Department of Computer Science, COMSATS University Islamabad, Wah Campus, Wah Cantt, Pakistan.
Department of Computer Science, University of Wah, Wah Cantt, Pakistan.
PLoS One. 2024 Oct 23;19(10):e0310887. doi: 10.1371/journal.pone.0310887. eCollection 2024.
Human gait recognition (HGR) is the mechanism of biometrics that authors extensively employ to recognize an individuals based on their walking traits. HGR has been prominent for the past few years due to its surveillance capability. In HGR, an individual's walking attributes are utilized for identification. HGR is considered a very effective technique for recognition but faces different problematic factors that degrade its performance. The major factors are variations in clothing, carrying, walking, etc. In this paper, a new hybrid method for the classification of HGR is designed called Stacked-Gait. The system is based on six major steps; initially, image resizing is performed to overcome computation problems. In the second step, these images are converted into grey-scale to extract better features. After that, the dataset division is performed into train and test set. In the next step, the training of the autoencoders and feature extraction of the dataset are performed using training data. In the next step, the stacking of two autoencoders is also performed. After that, the stacked encoders are employed to extract features from the test data. Finally, the feature vectors are given as input to various machine learning classifiers for final classification. The method assessment is performed using the CASIA-B dataset and achieved the accuracy of 99.90, 98.10, 97.20, 97.20, 96.70, and 100 percent on 000, 180, 360, 540, 720, and 900 angles. It is pragmatic that the system gives promising results compared to recent schemes.
人体步态识别(HGR)是生物识别领域广泛采用的一种机制,它可以根据个体的行走特征来识别个体。由于其监控能力,HGR 在过去几年中一直很突出。在 HGR 中,个体的行走属性用于识别。HGR 被认为是一种非常有效的识别技术,但它面临着不同的降低性能的问题因素。主要因素是穿着、携带、行走等方面的变化。在本文中,设计了一种新的用于 HGR 分类的混合方法,称为 Stacked-Gait。该系统基于六个主要步骤;首先,进行图像缩放以克服计算问题。第二步,将这些图像转换为灰度以提取更好的特征。之后,将数据集划分为训练集和测试集。在下一步,使用训练数据对自动编码器进行训练并对数据集进行特征提取。在下一步,对两个自动编码器进行堆叠。之后,使用堆叠编码器从测试数据中提取特征。最后,将特征向量作为输入提供给各种机器学习分类器进行最终分类。该方法使用 CASIA-B 数据集进行评估,在 000、180、360、540、720 和 900 角度下的准确率分别达到 99.90%、98.10%、97.20%、97.20%、96.70%和 100%。与最近的方案相比,该系统给出了有希望的结果,这是务实的。