Lightweight U-Net for High-Resolution Breast Imaging

11/27/2020
by   Mickael Tardy, et al.
0

We study the fully convolutional neural networks in the context of malignancy detection for breast cancer screening. We work on a supervised segmentation task looking for an acceptable compromise between the precision of the network and the computational complexity.

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