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Augmentation and Detection of Individual Pose using CUDA
Author(s) -
Mohd Parvez,
Syed Inthiyaz,
K. Praghash,
K. Suresh Kumar,
Sreevardhan Cheerla
Publication year - 2021
Publication title -
journal of physics. conference series
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.21
H-Index - 85
eISSN - 1742-6596
pISSN - 1742-6588
DOI - 10.1088/1742-6596/1804/1/012178
Subject(s) - computer science , pose , key (lock) , representation (politics) , cuda , identifier , base (topology) , visibility , artificial intelligence , execution time , point (geometry) , parametric statistics , foot (prosody) , computer vision , human–computer interaction , parallel computing , programming language , computer security , mathematical analysis , statistics , physics , geometry , mathematics , optics , politics , political science , law , linguistics , philosophy
The collective real-time pose prediction is a leading element in allowing algorithms to understand Individuals in videos and pictures. In this study, we are presenting a strategy to determining the pose of various individuals in a picture in real time. Non-parametric procedure is used as representation that we refer this to Part-Affinity-Fields (PAFs) to understand how to connect parts of the body with individuals. This base up framework accomplishes high exactness and real time execution, paying little mind to the quantity of individuals in the picture. In past work of computer vision researchers, PAFs and body part area estimation were refined at the same time across preparing different steps. We show that PAF just clarifying as opposed to both the PAF and content part area refinement brings about a significant increment in each of runtime execution and precision. We likewise propose the main joined body and foot key point identifier, considering an inner commented on foot dataset that we have freely discharged. The joined finder not just diminishes the derivation time contrasted with running them successively, yet in addition keeps up the exactness of every part separately. The work was completed in appearance to Open Pose, chief opensource continuous structure to multiindividual 2D present disclosure, including foot, body, hand, & facial central issues.

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