IVCVMMJun 19, 2025

Enhanced Dermatology Image Quality Assessment via Cross-Domain Training

arXiv:2506.16116v1h-index: 9ICBRA
Originality Incremental advance
AI Analysis

This addresses a major concern for practitioners in teledermatology by improving remote consultation usefulness, though it is incremental as it builds on existing IQA methods.

The paper tackled the problem of poor image quality in teledermatology by proposing cross-domain training of Image Quality Assessment (IQA) models, combining dermatology and non-dermatology datasets, which resulted in optimal performance across domains and better management of image quality.

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.

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