Deep Convolutional Neural Network-based Automatic Detection of Brain Tumour

Indraneel Paul, Adyasha Sahu, P. Das, S. Meher
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引用次数: 5

Abstract

Deep convolutional neural networks (DCNNs) have been extensively studied for different types of detection and classification in the field of biomedical image processing. Many of them have produced results that are on par with or even better than those of radiologists and neurologists. But, the challenge to get good results from such DCNNs is the requirement of large dataset. In this paper, a unique single-model based approach for classifying brain tumours on small dataset is presented in this study. A modified DCNN called the RegNetY-3.2G is used, integrated with regularization DropOut and DropBlock to prevent over-fitting. Furthermore, an improved augmentation technique called the RandAugment is used to lessen the problem of small dataset. Lastly, MWNL (Multi-Weighted New Loss) method and end to end CLS (cumulative learning strategy) is used to address the problem of unequal size of sample, complexity in the classification and to lessen the effect of aberrant samples on training.
基于深度卷积神经网络的脑肿瘤自动检测
在生物医学图像处理领域,深度卷积神经网络(Deep convolutional neural networks, DCNNs)在不同类型的检测和分类方面得到了广泛的研究。他们中的许多人已经产生了与放射科医生和神经科医生相当甚至更好的结果。但是,从这种DCNNs中获得良好结果的挑战是对大数据集的要求。本文提出了一种独特的基于单一模型的小数据集脑肿瘤分类方法。使用了一种称为RegNetY-3.2G的改进DCNN,集成了正则化DropOut和DropBlock以防止过度拟合。此外,还采用了一种改进的增强技术RandAugment来减少数据集小的问题。最后,利用MWNL (Multi-Weighted New Loss)方法和端到端CLS (cumulative learning strategy)方法解决了样本大小不等、分类复杂的问题,减少了异常样本对训练的影响。
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