학술논문

VARSew: A Literature Review and Benchmark Dataset for Visual Recognition in Garment Sewing
Document Type
Conference
Source
2023 Intelligent Methods, Systems, and Applications (IMSA) Intelligent Methods, Systems, and Applications (IMSA), 2023. :49-55 Jul, 2023
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Signal Processing and Analysis
Industries
Visualization
Clothing
Production
Medical services
Maintenance engineering
Cameras
Video surveillance
Behavioral sciences
Videos
Human Action Recognition
Visual recognition
Vision-based human action recognition
Video classification
Action classification
Garment Sewing Industry
Manufacturer assembly industry
Language
Abstract
Human action recognition (HAR)is the method of analyzing human behavior with the aid of computer and machine vision technology. Different application domains have seen substantial recent advancements in this field of study. However, the absence of suitable, sizeable trained datasets still limits HAR in several areas of domains. Many factors impact the availability of suitable HAR data in specific domains. One of those interesting industrial domains is garment sewing. Many world reports were published to illustrate the progress of the worldwide garment sewing industry. To our knowledge, HAR data for the garment sewing industry is limited. Thus, this paper reviews recent works in HAR approaches and proposes a new HAR dataset, called VARSew, specifically designed for recognizing human sewing actions during production time. VARSew consists of 3,121 high-resolution videos of around 49,936 frames. The dataset captures the actions of 34 human Sewing Machine Operators and Maintenance Machine Operators, offering research opportunities for both binary and multi-class classification problems.