An Image Dataset of Common Skin Diseases of Bangladesh and Benchmarking Performance with Machine Learning Models
arXiv cs.LG / 3/27/2026
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Key Points
- The study presents a publicly available image dataset for five common skin diseases in Bangladesh—Contact Dermatitis, Vitiligo, Eczema, Scabies, and Tinea Ringworm—addressing a shortage of dermatological expertise and diagnostic support.
- The dataset includes 1,612 images collected from patients at the outpatient department of Faridpur Medical College in Bangladesh, with a breakdown across the five disease categories and a portion of images treated as distinct while others are augmented.
- The research applies multiple machine learning and deep learning models to benchmark classification performance on the dataset.
- The authors position the dataset as regionally collected but broadly relevant to global (especially South Asia) automated dermatology research and applications.
- The work is intended to encourage further machine learning and deep learning development for automated skin disease detection from images.
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