PEDESTRIAN GENDER RECOGNITION WITH HANDCRAFTED FEATURE ENSEMBLES

M. Ahad, Muhammad Fayyaz
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引用次数: 1

Abstract

Human gender recognition is one the most challenging task in computer vision, especially in pedestrians, due to so much variation in human poses, video acquisition, illumination, occlusion, and human clothes, etc. In this article, we have considered gender recognition which is very important to be considered in video surveillance. To make the system automated to recognize the gender, we have provided a novel technique based on the extraction of features through different methodologies. Our technique consists of 4 steps a) preprocessing, b) feature extraction, c) feature fusion, d) classification. The exciting area is separated in the first step, which is the full body from the images. After that, images are divided into two halves on the ratio of 2:3 to acquire sets of upper body and lower body. In the second step, three handcrafted feature extractors, HOG, Gabor, and granulometry, extract the feature vectors using different score values. These feature vectors are fused to create one strong feature vector on which results are evaluated. Experiments are performed on full-body datasets to make the best configuration of features. The features are extracted through different feature extractors in different numbers to generate their feature vectors. Those features are fused to create a strong feature vector. This feature vector is then utilized for classification. For classification, SVM and KNN classifiers are used. Results are evaluated on five performance measures: Accuracy, Precision, Sensitivity, Specificity, and Area under the curve. The best results that have been acquired are on the upper body, which is 88.7% accuracy and 0.96 AUC. The results are compared with the existing methodologies, and hence it is concluded that the proposed method has significantly achieved higher results.
用手工制作的特色套装识别行人性别
人类性别识别是计算机视觉中最具挑战性的任务之一,特别是在行人中,由于人体姿势、视频采集、照明、遮挡和人体服装等方面存在很大差异。在本文中,我们考虑了性别识别,这是视频监控中非常重要的考虑因素。为了实现性别识别的自动化,我们提出了一种基于不同方法提取特征的新技术。我们的技术包括4个步骤:a)预处理,b)特征提取,c)特征融合,d)分类。在第一步中,将令人兴奋的区域从图像中分离出来,即全身。然后将图像按2:3的比例分成两半,得到上半身和下半身的集合。在第二步中,三个手工制作的特征提取器,HOG, Gabor和颗粒剂,使用不同的评分值提取特征向量。这些特征向量被融合成一个强特征向量,在这个特征向量上对结果进行评估。在全身数据集上进行了实验,以获得最佳的特征配置。通过不同数量的特征提取器提取特征,生成特征向量。这些特征被融合成一个强特征向量。然后利用该特征向量进行分类。在分类方面,使用了SVM和KNN分类器。结果评估五个性能指标:准确性,精密度,灵敏度,特异性和曲线下面积。在上半身获得的结果最好,准确率为88.7%,AUC为0.96。将结果与现有方法进行了比较,结果表明,本文提出的方法取得了显著提高的结果。
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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