Research on fabric classification based on graph neural network
Author:
TAO PENG1,
WENLI CAO2,
JIA CHEN2,
XINGHANG LV2,
ZILI ZHANG2,
JUNPING LIU1,
XINRONG HU2
Affiliation:
1. Hubei Provincial Engineering Research Center for Intelligent Textile and Fashion, China
2. School of Computer Science and Artificial Intelligence, Wuhan Textile University, China
Abstract
Fabric classification plays a crucial role in the modern textile industry and fashion market. In the early stage, traditional
neural network methods were adopted to identify fabrics with the drawback of restricted fabric type and poor accuracy.
Combining multi-frame temporality and analysing fabric graph data made from fabric motion features, this paper
proposes a novel hybrid model that introduces the concept of graph networks to classify 30 textile materials in a public
database. We utilize the graph inductive representation learning method (GraphSAGE, Graph Sample and Aggregate)
to extract node embedding features of the fabric. Moreover, bidirectional gated recurrent unit and layer attention
mechanism (BiGRU-attention) are employed in the last layer of aggregation to calculate the score of previous cells.
Intending to further enhance performance, we link the jump connection with adaptive selection aggregation frameworks
to determine the influential region of each node. Our method breaks through the limitation that the original methods can
only classify a few fabrics with great classification results.
Publisher
The National Research and Development Institute for Textiles and Leather
Subject
Polymers and Plastics,General Environmental Science,General Business, Management and Accounting,Materials Science (miscellaneous)
Cited by
1 articles.
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