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Human gait recognition subject to different covariate factors in a multi-view environment

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TLDR
In this paper , a support vector machine (SVM) and a histogram of oriented gradients (HOG) were applied to classify images of the human gait in order to meet the objectives.
Abstract
Gait recognition provides the opportunity to identify different walking styles of people without physical intervention. However, covariates such as changing clothes and carrying conditions may influence recognition accuracy. Our objective was to identify the walking patterns of people for different covariates through analyzing images from publicly available data set CASIA-B on gait. On the dataset, the proposed method was evaluated by using GEI (gait energy image) as inputs for normal walking, changing clothes, and carrying conditions in a multi-view environment. A support vector machine (SVM) and a histogram of oriented gradients (HOG) were applied to classify images of the human gait in order to meet the objectives. Observations show that, under consideration of the mean of the individual accuracies, the accuracy of recognition is in the following order: clothing > normal walk > carrying at a 90° angle. Measurement accuracy of 87.9% was achieved for the coat-wearing people and measurement accuracy of 83.33% was achieved for all the mentioned covariates. The accuracy of the clothing covariate stated as 87.9% is a useful for people especially for different season like winter.

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Citations
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Journal ArticleDOI

HGRBOL2: Human gait recognition for biometric application using Bayesian optimization and extreme learning machine

TL;DR: In this paper , a framework for human gait recognition based on deep learning and Bayesian optimization is proposed, where optical flow-based motion regions are extracted and utilized to train the fine-tuned EfficentNet-B0 deep model.
Journal ArticleDOI

SIDA-GAN: A lightweight Generative Adversarial Network for Single Image Depth Approximation

TL;DR: SIDA-GAN as mentioned in this paper is a set of GAN-based deep learning models that can be employed for predicting the depth map for a given single input RGB image, which reduces the number of computations in comparison with standard convolution for the same convolution task.
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A Fusion-Assisted Multi-Stream Deep Learning and ESO-Controlled Newton–Raphson-Based Feature Selection Approach for Human Gait Recognition

TL;DR: Zhang et al. as mentioned in this paper proposed a two-stream deep learning framework for human gait recognition, where the first step proposed a contrast enhancement technique based on the local and global filters information fusion, and the high-boost operation was finally applied to highlight the human region in a video frame.
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Multi-view Gait Recognition based on Siamese Vision Transformer

TL;DR: The experimental results show that SMViT can attain state-of-the-art performance compared to advanced step recognition models such as GaitGAN, Multi_view GAN, Posegait and other gait recognition models.
References
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Journal ArticleDOI

Individual recognition using gait energy image

TL;DR: Experimental results show that the proposed GEI is an effective and efficient gait representation for individual recognition, and the proposed approach achieves highly competitive performance with respect to the published gait recognition approaches.
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General Tensor Discriminant Analysis and Gabor Features for Gait Recognition

TL;DR: A general tensor discriminant analysis (GTDA) is developed as a preprocessing step for LDA for face recognition and achieves good performance for gait recognition based on image sequences from the University of South Florida (USF) HumanID Database.
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Fusion of static and dynamic body biometrics for gait recognition

TL;DR: A human recognition algorithm by combining static and dynamic body biometrics, fused on the decision level using different combinations of rules to improve the performance of both identification and verification is described.
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Gait recognition without subject cooperation

TL;DR: It is argued that selecting the most relevant gait features that are invariant to changes in gait covariate conditions is the key to develop a gait recognition system that works without subject cooperation and an Adaptive Component and Discriminant Analysis is formulated which seamlessly integrates the feature selection method with subspace analysis for robust recognition.
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A model-based gait recognition method with body pose and human prior knowledge

TL;DR: PoseGait exploits human 3D pose estimated from images by Convolutional Neural Network as the input feature for gait recognition and design spatio-temporal features from the3D pose to improve the recognition rate.