Single Image Estimation of Cell Migration Direction by Deep Circular Regression

Abstract

In this paper, we address the problem of estimating the migration direction of cells based on a single image. A solution to this problem lays the foundation for a variety of applications that were previously not possible. To our knowledge, there is only one related work that employs a classification CNN with four classes (quadrants). However, this approach does not allow for detailed directional resolution. We tackle the single image estimation problem using deep circular regression, with a particular focus on cycle-sensitive methods. On two common datasets, we achieve a mean estimation error of \!17, representing a significant improvement over previous work, which reported estimation error of 30 and 34, respectively.

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