A Review on Few-shot Learning for Medical Image Segmentation

Yeong-Jun Kim, Donggoo Kang, Yeongheon Mok, Sunkyu Kwon, J. Paik
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引用次数: 1

Abstract

Deep-learning based approach has solved various medical imaging problems successfully. Since the lack of training data issues caused by patient privacy, the few-shot learning method has been studied widely. However, this issue still afflicts model performance even in few-shot learning methods. To solve this issue, it is important to quickly optimize the initial parameter values using a small amount of data. In addition, to utilize small data effectively, it is important to design the objective function for segmentation suitable for GT (Ground Truth) with few-shots. In this paper, we experiment with various algorithms using the MAML (Model Agnostic Meta-Learning) method. And we propose an optimal few-shot semantic segmentation network. The proposed method uses a gradient descent algorithm and optimizer parameter decomposition method to ensure fast convergence with fewer data. Experimental results show high performance and fast convergence using fewer datasets than conventional methods.
医学图像分割中少镜头学习的研究进展
基于深度学习的方法已经成功地解决了各种医学成像问题。由于缺乏训练数据导致的患者隐私问题,少针学习方法得到了广泛的研究。然而,即使在少量的学习方法中,这个问题仍然困扰着模型的性能。为了解决这个问题,使用少量数据快速优化初始参数值是很重要的。此外,为了有效地利用小数据,设计适合少量拍摄的GT (Ground Truth)分割的目标函数是很重要的。在本文中,我们使用MAML(模型不可知论元学习)方法实验了各种算法。提出了一种最优的少镜头语义分割网络。该方法采用梯度下降算法和优化器参数分解方法,以保证在较少的数据下快速收敛。实验结果表明,与传统方法相比,使用更少的数据集具有更高的性能和更快的收敛速度。
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