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Enhancing Face Identification Using Local Binary Patterns and K-Nearest Neighbors

机译:使用局部二进制模式和K近邻来增强人脸识别

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The human face plays an important role in our social interaction, conveying people?¢????s identity. Using the human face as a key to security, biometric passwords technology has received significant attention in the past several years due to its potential for a wide variety of applications. Faces can have many variations in appearance (aging, facial expression, illumination, inaccurate alignment and pose) which continue to cause poor ability to recognize identity. The purpose of our research work is to provide an approach that contributes to resolve face identification issues with large variations of parameters such as pose, illumination, and expression. For provable outcomes, we combined two algorithms: (a) robustness local binary pattern (LBP), used for facial feature extractions; (b) k-nearest neighbor (K-NN) for image classifications. Our experiment has been conducted on the CMU PIE (Carnegie Mellon University Pose, Illumination, and Expression) face database and the LFW (Labeled Faces in the Wild) dataset. The proposed identification system shows higher performance, and also provides successful face similarity measures focus on feature extractions.
机译:人脸在我们的社会互动中扮演着重要角色,传达着人们的身份。使用人脸作为安全性的关键,生物识别密码技术由于其在各种应用中的潜力,在过去几年中受到了广泛关注。面孔的外观可能有许多变化(年龄,面部表情,照明,不正确的对齐方式和姿势),这些变化继续导致识别身份的能力下降。我们研究工作的目的是提供一种方法,以解决姿势识别,照明和表情等参数变化较大的面部识别问题。对于可证明的结果,我们结合了两种算法:(a)鲁棒性局部二进制模式(LBP),用于面部特征提取; (b)k近邻(K-NN)用于图像分类。我们的实验是在CMU PIE(卡内基·梅隆大学的姿势,照明和表情)面部数据库和LFW(野生标签面部)数据集上进行的。所提出的识别系统显示出更高的性能,并且还提供了针对特征提取的成功人脸相似性度量。

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