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Skin Color Measurement from Dermatoscopic Images: An Evaluation on a Synthetic Dataset

Skin Color Measurement from Dermatoscopic Images: An Evaluation on a Synthetic Dataset

来源:Arxiv_logoArxiv
英文摘要

This paper presents a comprehensive evaluation of skin color measurement methods from dermatoscopic images using a synthetic dataset (S-SYNTH) with controlled ground-truth melanin content, lesion shapes, hair models, and 18 distinct lighting conditions. This allows for rigorous assessment of the robustness and invariance to lighting conditions. We assess four classes of image colorimetry approaches: segmentation-based, patch-based, color quantization, and neural networks. We use these methods to estimate the Individual Typology Angle (ITA) and Fitzpatrick types from dermatoscopic images. Our results show that segmentation-based and color quantization methods yield robust, lighting-invariant estimates, whereas patch-based approaches exhibit significant lighting-dependent biases that require calibration. Furthermore, neural network models, particularly when combined with heavy blurring to reduce overfitting, can provide light-invariant Fitzpatrick predictions, although their generalization to real-world images remains unverified. We conclude with practical recommendations for designing fair and reliable skin color estimation methods.

Irena Galić、Marin Benčević、Robert Å ojo

皮肤病学、性病学计算技术、计算机技术

Irena Galić,Marin Benčević,Robert Å ojo.Skin Color Measurement from Dermatoscopic Images: An Evaluation on a Synthetic Dataset[EB/OL].(2025-06-25)[2025-06-27].https://arxiv.org/abs/2504.04494.点此复制

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