Machine learning models and methods for human gait recognition

Mykhaylo V. Lobachev, Sergiy V. Purish
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Abstract

The paper explores the challenge of human identification through gait recognition within biometric identification systems. Itoutlines the essential criteria for human biometric features, discusses primary biometric characteristics, and their application in biometric identification systems. The paper also examines the feasibility of utilizing gait as a biometric identifier, emphasizing its advantages, such as not requiring the upfront provision of personal biometric information and specialized equipment.The authors conduct an analysis of existing scientific literature in the field of gait recognition, categorizing gait recognition methodsinto template-based and non-template-based approaches. Throughout their research, they identify the key issues and challenges that researchers face in this domain, along with the prevailing trends in human gait recognition within biometric identification systems.Additionally, the paper introduces a method for person identification based on gait, utilizing the Histogram of Oriented Gradients and the Sum Variance Haralick texture features. It involves transforming input video into a series of images depicting the gait silhouette, creating a Gait Energy Image (GEI) by combining these gait silhouettes throughout a gait cycle, and translating the GEI into the Gait Gradient Magnitude Image (GGMI). The subsequent step involves extracting recommended gait characteristics from the GGMIs of participants included in a dataset.To preprocess the collected characteristics, Principal Component Analysis (PCA) is applied, reducing the dimensions that may negatively impact classification robustness, thereby enhancing overall performance. In the final step, a K-Nearest Neighbors (KNN) classifier is employed to categorize the characteristics obtained from a specific dataset.The proposed novel feature vector in the paper demonstrates increased reliability and effectively captures spatial variations in gait patterns. Notably, it reduces the dimensionality of the feature vector from 3780×1 to 63×1, resulting in decreased computational complexity in the gait recognition system. Experimental evaluations on the CASIA A and CASIA B datasets reveal that the proposed approach outperforms other HOG-based methods in most scenarios, with the exception of situations involving frontal images.
人类步态识别的机器学习模型和方法
本文探讨了生物识别系统中通过步态识别进行人体识别的挑战。它概述了人体生物特征的基本标准,讨论了主要的生物特征,以及它们在生物特征识别系统中的应用。本文还探讨了利用步态作为生物识别的可行性,强调了其优点,例如不需要预先提供个人生物识别信息和专门的设备。作者对步态识别领域的现有科学文献进行了分析,将步态识别方法分为基于模板的方法和非基于模板的方法。在整个研究过程中,他们确定了研究人员在这一领域面临的关键问题和挑战,以及生物识别系统中人类步态识别的流行趋势。此外,本文还介绍了一种基于方向梯度直方图和方差总和的Haralick纹理特征的步态识别方法。它包括将输入视频转换为一系列描绘步态轮廓的图像,通过在整个步态周期中组合这些步态轮廓来创建步态能量图像(GEI),并将GEI转换为步态梯度大小图像(GGMI)。接下来的步骤包括从数据集中的参与者的ggmi中提取推荐的步态特征。对收集到的特征进行预处理,应用主成分分析(PCA),减少可能对分类鲁棒性产生负面影响的维度,从而提高整体性能。在最后一步,使用k近邻(KNN)分类器对从特定数据集获得的特征进行分类。本文提出的新特征向量提高了可靠性,并有效地捕获了步态模式的空间变化。值得注意的是,它将特征向量的维数从3780×1降到了63×1,从而降低了步态识别系统的计算复杂度。在CASIA A和CASIA B数据集上的实验评估表明,除了涉及正面图像的情况外,该方法在大多数情况下都优于其他基于hog的方法。
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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