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<title>Grupo de Óptica Atmosférica (GOA)</title>
<link>https://uvadoc.uva.es/handle/10324/83797</link>
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<dc:date>2026-04-18T12:23:59Z</dc:date>
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<title>Multi-frame cloud prediction in all-sky images from RGB images and segmented masks</title>
<link>https://uvadoc.uva.es/handle/10324/83808</link>
<description>This paper presents a comparative study on the impact of input representation on deterministic artificial intelligence models for short-term multi-frame prediction in all-sky images. This work compares a model operating on 8-bit RGB all-sky images with a model that shares the same backbone, but operates directly on semantically segmented masks that encode cloud-related classes. Using an available sky segmentation model, predictions are evaluated in the segmentation label space using segmenter-derived masks as a proxy reference. Within this evaluation framework, the use of semantic masks as input for short-term prediction leads to improved temporal stability and higher agreement across standard segmentation metrics such as intersection over union, Dice coefficient, and categorical cross-entropy. While these results suggest potential relevance for weather and solar energy nowcasting applications, further validation against physical irradiance measurements is required.
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<dc:date>2026-01-01T00:00:00Z</dc:date>
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