Supervised and Unsupervised Textile Classification via Near-Infrared Hyperspectral Imaging and Deep Learning
By: Maria Kainz , Johannes K. Krondorfer , Malte Jaschik and more
Potential Business Impact:
Sorts clothes for recycling using light and smart computers.
Recycling textile fibers is critical to reducing the environmental impact of the textile industry. Hyperspectral near-infrared (NIR) imaging combined with advanced deep learning algorithms offers a promising solution for efficient fiber classification and sorting. In this study, we investigate supervised and unsupervised deep learning models and test their generalization capabilities on different textile structures. We show that optimized convolutional neural networks (CNNs) and autoencoder networks achieve robust generalization under varying conditions. These results highlight the potential of hyperspectral imaging and deep learning to advance sustainable textile recycling through accurate and robust classification.
Similar Papers
Textile Analysis for Recycling Automation using Transfer Learning and Zero-Shot Foundation Models
CV and Pattern Recognition
Sorts old clothes for recycling using pictures.
Self-supervised Learning for Hyperspectral Images of Trees
CV and Pattern Recognition
Helps farmers understand plant health from drone pictures.
Near-Infrared Hyperspectral Imaging Applications in Food Analysis -- Improving Algorithms and Methodologies
CV and Pattern Recognition
Scans food with light to check its quality.