Data Augmentation Methods For Object Detection and Segmentation In Ultrasound Scans: An Empirical Comparative Study

Sachintha R. Brandigampala, Abdullah F. Al-Battal, Truong Q. Nguyen
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Abstract

In ultrasound imaging, sonographers are tasked with analyzing scans for diagnostic purposes; a challenging task, especially for novice sonographers. Deep Learning methods have shown great potential in their ability to infer semantics and key information from scans to assist with these tasks. However, deep learning methods require large training sets to accomplish tasks such as segmentation and object detection. Generating these large datasets is a significant challenge in the medical domain due to the high cost of acquisition and annotation. Therefore, data augmentation is used to increase the size of training datasets to create the needed variability for deep learning models to generalize. These augmentation methods try to mimic differences among scans that result from noise, tissue movement, acquisition settings, and others. In this paper, we analyze the effectiveness of general augmentation methods that perform color, rigid, and non-rigid geometric transformation, to empirically analyze and compare their ability to improve the performance of three segmentation architectures on three different ultrasound datasets. We observe that non-rigid geometric transformations produce the best performance improvement.
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超声扫描中目标检测与分割的数据增强方法:实证比较研究
在超声成像中,超声技师的任务是分析扫描结果以进行诊断;这是一项具有挑战性的任务,尤其是对超声诊察新手而言。深度学习方法在从扫描中推断语义和关键信息以协助完成这些任务的能力方面显示出巨大的潜力。然而,深度学习方法需要大量的训练集来完成分割和目标检测等任务。由于获取和注释的高成本,在医学领域生成这些大型数据集是一个重大挑战。因此,数据增强用于增加训练数据集的大小,以创建深度学习模型进行泛化所需的可变性。这些增强方法试图模拟由噪声、组织运动、采集设置等引起的扫描差异。在本文中,我们分析了执行彩色、刚性和非刚性几何变换的一般增强方法的有效性,以经验分析和比较它们在三种不同超声数据集上提高三种分割架构性能的能力。我们观察到非刚性几何变换产生最佳的性能改进。
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