Deep Active Learning for Dual-View Mammogram Analysis
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Gwénolé Quellec | Mathieu Lamard | Béatrice Cochener | Pierre-Henri Conze | Gouenou Coatrieux | Heng Zhang | Yutong Yan | G. Quellec | M. Lamard | B. Cochener | G. Coatrieux | Yutong Yan | Heng Zhang | Pierre-Henri Conze
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