Automated annotator: capturing expert knowledge for free
Deep learning enabled medical image analysis is heavily reliant on expert annotations which is costly. We present a simple yet effective automated annotation pipeline that uses autoencoder based heatmaps to exploit high level information that can be extracted from a histology viewer in an unobtrusiv...
Main Authors: | Elmes, S, Chakraborti, T, Fan, M, Uhlig, H, Rittscher, J |
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Format: | Conference item |
Language: | English |
Published: |
IEEE
2021
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