论文标题

肝脏分割的调度技术:REDUCELRONPLATEAU与OnecyClelr

Scheduling Techniques for Liver Segmentation: ReduceLRonPlateau Vs OneCycleLR

论文作者

Al-Kababji, Ayman, Bensaali, Faycal, Dakua, Sarada Prasad

论文摘要

机器学习和计算机视觉技术影响了许多领域,包括生物医学。本文的目的是在整个培训过程中调查操纵学习率(LR)的重要概念(LR),用于肝细分任务,重点是新设计的OnecyClelr对付RealucelRonplateau。由2018年发布的数据集,由医学分割的十项全能挑战组织者制作,称为任务8肝船(MSDC-T8)已用于测试和验证。报告的结果具有相同数量的最大时期(75),并且是5倍交叉验证的平均值,表明与OnecyClelr相比,还原速度更快,同时保持验证集的相似甚至更好的损失评分。也许应该早日对峰值LR进行峰值LR的时期,以便可以观察到超级连接的特征。此外,总体结果优于最先进的研究人员,他们为该数据集发布了肝口罩。总而言之,这两个调度程序均适用于医疗分割挑战,尤其是MSDC-T8数据集,并且可以自信地用于迅速收敛的验证损失,而验证损失数量最少。

Machine learning and computer vision techniques have influenced many fields including the biomedical one. The aim of this paper is to investigate the important concept of schedulers in manipulating the learning rate (LR), for the liver segmentation task, throughout the training process, focusing on the newly devised OneCycleLR against the ReduceLRonPlateau. A dataset, published in 2018 and produced by the Medical Segmentation Decathlon Challenge organizers, called Task 8 Hepatic Vessel (MSDC-T8) has been used for testing and validation. The reported results that have the same number of maximum epochs (75), and are the average of 5-fold cross-validation, indicate that ReduceLRonPlateau converges faster while maintaining a similar or even better loss score on the validation set when compared to OneCycleLR. The epoch at which the peak LR occurs perhaps should be made early for the OneCycleLR such that the super-convergence feature can be observed. Moreover, the overall results outperform the state-of-the-art results from the researchers who published the liver masks for this dataset. To conclude, both schedulers are suitable for medical segmentation challenges, especially the MSDC-T8 dataset, and can be used confidently in rapidly converging the validation loss with a minimal number of epochs.

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