In synchrotron-based Computed Tomography (CT) there is a trade-off between spatial resolution, field of view and speed of positioning and alignment of samples. The problem is even more prominent for high-throughput tomography--an automated setup, capable of scanning large batches of samples without human interaction. As a result, in many applications, only 20-30% of the reconstructed volume contains the actual sample. Such data redundancy clutters the storage and increases processing time. Hence, an automated sample localization becomes an important practical problem. In this work, we describe two self-supervised losses designed for biological CT. We further demonstrate how to employ the uncertainty estimation for sample localization. This approach shows the ability to localize a sample with less than 1.5\% relative error and reduce the used storage by a factor of four. We also show that one of the proposed losses works reasonably well as a pre-training task for the semantic segmentation.
翻译:以同步速为基础的测算地形(CT)中,空间分辨率、视野领域、定位速度和定点速度之间存在一种权衡。对于高通量透视-自动设置而言,这个问题更为突出,能够对大量样品进行扫描而无需人际互动。因此,在许多应用中,只有20-30%的重整体体含有实际样本。这种数据冗余将存储时间和增加处理时间相隔开来。因此,自动取样定位成为一个重要的实际问题。在这项工作中,我们描述了为生物CT设计的两种自监督损失。我们进一步展示了如何对样品定点使用不确定性估算。这种方法表明能够将样品定位,但相对误差小于1.5个百分点,并将使用过的存储量减少4倍。我们还表明,拟议的损失之一合理,是用于语系分割的训练前任务。