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On Classifying Facial Races with Partial Occlusions and Pose Variations

机译:关于具有部分遮挡和姿势变化的面部种族的分类

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Many biometrics and security systems use facial information to obtain an individual identification and recognition. Classifying a race from a face image can provide a strong hint to search for facial identity and criminal identification. Current facial race classification methods are confined only to constrained non-partially occluded frontal faces. Challenges remain under unconstrained environments such as partial occlusions and pose variations. In this paper, we propose a Convolutional Neural Network (CNN) model to classify facial races with partial occlusions and pose variations. The proposed model is trained using a broad and balanced racial distributed face image dataset. The model is trained on four major human races, Caucasian, Indian, Mongolian, and Negroid. Our model is evaluated against the state-of-the-art methods on a constrained face test dataset. Also, an evaluation of the proposed model and human performance is conducted and compared on our new unconstrained facial race benchmark (CIMN) dataset. Our results show that our model achieves 95.1% of race classification accuracy on constrained frontal faces. Also, the proposed model achieves a comparable classification accuracy result compared to human performance with a margin of 6.2% under the current challenges in the unconstrained environment.
机译:许多生物识别和安全系统使用面部信息来获得个人身份和识别。从面部图像对种族进行分类可以为搜索面部身份和犯罪身份提供强有力的提示。当前的面部种族分类方法仅限于受约束的非部分遮挡的额脸。挑战仍然存在于不受约束的环境中,例如部分遮挡和姿势变化。在本文中,我们提出了卷积神经网络(CNN)模型,以对具有部分遮挡和姿势变化的面部种族进行分类。使用广泛且平衡的种族分布的人脸图像数据集对提出的模型进行训练。该模型在四个主要种族上进行了训练,分别是高加索人,印度人,蒙古人和黑人。我们的模型是根据受约束的面部测试数据集上的最新方法进行评估的。此外,对提出的模型和人类绩效进行了评估,并在我们新的无约束面部种族基准(CIMN)数据集上进行了比较。我们的结果表明,该模型在受约束的正面上达到了95.1 \%的种族分类准确率。同样,在无约束环境下的当前挑战下,与人类绩效相比,所提出的模型获得了可比的分类精度结果,裕度为6.2%。

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