An Exploration of Data Augmentation Techniques in Ensemble Learning for Medical Image Segmentation with Transfer Learning

Swati Singh, Namit Gupta, Febin Prakash
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Abstract

this paper examines using data augmentation strategies in the ensemble, getting to know medical photo segmentation with transfer learning. Various transfer-gaining knowledge of techniques, namely pretrained models, unsupervised function mastering, and multitasking studying, are explored. Pre-skilled models are skilled in one area and further high-quality-tuned using information from any other area to enhance segmentation overall performance. Unsupervised characteristic learning creates a common characteristic space that encodes the shared styles between numerous datasets. Multitask mastering combines challenge-particular multitasking getting to know, and feature-particular studying into a single, more accurate version. Records augmentation strategies unique to scientific photos, such as random cropping, random flipping, random rotation, and affine transformation, are mentioned. The effectiveness of different records augmentation strategies is evaluated on several scientific datasets, such as liver and lung datasets. Effects show combining statistics augmentation techniques with ensemble learning can drastically enhance segmentation accuracy. The look presents further evidence that information augmentation strategies can correctly be used for the clinical image segmentation venture.
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利用迁移学习进行医学图像分割的集合学习中的数据增强技术探索
本文研究了在集合中使用数据增强策略,通过迁移学习了解医学照片分割。本文探讨了各种迁移知识技术,即预训练模型、无监督函数掌握和多任务学习。预训练模型熟练掌握一个领域,并利用其他领域的信息进一步进行高质量调整,以提高分割的整体性能。无监督特征学习创建了一个共同的特征空间,对众多数据集之间的共享风格进行编码。多任务掌握将特定挑战的多任务了解和特定特征的学习结合成一个更准确的版本。文中提到了科学照片特有的记录增强策略,如随机裁剪、随机翻转、随机旋转和仿射变换。在几个科学数据集(如肝脏和肺部数据集)上评估了不同记录增强策略的有效性。结果表明,将统计增强技术与集合学习相结合,可以大大提高分割的准确性。该研究进一步证明,信息增强策略可正确用于临床图像分割研究。
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