arXiv Open Access 2025

Enhanced Dermatology Image Quality Assessment via Cross-Domain Training

Ignacio Hernández Montilla Alfonso Medela Paola Pasquali Andy Aguilar Taig Mac Carthy +3 lainnya
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Abstrak

Teledermatology has become a widely accepted communication method in daily clinical practice, enabling remote care while showing strong agreement with in-person visits. Poor image quality remains an unsolved problem in teledermatology and is a major concern to practitioners, as bad-quality images reduce the usefulness of the remote consultation process. However, research on Image Quality Assessment (IQA) in dermatology is sparse, and does not leverage the latest advances in non-dermatology IQA, such as using larger image databases with ratings from large groups of human observers. In this work, we propose cross-domain training of IQA models, combining dermatology and non-dermatology IQA datasets. For this purpose, we created a novel dermatology IQA database, Legit.Health-DIQA-Artificial, using dermatology images from several sources and having them annotated by a group of human observers. We demonstrate that cross-domain training yields optimal performance across domains and overcomes one of the biggest limitations in dermatology IQA, which is the small scale of data, and leads to models trained on a larger pool of image distortions, resulting in a better management of image quality in the teledermatology process.

Topik & Kata Kunci

Penulis (8)

I

Ignacio Hernández Montilla

A

Alfonso Medela

P

Paola Pasquali

A

Andy Aguilar

T

Taig Mac Carthy

G

Gerardo Fernández

A

Antonio Martorell

E

Enrique Onieva

Format Sitasi

Montilla, I.H., Medela, A., Pasquali, P., Aguilar, A., Carthy, T.M., Fernández, G. et al. (2025). Enhanced Dermatology Image Quality Assessment via Cross-Domain Training. https://arxiv.org/abs/2506.16116

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2025
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en
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arXiv
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