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Marc Pollefeys | Antonio M. López | Juan C. Moure | Daniel Hernández Juárez | Antonio Espinosa | Antonio M. López | Lukas Schneider | Uwe Franke | David Vázquez | M. Pollefeys | U. Franke | David Vázquez | Lukas Schneider | J. Moure | Antonio Espinosa | D. Juárez
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