Feature learning using Stacked Autoencoder for Multimodal Fusion, Shared and Cross Learning on Medical Images

Z. Islam, Vikas Singh, N. Verma
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引用次数: 1

Abstract

The analysis of medical images and to find meaningful patterns in it is a cumbersome task, even with the use of techniques of Computer Vision when the dataset is very large. In such a situation deep learning is a handy tool, because of its ability to learn and extract meaningful patterns and features from the images. The use of multiple modalities of training data to train system has been in practice for conventional machine learning algorithms. Here, in this paper, we are going to present a Deep Learning based architecture for extraction of features from large training set of medical images. The deep learning model is tested against conventional techniques by performing Multimodal fusion, Shared Learning and Cross Learning on it. It was found out that Deep Learning model performs superior than the conventional techniques in multimodal fusion and shared learning settings.
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基于堆叠自编码器的医学图像多模态融合、共享和交叉学习特征学习
即使在数据集非常大的情况下,使用计算机视觉技术对医学图像进行分析并从中找到有意义的模式也是一项繁琐的任务。在这种情况下,深度学习是一个方便的工具,因为它能够从图像中学习和提取有意义的模式和特征。在传统的机器学习算法中,使用多种模式的训练数据来训练系统已经在实践中。在本文中,我们将提出一种基于深度学习的架构,用于从大型医学图像训练集中提取特征。通过对深度学习模型进行多模态融合、共享学习和交叉学习,对深度学习模型进行了测试。研究发现,深度学习模型在多模态融合和共享学习环境下的性能优于传统技术。
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