Despite its broad availability, volumetric information acquisition from Bright-Field Microscopy (BFM) is inherently difficult due to the projective nature of the acquisition process. We investigate the prediction of 3D cell instances from a set of BFM Z-Stack images. We propose a novel two-stage weakly supervised method for volumetric instance segmentation of cells which only requires approximate cell centroids annotation. Created pseudo-labels are thereby refined with a novel refinement loss with Z-stack guidance. The evaluations show that our approach can generalize not only to BFM Z-Stack data, but to other 3D cell imaging modalities. A comparison of our pipeline against fully supervised methods indicates that the significant gain in reduced data collection and labelling results in minor performance difference.
翻译:我们从一组BFM Z-Stack图像中调查三维细胞病例的预测情况,我们提出一个新的两阶段微弱监督的细胞体积分解方法,该方法只需要大约细胞中小机器人的注解。因此,在Z-stack指南下,假标签经过新颖的精细修改后得到改进。评价表明,我们的方法不仅可以概括BFM Z-Stack数据,而且可以概括其他三维细胞成像模式。比较我们的输油管与完全监督的方法表明,在减少数据收集和标签结果方面所取得的显著收益与微小的性能差异有关。