TL;DR
This paper introduces Electrolyzers-HSI, a comprehensive hyperspectral imaging dataset for electrolyzer material classification, enabling improved automated recycling and material detection with baseline ML and deep learning evaluations.
Contribution
The creation of a large, multimodal hyperspectral dataset for electrolyzer materials, along with baseline ML and transformer-based models for accurate classification.
Findings
Transformer architectures show potential for material identification.
Zero-shot detection enhances object-level classification robustness.
Open dataset and code support reproducible research.
Abstract
The global challenge of sustainable recycling demands automated, fast, and accurate, state-of-the-art (SOTA) material detection systems that act as a bedrock for a circular economy. Democratizing access to these cutting-edge solutions that enable real-time waste analysis is essential for scaling up recycling efforts and fostering the Green Deal. In response, we introduce \textbf{Electrolyzers-HSI}, a novel multimodal benchmark dataset designed to accelerate the recovery of critical raw materials through accurate electrolyzer materials classification. The dataset comprises 55 co-registered high-resolution RGB images and hyperspectral imaging (HSI) data cubes spanning the 400--2500 nm spectral range, yielding over 4.2 million pixel vectors and 424,169 labeled ones. This enables non-invasive spectral analysis of shredded electrolyzer samples, supporting quantitative and qualitative…
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