Poster
in
Affinity Workshop: Women in Machine Learning
DeepWear: Towards an Automated Textiles Materials Classification using a Taxonomy-based ML Approach
Shu Zhong · Miriam Ribul · Youngjun Cho · Marianna Obrist
Abstract:
Global sustainability has become an urgent call. Garments and textiles are ubiquitous in our daily lives, however, tons of garments end up in landfill every year. The fashion industry is undergoing a significant change to help textile materials to be reused, repaired and recycled in a sustainable manner. Textiles need to be traced back to their original forms so that recycling can be guaranteed. Yet, textiles are mostly sorted manually as automatic identification of textile materials is challenging and we lack a low-cost and effective technique for identifying textiles. Our proposed model looks at this textile classification problem from a very different angle, we use simple ubiquitous RGB textiles garments images.
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