Hyperspectral Dataset and Deep Learning methods for Waste from Electric and Electronic Equipment Identification (WEEE)
Artzai Picon, Pablo Galan, Arantza Bereciartua-Perez, Leire, Benito-del-Valle

TL;DR
This paper evaluates deep learning architectures for hyperspectral image segmentation of WEEE, highlighting the importance of spectral and spatial information, and introduces a new dataset for the field.
Contribution
It provides a comprehensive analysis of spectral and spatial effects on segmentation and releases a new hyperspectral dataset for WEEE identification.
Findings
Spatial information improves segmentation accuracy.
Transfer learning from RGB models shows potential.
Spectral resolution impacts model performance.
Abstract
Hyperspectral imaging, a rapidly evolving field, has witnessed the ascendancy of deep learning techniques, supplanting classical feature extraction and classification methods in various applications. However, many researchers employ arbitrary architectures for hyperspectral image processing, often without rigorous analysis of the interplay between spectral and spatial information. This oversight neglects the implications of combining these two modalities on model performance. In this paper, we evaluate the performance of diverse deep learning architectures for hyperspectral image segmentation. Our analysis disentangles the impact of different architectures, spanning various spectral and spatial granularities. Specifically, we investigate the effects of spectral resolution (capturing spectral information) and spatial texture (conveying spatial details) on segmentation outcomes.…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · Recycling and Waste Management Techniques
