Integration of Colbp and Viola Jones Feature Extraction Methods in Gender Classification Based on Facial Image

Tio Dharmawan, Whinar Kukuh Rizky Ardana, Muhamad Arief Hidayat
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Abstract

Nowadays face recognition still being a hot topics to be discussed especially it’s utility for gender classification. Gender classification is an easy task for human but it’s a challenging task for computers because it doesn’t have capability for recognizing human gender without feature extraction. There are still many researches about facial image feature extraction for gender classification. Geometry features and Texture Features are well perform features for gender classification. This paper will presents fusion of those feature in order to find an improvement for gender classifications task. Each features will be extracted using Viola Jones Algorithm and Compass Local Binary Pattern method. Both features will be combined using concatenated method in dataframe format. Viola Jones algorithm has an issues when detecting each facial regions so it causes outliers in each geometry features. The proposed method will be evaluated on color FERET dataset that contains facial images. Classification task will be done using Random Forest and Backpropagation. The result is fusion features present an improvement in gender classification using Backpropagation with 87% accuracy. It prove that proposed method perform better than single feature extraction method.
在基于面部图像的性别分类中整合 Colbp 和 Viola Jones 特征提取方法
如今,人脸识别仍然是一个热门话题,尤其是它在性别分类方面的实用性。对于人类来说,性别分类是一项简单的任务,但对于计算机来说却是一项具有挑战性的任务,因为如果不进行特征提取,计算机就不具备识别人类性别的能力。目前仍有许多关于面部图像特征提取用于性别分类的研究。几何特征和纹理特征是用于性别分类的性能良好的特征。本文将对这些特征进行融合,以改进性别分类任务。每个特征都将使用 Viola Jones 算法和 Compass 局部二进制模式方法进行提取。这两种特征将使用数据帧格式的串联方法进行组合。Viola Jones 算法在检测每个面部区域时会出现问题,因此会导致每个几何特征出现异常值。提议的方法将在包含面部图像的彩色 FERET 数据集上进行评估。分类任务将使用随机森林和反向传播来完成。结果显示,使用反向传播法进行性别分类时,融合特征的准确率提高了 87%。这证明所提出的方法比单一的特征提取方法效果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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