The introduction of new generation hyperspectral satellite sensors, combined with advancements in deep learning methodologies, has significantly enhanced the ability to discriminate detailed land-cover classes at medium-large scales. However, a significant challenge in deep learning methods is the risk of overfitting when training networks with small labeled datasets. In this work, we propose a data augmentation technique that leverages a guided diffusion model. To effectively train the model with a limited number of labeled samples and to capture complex patterns in the data, we implement a lightweight transformer network. Additionally, we introduce a modified weighted loss function and an optimized cosine variance scheduler, which facilitate fast and effective training on small datasets. We evaluate the effectiveness of the proposed method on a forest classification task with 10 different forest types using hyperspectral images acquired by the PRISMA satellite. The results demonstrat...

Hyperspectral data augmentation with transformer-based diffusion models / Ferrari, Mattia; Bruzzone, Lorenzo. - ELETTRONICO. - 13196:(2024), pp. 115-124. ( Artificial Intelligence and Image and Signal Processing for Remote Sensing XXX 2024 Edinburgh 16th September - 20th September 2024) [10.1117/12.3032957].

Hyperspectral data augmentation with transformer-based diffusion models

Ferrari, Mattia;Bruzzone, Lorenzo
2024-01-01

Abstract

The introduction of new generation hyperspectral satellite sensors, combined with advancements in deep learning methodologies, has significantly enhanced the ability to discriminate detailed land-cover classes at medium-large scales. However, a significant challenge in deep learning methods is the risk of overfitting when training networks with small labeled datasets. In this work, we propose a data augmentation technique that leverages a guided diffusion model. To effectively train the model with a limited number of labeled samples and to capture complex patterns in the data, we implement a lightweight transformer network. Additionally, we introduce a modified weighted loss function and an optimized cosine variance scheduler, which facilitate fast and effective training on small datasets. We evaluate the effectiveness of the proposed method on a forest classification task with 10 different forest types using hyperspectral images acquired by the PRISMA satellite. The results demonstrat...
2024
Proceedings Volume 13196, Artificial Intelligence and Image and Signal Processing for Remote Sensing XXX
Ferrari, Mattia; Bruzzone, Lorenzo
Bellingham, Washington USA
SPIE
9781510681002
Ferrari, Mattia; Bruzzone, Lorenzo
Hyperspectral data augmentation with transformer-based diffusion models / Ferrari, Mattia; Bruzzone, Lorenzo. - ELETTRONICO. - 13196:(2024), pp. 115-124. ( Artificial Intelligence and Image and Signal Processing for Remote Sensing XXX 2024 Edinburgh 16th September - 20th September 2024) [10.1117/12.3032957].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/439192
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