Investigating the Effect of Transfer Learning on Medical Image Segmentation Performance

Parag Agarwal, M.S. Nidhya, Trapty Agarwal
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Abstract

This paper investigates the effect of switch studying on clinical photo segmentation performance. Switch learning entails the usage of a pre-trained model as the basis for a new technique for a comparable project. By leveraging pre-educated models, the manner of schooling a version to perform a project can be made greener. This paper evaluates the effect of transfer getting to know on medical photograph segmentation performance in terms of accuracy and speed of schooling. Moreover, the paper compares the overall performance of transfer getting to know and non-switch gaining knowledge of tactics for segmenting the tumors in MRI and CT scans. Effects from the experiments display that transfer learning outperforms non-transfer mastering approaches in the challenge of scientific image segmentation. Further, the paper offers insights into the VGG16 and U-internet architectures and indicates feasible guidelines for in addition research.
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研究迁移学习对医学图像分割性能的影响
本文研究了切换学习对临床照片分割性能的影响。转换学习是指将预先训练好的模型作为类似项目新技术的基础。通过利用预先训练好的模型,可以使学习一个版本来执行一个项目的方式变得更加绿色。本文从准确性和学习速度两方面评估了转移了解对医学照片分割性能的影响。此外,本文还比较了迁移学习和非迁移学习在核磁共振成像和 CT 扫描中分割肿瘤的整体性能。实验结果表明,在科学图像分割的挑战中,迁移学习优于非迁移掌握方法。此外,论文还对 VGG16 和 U-internet 架构提出了见解,并为后续研究指出了可行的指导原则。
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