F. Kofler, Suprosanna Shit, I. Ezhov, L. Fidon, Rami Al-Maskari, Hongwei Li, H. Bhatia, T. Loehr, M. Piraud, Ali Erturk, J. Kirschke, J. Peeken, Tom Kamiel Magda Vercauteren, C. Zimmer, B. Wiestler, Bjoern H Menze
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引用次数: 8
摘要
深度卷积神经网络(CNN)在语义分割任务中已经被证明是非常有效的。最流行的损失函数是针对改进的体积分数,如Dice系数(DSC)。通过设计,DSC可以处理类的不平衡,但是,它不能识别类中的实例不平衡。因此,大型前台实例可以支配较小的实例,并且仍然产生令人满意的DSC。然而,检测微小实例对于许多应用程序(如疾病监测)至关重要。例如,在多发性硬化症患者的随访中,定位和监测小范围病变是必不可少的。我们提出了一种新的损失函数,\emph{blob损失},主要目的是最大化实例级检测指标,如F1分数和灵敏度。\emph{Blob损失}是为语义分割问题而设计的,其中检测多个实例很重要。我们在五个复杂的3D语义分割任务中广泛评估了基于dsc的\emph{blob损失},这些任务在纹理和形态方面具有明显的实例异质性。与软骰子损失相比,我们达到了5% improvement for MS lesions, 3% improvement for liver tumor, and an average 2% improvement for microscopy segmentation tasks considering F1 score.
Blob Loss: Instance Imbalance Aware Loss Functions for Semantic Segmentation
Deep convolutional neural networks (CNN) have proven to be remarkably effective in semantic segmentation tasks. Most popular loss functions were introduced targeting improved volumetric scores, such as the Dice coefficient (DSC). By design, DSC can tackle class imbalance, however, it does not recognize instance imbalance within a class. As a result, a large foreground instance can dominate minor instances and still produce a satisfactory DSC. Nevertheless, detecting tiny instances is crucial for many applications, such as disease monitoring. For example, it is imperative to locate and surveil small-scale lesions in the follow-up of multiple sclerosis patients. We propose a novel family of loss functions, \emph{blob loss}, primarily aimed at maximizing instance-level detection metrics, such as F1 score and sensitivity. \emph{Blob loss} is designed for semantic segmentation problems where detecting multiple instances matters. We extensively evaluate a DSC-based \emph{blob loss} in five complex 3D semantic segmentation tasks featuring pronounced instance heterogeneity in terms of texture and morphology. Compared to soft Dice loss, we achieve 5% improvement for MS lesions, 3% improvement for liver tumor, and an average 2% improvement for microscopy segmentation tasks considering F1 score.