Region-Based Evidential Deep Learning to Quantify Uncertainty and Improve Robustness of Brain Tumor Segmentation. Li, H., Nan, Y., Del Ser, J., & Yang, G. Neural Computing and Applications, 2022.
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title = {Region-Based Evidential Deep Learning to Quantify Uncertainty and Improve Robustness of Brain Tumor Segmentation},
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author = {Li, Hao and Nan, Yang and Del Ser, Javier and Yang, Guang},
journal = {Neural Computing and Applications}
}
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