Deep CNNs for microscopic image classification by exploiting transfer learning and feature concatenation

Long D. Nguyen, Dongyun Lin, Zhiping Lin, Jiuwen Cao
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引用次数: 172

Abstract

Deep convolutional neural networks (CNNs) have become one of the state-of-the-art methods for image classification in various domains. For biomedical image classification where the number of training images is generally limited, transfer learning using CNNs is often applied. Such technique extracts generic image features from nature image datasets and these features can be directly adopted for feature extraction in smaller datasets. In this paper, we propose a novel deep neural network architecture based on transfer learning for microscopic image classification. In our proposed network, we concatenate the features extracted from three pretrained deep CNNs. The concatenated features are then used to train two fully-connected layers to perform classification. In the experiments on both the 2D-Hela and the PAP-smear datasets, our proposed network architecture produces significant performance gains comparing to the neural network structure that uses only features extracted from single CNN and several traditional classification methods.
利用迁移学习和特征拼接的深度cnn用于显微图像分类
深度卷积神经网络(cnn)已经成为各个领域图像分类的最新方法之一。对于训练图像数量有限的生物医学图像分类,通常使用cnn进行迁移学习。该技术从自然图像数据集中提取通用的图像特征,这些特征可以直接用于较小数据集的特征提取。在本文中,我们提出了一种新的基于迁移学习的用于显微图像分类的深度神经网络架构。在我们提出的网络中,我们将从三个预训练的深度cnn中提取的特征连接起来。然后使用连接的特征来训练两个完全连接的层来执行分类。在2D-Hela和PAP-smear数据集上的实验中,与仅使用从单个CNN提取的特征和几种传统分类方法的神经网络结构相比,我们提出的网络结构产生了显着的性能提升。
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