Go to:
Logótipo
Você está em: Start > Publications > View > Incremental Learning for Dermatological Imaging Modality Classification
Map of Premises
Principal
Publication

Incremental Learning for Dermatological Imaging Modality Classification

Title
Incremental Learning for Dermatological Imaging Modality Classification
Type
Article in International Scientific Journal
Year
2021
Authors
Morgado, AC
(Author)
Other
The person does not belong to the institution. The person does not belong to the institution. The person does not belong to the institution. Without AUTHENTICUS Without ORCID
Andrade, C
(Author)
Other
The person does not belong to the institution. The person does not belong to the institution. The person does not belong to the institution. Without AUTHENTICUS Without ORCID
Vasconcelos, MJM
(Author)
Other
The person does not belong to the institution. The person does not belong to the institution. The person does not belong to the institution. Without AUTHENTICUS Without ORCID
Journal
Title: Journal of ImagingImported from Authenticus Search for Journal Publications
Vol. 20
Final page: 180
Publisher: MDPI
Other information
Authenticus ID: P-00V-CN1
Abstract (EN): With the increasing adoption of teledermatology, there is a need to improve the automatic organization of medical records, being dermatological image modality a key filter in this process. Although there has been considerable effort in the classification of medical imaging modalities, this has not been in the field of dermatology. Moreover, as various devices are used in teledermatological consultations, image acquisition conditions may differ. In this work, two models (VGG-16 and MobileNetV2) were used to classify dermatological images from the Portuguese National Health System according to their modality. Afterwards, four incremental learning strategies were applied to these models, namely naive, elastic weight consolidation, averaged gradient episodic memory, and experience replay, enabling their adaptation to new conditions while preserving previously acquired knowledge. The evaluation considered catastrophic forgetting, accuracy, and computational cost. The MobileNetV2 trained with the experience replay strategy, with 500 images in memory, achieved a global accuracy of 86.04% with only 0.0344 of forgetting, which is 6.98% less than the second-best strategy. Regarding efficiency, this strategy took 56 s per epoch longer than the baseline and required, on average, 4554 megabytes of RAM during training. Promising results were achieved, proving the effectiveness of the proposed approach.
Language: English
Type (Professor's evaluation): Scientific
No. of pages: 18
Documents
We could not find any documents associated to the publication.
Related Publications

Of the same journal

Skin Cancer Image Classification Using Artificial Intelligence Strategies: A Systematic Review (2024)
Another Publication in an International Scientific Journal
Vardasca, R; Joaquim Mendes; Magalhaes, C
Visible and Thermal Image-Based Trunk Detection with Deep Learning for Forestry Mobile Robotics (2021)
Article in International Scientific Journal
da Silva, DQ; Filipe Neves Santos; Armando Jorge Sousa; Filipe, V
Synthesizing Human Activity for Data Generation (2023)
Article in International Scientific Journal
Romero, A; Pedro Carvalho; Luís Corte-Real; Pereira, A
Preventing Wine Counterfeiting by Individual Cork Stopper Recognition Using Image Processing Technologies (2018)
Article in International Scientific Journal
Valter Costa; Armando Sousa; Ana Reis
Photo2Video: Semantic-Aware Deep Learning-Based Video Generation from Still Content (2022)
Article in International Scientific Journal
Viana, P; Maria Teresa Andrade; Pedro Carvalho; Vilaca, L; Teixeira, IN; Costa, T; Jonker, P

See all (12)

Recommend this page Top
Copyright 1996-2025 © Faculdade de Medicina Dentária da Universidade do Porto  I Terms and Conditions  I Acessibility  I Index A-Z
Page created on: 2025-08-23 at 21:40:50 | Privacy Policy | Personal Data Protection Policy | Whistleblowing | Electronic Yellow Book