Gait Based Person Identification Using Deep Learning Model of Generative Adversarial Network

Journal Title: Acadlore Transactions on AI and Machine Learning - Year 2022, Vol 1, Issue 2

Abstract

The proliferation of digital age security tools is often attributed to the rise of visual surveillance. Since an individual's gait is highly indicative of their identity, it is becoming an increasingly popular biometric modality for use in autonomous visual surveillance and monitoring. There are various steps used in gait recognition frameworks such as segmentation, feature extraction, feature learning and similarity measurement. These steps are mutually independent with each part fixed, which results in a suboptimal performance in a challenging condition. It can be done independently of the users' involvement. Low-resolution video and straightforward instrumentation can verify an individual's identity, making impersonation a rarity. Using the benefits of the Generative Adversarial Network (GAN), this investigation tackles the problem of unevenly distributed unlabeled data with infrequently performed tasks. To estimate the data circulation in various circumstances using constrained observed gait data, a multimodal generator is applied here. When it comes to sharing knowledge, the variety provided by the data generated by a multimodal generator is hard to beat. The capability to distinguish gait activities with varying patterns due to environmental dynamics is enhanced by this multimodal generator. This system is more stable than other gait-based recognition methods because it can process data that is not equally dispersed throughout a different environment. The system's reliability is enhanced by the multimodal generator's capacity to produce a wide variety of outputs. The testing results show that this algorithm is superior to other gait-based recognition methods because it can adapt to changing environments.

Authors and Affiliations

Ramesh Vatambeti,Vijay Kumar Damera

Keywords

Related Articles

Predictive Modelling of Employee Attrition Using Deep Learning

This investigation delineates an optimised predictive model for employee attrition within a substantial workforce, identifying pertinent models tailored to the specific context of employee and organisational variables. T...

A Dual-Selective Channel Attention Network for Osteoporosis Prediction in Computed Tomography Images of Lumbar Spine

Osteoporosis is a common systemic bone disease with insidious onset and low treatment efficiency. Once it occurs, it will increase bone fragility and lead to fractures. Computed tomography (CT) is a non-invasive medical...

Robust Leaf Disease Detection Using Complex Fuzzy Sets and HSV-Based Color Segmentation Techniques

Leaf diseases pose a significant threat to global agricultural productivity, impacting both crop yields and quality. Traditional detection methods often rely on expert knowledge, are labor-intensive, and can be time-cons...

Microwave Detection System for Wheat Moisture Content Based on Metasurface Lens Antennas

Maintaining wheat moisture content within a safe range is of critical importance for ensuring the quality and safety of wheat. High-precision, rapid detection of wheat moisture content is a key factor in enabling effecti...

Integrating Long Short-Term Memory and Multilayer Perception for an Intelligent Public Affairs Distribution Model

In the realm of urban public affairs management, the necessity for accurate and intelligent distribution of resources has become increasingly imperative for effective social governance. This study, drawing on crime data...

Download PDF file
  • EP ID EP731876
  • DOI https://doi.org/10.56578/ataiml010203
  • Views 172
  • Downloads 0

How To Cite

Ramesh Vatambeti, Vijay Kumar Damera (2022). Gait Based Person Identification Using Deep Learning Model of Generative Adversarial Network. Acadlore Transactions on AI and Machine Learning, 1(2), -. https://europub.co.uk/articles/-A-731876