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首页> 外文期刊>International Journal of Biometrics >Supervised and unsupervised machine learning for gender identification through hand's anthropometric data
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Supervised and unsupervised machine learning for gender identification through hand's anthropometric data

机译:通过手工人体测量数据监督和无监督机器学习性别识别

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摘要

The goal of this study is to determine the best gender identifiers from the hand anthropometric measurements. Five algorithms are used and their performances quantified. The first algorithm is based on computing distances of test subjects to pre-computed masculine/feminine mean characteristics. Then, the k-nearest neighbours, the K-means algorithms, the linear and the quadratic discriminant techniques are applied to segregate males and females. To select the relevant attributes, the recursive feature elimination and the stepwise regression methods are used. All these methods are leading to high accuracy rates of genders recognition. However, the linear and quadratic discriminant methods are the most accurate. Breadth and circumference features are better than the length features in identifying the gender. The palm and the thumb are the parts of the hand with the highest rate of gender recognition. Breadths of the index and the thumb and the palm circumference are the best individual identifiers.
机译:本研究的目标是从手中测量测量中确定最佳性别标识符。使用五种算法及其性能量化。第一算法基于计算受试者的距离,以预先计算的阳性/女性平均特征。然后,k-meast邻居,K-means算法,线性和二次判别技术应用于隔离雄性和女性。要选择相关属性,使用递归功能消除和逐步回归方法。所有这些方法都导致性别的高精度识别。然而,线性和二次判别方法最准确。宽度和周长特征优于识别性别的长度特征。手掌和拇指是手的部位,具有最高的性别识别率。索引和拇指和棕榈周长的宽度是最好的单个标识符。

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