Munusamy Vaishnavi, Senthilkumar Sudha
School of Computer Science and Engineering, Vellore Institute of Technology, Vellore, Tamilnadu, India.
PeerJ Comput Sci. 2024 Jul 10;10:e2158. doi: 10.7717/peerj-cs.2158. eCollection 2024.
Gait recognition, a biometric identification method, has garnered significant attention due to its unique attributes, including non-invasiveness, long-distance capture, and resistance to impersonation. Gait recognition has undergone a revolution driven by the remarkable capacity of deep learning to extract complicated features from data. An overview of the current developments in deep learning-based gait identification methods is provided in this work. We explore and analyze the development of gait recognition and highlight its uses in forensics, security, and criminal investigations. The article delves into the challenges associated with gait recognition, such as variations in walking conditions, viewing angles, and clothing as well. We discuss about the effectiveness of deep neural networks in addressing these challenges by providing a comprehensive analysis of state-of-the-art architectures, including convolutional neural networks (CNNs), recurrent neural networks (RNNs), and attention mechanisms. Diverse neural network-based gait recognition models, such as Gate Controlled and Shared Attention ICDNet (GA-ICDNet), Multi-Scale Temporal Feature Extractor (MSTFE), GaitNet, and various CNN-based approaches, demonstrate impressive accuracy across different walking conditions, showcasing the effectiveness of these models in capturing unique gait patterns. GaitNet achieved an exceptional identification accuracy of 99.7%, whereas GA-ICDNet showed high precision with an equal error rate of 0.67% in verification tasks. GaitGraph (ResGCN+2D CNN) achieved rank-1 accuracies ranging from 66.3% to 87.7%, whereas a Fully Connected Network with Koopman Operator achieved an average rank-1 accuracy of 74.7% for OU-MVLP across various conditions. However, GCPFP (GCN with Graph Convolution-Based Part Feature Polling) utilizing graph convolutional network (GCN) and GaitSet achieves the lowest average rank-1 accuracy of 62.4% for CASIA-B, while MFINet (Multiple Factor Inference Network) exhibits the lowest accuracy range of 11.72% to 19.32% under clothing variation conditions on CASIA-B. In addition to an across-the-board analysis of recent breakthroughs in gait recognition, the scope for potential future research direction is also assessed.
步态识别作为一种生物特征识别方法,因其独特的属性,包括非侵入性、远距离捕捉以及抗冒用性,而备受关注。深度学习从数据中提取复杂特征的卓越能力推动了步态识别的变革。本文对基于深度学习的步态识别方法的当前发展进行了概述。我们探讨并分析了步态识别的发展,并强调了其在法医学、安全和刑事调查中的应用。文章深入研究了与步态识别相关的挑战,如行走条件、视角和服装的变化。我们通过对包括卷积神经网络(CNN)、循环神经网络(RNN)和注意力机制在内的先进架构进行全面分析,讨论了深度神经网络在应对这些挑战方面的有效性。各种基于神经网络的步态识别模型,如门控和共享注意力ICDNet(GA-ICDNet)、多尺度时间特征提取器(MSTFE)、GaitNet以及各种基于CNN的方法,在不同行走条件下都展现出了令人印象深刻的准确率,证明了这些模型在捕捉独特步态模式方面的有效性。GaitNet实现了99.7%的卓越识别准确率,而GA-ICDNet在验证任务中显示出高精度,等错误率为0.67%。GaitGraph(ResGCN+2D CNN)的排名第一准确率在66.3%至87.7%之间,而带有库普曼算子的全连接网络在各种条件下对OU-MVLP的平均排名第一准确率为74.7%。然而,利用图卷积网络(GCN)的GCPFP(基于图卷积的部分特征投票的GCN)和GaitSet在CASIA-B上实现了最低的平均排名第一准确率62.4%,而MFINet(多因素推理网络)在CASIA-B的服装变化条件下表现出最低的准确率范围为11.72%至19.32%。除了对步态识别的近期突破进行全面分析外,还评估了潜在未来研究方向的范围。