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Gender Classification Using Machine Learning with Multi-Feature Method

机译:运用机器学习的多特征方法进行性别分类

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Nowadays gender classification is a very challenging task in a real-time application based on face recognition. The demand for real-time application based on gender classification will increase in the future. Bag of Words (Bow), Scale Invariant Fourier Transform (SIFT) and K-means clustering are used for feature extractors and classification. This state of art methodology gives more efficient result on different standard datasets. This research proposed a new algorithm for automatic live Gender Recognition (GR) using Support Vector Machine (SVM) is used for classification. The implementation of result work tested on FEI, Live Images and SCIEN database for GR. The detection rate has reached up to 98% in FEI dataset, 94% in Live/Own dataset and 91% SCIEN dataset respectively. This proposed state of art methodology is compared with the previous techniques and achieved better results which will help in the development of real-time identification systems.
机译:如今,在基于面部识别的实时应用中,性别分类是一项非常具有挑战性的任务。将来,基于性别分类的实时应用需求将会增加。词袋(弓形),尺度不变傅立叶变换(SIFT)和K-means聚类用于特征提取器和分类。这种先进的方法论可以在不同的标准数据集上提供更有效的结果。该研究提出了一种使用支持​​向量机(SVM)进行自动实时性别识别(GR)的新算法。结果工作的实施在GR的FEI,Live Images和SCIEN数据库上进行了测试。 FEI数据集的检出率分别达到98%,Live / Own数据集的检出率达到94%,SCIEN数据集的检出率达到91%。将该提议的现有技术方法与以前的技术进行比较,并获得了更好的结果,这将有助于实时识别系统的开发。

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