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Diagnosing Skin Diseases with TinyML on Low-Spec Devices
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  • Release Date: 2025-06-19
  • tinyML
  • computing offloading
  • artificial intelligence
  • machine learning
  • computer vision
  • image classification
Video Introduction

This video is adapted from 10.3390/app142411474

Image classification usually requires connectivity and access to the cloud, which is often limited in many parts of the world, including hard-to-reach rural areas. Tiny machine learning (tinyML) aims to solve this problem by hosting artificial intelligence (AI) assistants on constrained devices, eliminating connectivity issues by processing data within the device itself, without Internet or cloud access. This study explores the use of tinyML to provide healthcare support with low-spec devices in low-connectivity environments, focusing on the diagnosis of skin diseases and the ethical use of AI assistants in a healthcare setting. To investigate this, images of skin lesions were used to train a model for classifying visually detectable diseases (VDDs). The model weights were then offloaded to a Raspberry Pi with a webcam attached, to be used for the classification of skin lesions without Internet access. It was found that the developed prototype achieved a test accuracy of 78% when trained on the HAM10000 dataset, and a test accuracy of 85% when trained on the ISIC 2020 Challenge dataset.

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Watt, T.; Chrysoulas, C.; Barclay, P.J.; Boudani, B.E.; Kalliatakis, G. Diagnosing Skin Diseases with TinyML on Low-Spec Devices. Encyclopedia. Available online: https://encyclopedia.pub/video/video_detail/1643 (accessed on 19 July 2025).
Watt T, Chrysoulas C, Barclay PJ, Boudani BE, Kalliatakis G. Diagnosing Skin Diseases with TinyML on Low-Spec Devices. Encyclopedia. Available at: https://encyclopedia.pub/video/video_detail/1643. Accessed July 19, 2025.
Watt, Tess, Christos Chrysoulas, Peter J. Barclay, Brahim El Boudani, Grigorios Kalliatakis. "Diagnosing Skin Diseases with TinyML on Low-Spec Devices" Encyclopedia, https://encyclopedia.pub/video/video_detail/1643 (accessed July 19, 2025).
Watt, T., Chrysoulas, C., Barclay, P.J., Boudani, B.E., & Kalliatakis, G. (2025, June 19). Diagnosing Skin Diseases with TinyML on Low-Spec Devices. In Encyclopedia. https://encyclopedia.pub/video/video_detail/1643
Watt, Tess, et al. "Diagnosing Skin Diseases with TinyML on Low-Spec Devices." Encyclopedia. Web. 19 June, 2025.
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