2021
DOI: 10.21203/rs.3.rs-249760/v1
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Recognition of Benign and Malignant Breast Ultrasound Images Based on Deep Transfer Learning

Abstract: Manual recognition of breast ultrasound images is a heavy workload for radiologists and misdiagnosis. Traditional machine learning methods and deep learning methods require huge data sets and a lot of time for training. To solve the above problems, this paper had proposed a deep transfer learning method. the transfer learning models ResNet18 and ResNet50 after pre-training on the ImageNet dataset, and the ResNet18 and ResNet50 models without pre-training. The dataset consists of 131 breast ultrasound images (1… Show more

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