope with the challenging tests in the scrambled domain and achieved an improved accuracy over all tests, making our method a promising candidate for the emerging privacy-related facial biometric applications.
机译:尽管视觉监视已成为一种用于公共安全的有效技术,但隐私已成为监视视频的传输和分发中非常关注的问题。例如,未经允许不得浏览个人面部图像。为了解决这个问题,面部图像加扰已经成为与隐私相关的应用程序的简单解决方案。因此,在线面部生物特征验证需要在加扰领域中进行,从而给面部分类带来了新的挑战。在本文中,我们研究了加扰域中的人脸验证问题,并提出了一种新颖的方案来应对这一挑战。在我们提出的方法中,为了使从加扰的面部图像中提取特征的鲁棒性,一种有偏的随机子空间采样方案被用于从随机选择的特征中构造模糊决策树,然后通过结合所有模糊树决策获得使用模糊隶属度的模糊森林决策。在我们的实验中,我们首先估算了构建随机森林的最佳参数,然后使用三个公开的人脸数据集将优化后的模型应用于基准测试。实验结果证明,我们提出的方案可以在杂乱无章的领域中可靠地应对挑战性测试,并在所有测试中均具有更高的准确性,从而使我们的方法成为新兴的与隐私相关的面部生物识别应用的有希望的候选者。

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