Ensemble of Deep Convolutional Neural Networks with Monte Carlo Dropout Sampling for Automated Image Segmentation Quality Control and Robust Deep Learning Using Small Datasets
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Stefan K. Piechnik | Qiang Zhang | Evan Hann | Ricardo A. Gonzales | Iulia A. Popescu | Vanessa M. Ferreira | S. Piechnik | Qiang Zhang | V. Ferreira | R. A. Gonzales | E. Hann
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