Biometric Identification using Gait Analysis by Deep Learning

Author(s):  
Jaychand Upadhyay ◽  
Rohan Paranjpe ◽  
Hiralal Purohit ◽  
Rohan Joshi
Author(s):  
Prof. Jaychand Upadhyay ◽  
Prof. Tad Gonsalves ◽  
Rohan Paranjpe ◽  
Hiralal Purohit ◽  
Rohan Joshi

2019 ◽  
Vol 5 (1) ◽  
pp. 9-12
Author(s):  
Jyothsna Kondragunta ◽  
Christian Wiede ◽  
Gangolf Hirtz

AbstractBetter handling of neurological or neurodegenerative disorders such as Parkinson’s Disease (PD) is only possible with an early identification of relevant symptoms. Although the entire disease can’t be treated but the effects of the disease can be delayed with proper care and treatment. Due to this fact, early identification of symptoms for the PD plays a key role. Recent studies state that gait abnormalities are clearly evident while performing dual cognitive tasks by people suffering with PD. Researches also proved that the early identification of the abnormal gaits leads to the identification of PD in advance. Novel technologies provide many options for the identification and analysis of human gait. These technologies can be broadly classified as wearable and non-wearable technologies. As PD is more prominent in elderly people, wearable sensors may hinder the natural persons movement and is considered out of scope of this paper. Non-wearable technologies especially Image Processing (IP) approaches captures data of the person’s gait through optic sensors Existing IP approaches which perform gait analysis is restricted with the parameters such as angle of view, background and occlusions due to objects or due to own body movements. Till date there exists no researcher in terms of analyzing gait through 3D pose estimation. As deep leaning has proven efficient in 2D pose estimation, we propose an 3D pose estimation along with proper dataset. This paper outlines the advantages and disadvantages of the state-of-the-art methods in application of gait analysis for early PD identification. Furthermore, the importance of extracting the gait parameters from 3D pose estimation using deep learning is outlined.


2021 ◽  
Vol 90 ◽  
pp. 127-128
Author(s):  
P. Krondorfer ◽  
D. Slijepčević ◽  
F. Unglaube ◽  
A. Kranzl ◽  
C. Breiteneder ◽  
...  

2019 ◽  
Vol 13 (2) ◽  
pp. 282-291 ◽  
Author(s):  
Dwaipayan Biswas ◽  
Luke Everson ◽  
Muqing Liu ◽  
Madhuri Panwar ◽  
Bram-Ernst Verhoef ◽  
...  

Author(s):  
Omar Costilla-Reyes ◽  
Ruben Vera-Rodriguez ◽  
Abdullah S. Alharthi ◽  
Syed U. Yunas ◽  
Krikor B. Ozanyan
Keyword(s):  

2020 ◽  
Vol 4 (1) ◽  
Author(s):  
Zixuan Zhang ◽  
Tianyiyi He ◽  
Minglu Zhu ◽  
Zhongda Sun ◽  
Qiongfeng Shi ◽  
...  

Abstract The era of artificial intelligence and internet of things is rapidly developed by recent advances in wearable electronics. Gait reveals sensory information in daily life containing personal information, regarding identification and healthcare. Current wearable electronics of gait analysis are mainly limited by high fabrication cost, operation energy consumption, or inferior analysis methods, which barely involve machine learning or implement nonoptimal models that require massive datasets for training. Herein, we developed low-cost triboelectric intelligent socks for harvesting waste energy from low-frequency body motions to transmit wireless sensory data. The sock equipped with self-powered functionality also can be used as wearable sensors to deliver information, regarding the identity, health status, and activity of the users. To further address the issue of ineffective analysis methods, an optimized deep learning model with an end-to-end structure on the socks signals for the gait analysis is proposed, which produces a 93.54% identification accuracy of 13 participants and detects five different human activities with 96.67% accuracy. Toward practical application, we map the physical signals collected through the socks in the virtual space to establish a digital human system for sports monitoring, healthcare, identification, and future smart home applications.


2021 ◽  
Vol 11 (1) ◽  
Author(s):  
Sungmoon Jeong ◽  
Hosang Yu ◽  
Jaechan Park ◽  
Kyunghun Kang

AbstractA vision-based gait analysis method using monocular videos was proposed to estimate temporo-spatial gait parameters by leveraging deep learning algorithms. This study aimed to validate vision-based gait analysis using GAITRite as the reference system and analyze relationships between Frontal Assessment Battery (FAB) scores and gait variability measured by vision-based gait analysis in idiopathic normal pressure hydrocephalus (INPH) patients. Gait data from 46 patients were simultaneously collected from the vision-based system utilizing deep learning algorithms and the GAITRite system. There was a strong correlation in 11 gait parameters between our vision-based gait analysis method and the GAITRite gait analysis system. Our results also demonstrated excellent agreement between the two measurement systems for all parameters except stride time variability after the cerebrospinal fluid tap test. Our data showed that stride time and stride length variability measured by the vision-based gait analysis system were correlated with FAB scores. Vision-based gait analysis utilizing deep learning algorithms can provide comparable data to GAITRite when assessing gait dysfunction in INPH. Frontal lobe functions may be associated with gait variability measurements using vision-based gait analysis for INPH patients.


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