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  1. Home
  2. Faculty Publications
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  4. Hand Sign Recognition using YOLOV5
 
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Hand Sign Recognition using YOLOV5

Date Issued
2022-01
Author(s)
Saji, Alen Charuvila
Ramalakshmi, K  
Senbagavalli, M  
Gunasekaran, Hemalatha
Ebenezer, Shamila
DOI
2395-5295
2395-5287
Abstract
The deaf-mute community utilises sign language for interacting among themselves and others. The introduction of standard sign language has made their lives much easier. This paper proposes an effective hand-sign recognition method using a deep learning technique and is based on YOLOv5, which is a real-time object detection algorithm which detects a hand sign and outputs the corresponding text. The proposed model utilises various sub-models namely, Cross Stage Partial Network (CSPNet), Path Aggregation Network (PANet), Dense Prediction. This model can be conveniently deployed into an android application with a user-friendly interface.
Subjects

YOLOv5

Classification

Arrhythmia

Deep learning

Convolution deep lear...

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