Table 1: Result of recall score.
Table 2: Result of precision score.
proposed method and conventional U-net. From
Table 2, we confirmed that cell nucleus is also
improved. This result shows that our proposed
method can reduce false positive like a noise. On the
other hand, U-net shows high precision score for cell
membrane. The reason is that our method recognizes
the cell membrane thickly. Therefore, our proposed
method is high recall score but precision score is low
score. However, our goal is to get connection of cell
membrane. High recall score is the result we
expected.
5 CONCLUSIONS
In this paper, we proposed to visualize and modify
difficult pixels according to the confidence of
network output. Difficult pixels often show the
connection between cell membrane, and we can
modify those pixels. We confirmed that the proposed
method can get connection of cell membrane well.
However, our method tends to that cell membrane is
recognized thicker than ground truth. Thus, we would
like to study another method for modifying prediction
results more accurately.
ACKNOWLEDGEMENTS
This work is partially supported by MEXT/JSPS
KAKENHI Grant Number 18H04746 "Resonance
Bio" and 18K111382.
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