Comparison of Support Vector Machine and K-Nearest Neighbor for Baby Foot Identification based on Image Geometric Characteristics

Angga Pratama Nugraha, I. N. Piarsa, I. M. Suwija Putra
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引用次数: 4

Abstract

Biometric recognition of infant identification systems is critical in security access for identification and verification systems. However, until now, hospitals or health centres in Indonesia still use conventional biometric identification, such as stamping or inking on the soles of babies' feet affixed to paper and are very vulnerable to the risk of damage or loss of data. To resolve this problem, computer vision technology can accurately identify the baby's feet' soles with the final result in the form of digital data. This study compares the classification method of baby feet using the SVM (Support Vector Machine) algorithm with the K-Nearest Neighbor algorithm. The baby's feet understudy image was taken using a cellphone camera with sample data of 3 months old babies. Comparing the SVM and KNN classification methods obtained high accuracy, precision and recall values, namely 98.80% accuracy, 89.51% precision and 88.00% recall. (for the SVM Gaussian kernel classification), with an accuracy of 99.08%, 92.65% precision and 90.75% recall (for the KNN Ecluidean Distance classification), it can be concluded that the KNN classification method using Euclidean distance is the best for applied in the baby palm identification system using the geometric image feature.
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基于图像几何特征的支持向量机与k近邻婴儿足识别比较
婴儿身份识别系统的生物特征识别对身份识别和验证系统的安全访问至关重要。然而,到目前为止,印度尼西亚的医院或保健中心仍然使用传统的生物特征识别,例如在婴儿的脚底贴上纸上盖章或墨水,并且非常容易受到损坏或丢失数据的风险。为了解决这个问题,计算机视觉技术可以准确地识别婴儿的脚底,并以数字数据的形式最终得到结果。本研究比较了支持向量机(SVM)算法和k近邻算法对婴儿足部的分类方法。婴儿的脚替补图像是用手机相机拍摄的,样本数据为3个月大的婴儿。比较SVM和KNN分类方法获得了较高的正确率、精密度和召回率,分别为98.80%、89.51%和88.00%。(对于SVM高斯核分类),准确率为99.08%,精度为92.65%,召回率为90.75%(对于KNN欧氏距离分类),可以得出基于欧氏距离的KNN分类方法最适合应用于利用几何图像特征的婴儿手掌识别系统。
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