Melanoma is considered the deadliest skin cancer and when it is in an advanced state it is difficult to treat. Diagnoses are visually performed by dermatologists, by naked-eye observation. This paper proposes an augmented reality smartphone application for supporting the dermatologist in the real-time analysis of a skin lesion. The app augments the camera view with information related to the lesion features generally measured by the dermatologist for formulating the diagnosis. The lesion is also classified by a deep learning approach for identifying melanoma. The real-time process adopted for generating the augmented content is described. The real-time performances are also evaluated and a user study is also conducted. Results revealed that the real-time process may be entirely executed on the Smartphone and that the support provided is well judged by the target users.

A mobile augmented reality application for supporting real-time skin lesion analysis based on deep learning / R. Francese, M. Frasca, M. Risi, G. Tortora. - In: JOURNAL OF REAL-TIME IMAGE PROCESSING. - ISSN 1861-8200. - 18:4(2021 Aug), pp. 1247-1259. [10.1007/s11554-021-01109-8]

A mobile augmented reality application for supporting real-time skin lesion analysis based on deep learning

M. Frasca;
2021

Abstract

Melanoma is considered the deadliest skin cancer and when it is in an advanced state it is difficult to treat. Diagnoses are visually performed by dermatologists, by naked-eye observation. This paper proposes an augmented reality smartphone application for supporting the dermatologist in the real-time analysis of a skin lesion. The app augments the camera view with information related to the lesion features generally measured by the dermatologist for formulating the diagnosis. The lesion is also classified by a deep learning approach for identifying melanoma. The real-time process adopted for generating the augmented content is described. The real-time performances are also evaluated and a user study is also conducted. Results revealed that the real-time process may be entirely executed on the Smartphone and that the support provided is well judged by the target users.
Real-time mobile application; Medicine data; Deep learning; Augmented reality
Settore INFO-01/A - Informatica
ago-2021
3-mag-2021
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1148735
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