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Yves M. Galvão
Yves M. Galvão
Ph.D. in Computer Engineering, University of Pernambuco
Verified email at ecomp.poli.br
Title
Cited by
Cited by
Year
A multimodal approach using deep learning for fall detection
YM Galvão, J Ferreira, VA Albuquerque, P Barros, BJT Fernandes
Expert Systems with Applications 168, 114226, 2021
792021
Anomaly detection in smart houses: Monitoring elderly daily behavior for fall detecting
YM Galvão, VA Albuquerque, BJT Fernandes, MJS Valença
2017 IEEE Latin American Conference on Computational Intelligence (LA-CCI), 1-6, 2017
322017
A framework for anomaly identification applied on fall detection
YM Galvao, L Portela, J Ferreira, P Barros, OADA Fagundes, ...
IEEE Access 9, 77264-77274, 2021
222021
Onefall-gan: A one-class gan framework applied to fall detection
YM Galvão, L Portela, P Barros, RA de Araújo Fagundes, BJT Fernandes
Engineering Science and Technology, an International Journal 35, 101227, 2022
62022
Performance improvement of path planning algorithms with deep learning encoder model
J Ferreira, AAF Júnior, YM Galvão, P Barros, SMM Fernandes, ...
2020 Joint IEEE 10th International Conference on Development and Learning …, 2020
62020
Cnn encoder to reduce the dimensionality of data image for motion planning
J Ferreira, AAF Júnior, YM Galvão, BJT Fernandes, P Barros
arXiv preprint arXiv:2004.05077, 2020
22020
Anomaly Detection in Smart Houses for Healthcare: Recent Advances, and Future Perspectives
YM Galvão, L Castro, J Ferreira, FBL Neto, RAA Fagundes, ...
SN Computer Science 5 (1), 136, 2024
2024
Analysis of Social Robotic Navigation approaches: CNN Encoder and Incremental Learning as an alternative to Deep Reinforcement Learning
J Ferreira, AAF Júnior, L Castro, YM Galvão, P Barros, BJT Fernandes
arXiv preprint arXiv:2008.07965, 2020
2020
A Multimodal Approach in Smart House for Fall Detection
YMG Vinícius A. de Albuquerque, Bruno J. T. Fernandes
ICDL-EPIROB Workshop on Computational Models for Crossmodal Learning 2017 …, 2017
2017
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