Patterns detection in ECG signal applied to biometric recognition (2015)
- Authors:
- USP affiliated authors: PERES, SARAJANE MARQUES - EACH ; LIMA, CLODOALDO APARECIDO DE MORAES - EACH
- Unidade: EACH
- Subjects: BIOMETRIA; RECONHECIMENTO DE IMAGEM; RECONHECIMENTO DE PADRÕES; ELETROCARDIOGRAFIA
- Language: Português
- Imprenta:
- Publisher: EESC-SP
- Publisher place: São Carlos
- Date published: 2015
- Source:
- Título: Proceedings
- Conference titles: Workshop de Visão Computacional - WVC
-
ABNT
PASSOS, Henrique dos Santos et al. Patterns detection in ECG signal applied to biometric recognition. 2015, Anais.. São Carlos: EESC-SP, 2015. . Acesso em: 08 abr. 2026. -
APA
Passos, H. dos S., Costa, D. M. M. da, Peres, S. M., & Lima, C. A. de M. (2015). Patterns detection in ECG signal applied to biometric recognition. In Proceedings. São Carlos: EESC-SP. -
NLM
Passos H dos S, Costa DMM da, Peres SM, Lima CA de M. Patterns detection in ECG signal applied to biometric recognition. Proceedings. 2015 ;[citado 2026 abr. 08 ] -
Vancouver
Passos H dos S, Costa DMM da, Peres SM, Lima CA de M. Patterns detection in ECG signal applied to biometric recognition. Proceedings. 2015 ;[citado 2026 abr. 08 ] - Overview on support vector machines applied to temporal modeling
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