Face Gender Classification using Combination of LPQ-Self PCA

Tio Dharmawan, Danu Adi Nugroho, Muhammad Arief Hidayat
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Abstract

The age factor had a significant impact on human faces, potentially influencing the performance of existing gender classification systems. This research proposed a new method that combined local descriptors such as Local Binary Patterns (LBP) and Local Phase Quantization (LPQ) with Self-Principal Component Analysis (Self-PCA) as a feature extraction technique. The use of Self-PCA was chosen for its ability to address the age factor in human facial images, while also leveraging local descriptors to capture features from these images. The primary focus was to compare the performance of Self-PCA with LPQ+Self-PCA, along with the additional comparison of LBP+Self-PCA, in the task of gender classification using facial images. Euclidean distance served as the classifier, and the evaluation was conducted using the FG-Net and ORL datasets. The combination of LPQ+Self-PCA showed an improvement in accuracy by 57.85% compared to the combination of LBP+Self-PCA, which provided an accuracy of 56.47%. Meanwhile, using Self-PCA alone gave an accuracy of 55.37% on the FG-Net. In contrast, on the ORL dataset, both combinations gave the same accuracy result as Self-PCA, which was 90.14%, for images without blurring.
使用 LPQ-Self PCA 组合进行人脸性别分类
年龄因素对人脸有重大影响,可能会影响现有性别分类系统的性能。这项研究提出了一种新方法,将局部二进制模式(LBP)和局部相位量化(LPQ)等局部描述符与自主成分分析(Self-PCA)相结合,作为特征提取技术。选择使用 Self-PCA 是因为它能够解决人类面部图像中的年龄因素,同时还能利用局部描述符来捕捉这些图像中的特征。主要重点是比较 Self-PCA 与 LPQ+Self-PCA 的性能,以及 LBP+Self-PCA 在使用面部图像进行性别分类时的性能。欧氏距离作为分类器,使用 FG-Net 和 ORL 数据集进行评估。与 LBP+Self-PCA 相比,LPQ+Self-PCA 组合的准确率提高了 57.85%,LBP+Self-PCA 组合的准确率为 56.47%。同时,在 FG-Net 数据集上,单独使用 Self-PCA 的准确率为 55.37%。相比之下,在 ORL 数据集上,对于没有模糊的图像,两种组合的准确率与 Self-PCA 相同,均为 90.14%。
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