TABLE II. Segmentation Accuracy for our RBC Polygon Set, Using 11-fold Cross Validation. For Each Experiment, the Training Set Contains Tiles From 150 Images, and the Test Set Contains 15 Images. We Conducted t-Tests Using the F1-Measure Between our Proposed RBCNet Dual Network (U-Net+Faster RCNN) and Other Methods. All p-Values are < 0.001, Indicating That the Differences Between Groups are Statistically Significant.
Method Evaluation Metrics |
F1-Measure
|
Precision
|
Recall
|
|---|---|---|---|
| Traditional methods | |||
| Watershed [17] | ![]() |
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| Active contour [18], [19] | ![]() |
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| Instance segmentation deep learning methods | |||
| SegNet [48] | ![]() |
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| U-Net [42] | ![]() |
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| DeepLab v3+ [49] | ![]() |
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| Object detection deep learning methods | |||
| Faster R-CNN [39] on overlapping-tiles + NMS | ![]() |
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| Yolo [50] on overlapping-tiles + NMS | ![]() |
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| SSD [51] on overlapping-tiles + NMS | ![]() |
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| Mask R-CNN [52] on overlapping-tiles + NMS | ![]() |
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| Proposed dual deep learning networks | |||
| SegNet + Faster R-CNN | ![]() |
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| U-Net + YOLO | ![]() |
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| RBCNet (U-Net + Faster R-CNN) | ![]() |
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