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Published April 2020 | Submitted
Book Section - Chapter Open

J Regularization Improves Imbalanced Multiclass Segmentation

Abstract

We propose a new loss formulation to further advance the multiclass segmentation of cluttered cells under weakly supervised conditions. When adding a Youden's J statistic regularization term to the cross entropy loss we improve the separation of touching and immediate cells, obtaining sharp segmentation boundaries with high adequacy. This regularization intrinsically supports class imbalance thus eliminating the necessity of explicitly using weights to balance training. Simulations demonstrate this capability and show how the regularization leads to correct results by helping advancing the optimization when cross entropy stagnates. We build upon our previous work on multiclass segmentation by adding yet another training class representing gaps between adjacent cells. This addition helps the classifier identify narrow gaps as background and no longer as touching regions. We present results of our methods for 2D and 3D images, from bright field images to confocal stacks containing different types of cells, and we show that they accurately segment individual cells after training with a limited number of images, some of which are poorly annotated.

Additional Information

© 2020 IEEE. We thank financial support from the Brazilian funding agencies FACEPE, CAPES and CNPq (FAG, PF, TIR), from the Beckman Institute at Caltech to the Center for Advanced Methods in Biological Image Analysis (AC, FAG), from the Howard Hughes Medical Institute (PTT, EMM), and thank the IBM Matching Grants Program for computer donation (AC).

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