Gripper-enhanced fabric cut piece sorting system based on defects
Date
2023-09Author
Hewavitharana, DC
Wickramathunga, LTUD
Rajapaksha, TNN
Pallemulla, PSH
Piyumini, HDI
Metadata
Show full item recordAbstract
Sri Lanka's garment industry is crucial, 
contributing significantly to the country's export market. 
However, current fabric handling methods in Sri Lankan 
companies are primarily reliant on manual labor, creating 
a compelling potential for research and development in the 
field of automated fabric handling. Fabrics present distinct 
challenges due to their dynamic and static character, 
needing novel solutions to overcome these limitations. 
Furthermore, human fabric problem detection achieves 
just 60% accuracy, emphasizing the importance of 
automation in this vital sector. Significant benefits can be 
obtained by automating these processes in textile 
manufacturers.The fundamental goal of this project is to 
design and build an innovative system capable of 
automatically separating and classifying cloth cut pieces 
based on the presence of defects. Our suggested device 
includes a cylindrical manipulator outfitted with cutting edge pinch-like grippers designed exclusively for effective 
ply separation. To improve defect detection accuracy, we 
use a custom-trained convolutional neural network (CNN) 
with a validation accuracy of 80%. We have also created a 
simple platform for remote control and real-time 
monitoring of the entire system by using IoT 
technology.This complete project not only meets the 
critical demand for fabric handling automation, but it also 
has the potential to change the garment manufacturing 
process in Sri Lanka.
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- Engineering [37]
