IKONOS: an intelligent tool to support diagnosis of COVID-19 by texture analysis of X-ray images
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Valter A. F. Barbosa | V. A. d. F. Barbosa | J. C. Gomes | M. A. de Santana | R. E. de Souza | W. P. dos Santos | J. Bandeira | M. J. S. Valenca | A. M. Ismael | M. Valença | J. Gomes | A. M. Ismael | M. Santana | Jonathan Bandeira
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