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基于调制 Gabor 和卷积神经网络的高光谱成像血液细胞分类。

Blood Cell Classification Based on Hyperspectral Imaging With Modulated Gabor and CNN.

出版信息

IEEE J Biomed Health Inform. 2020 Jan;24(1):160-170. doi: 10.1109/JBHI.2019.2905623. Epub 2019 Mar 18.

Abstract

Cell classification, especially that of white blood cells, plays a very important role in the field of diagnosis and control of major diseases. Compared to traditional optical microscopic imaging, hyperspectral imagery, combined with both spatial and spectral information, provides more wealthy information for recognizing cells. In this paper, a novel blood cell classification framework, which combines a modulated Gabor wavelet and deep convolutional neural network (CNN) kernels, named as MGCNN, is proposed based on medical hyperspectral imaging. For each convolutional layer, multi-scale and orientation Gabor operators are taken dot product with initial CNN kernels. The essence is to transform the convolutional kernels into the frequency domain to learn features. By combining characteristics of Gabor wavelets, the features learned by modulated kernels at different frequencies and orientations are more representative and discriminative. Experimental results demonstrate that the proposed model can achieve better classification performance than traditional CNNs and widely used support vector machine approaches, especially as training small-sample-size situations.

摘要

细胞分类,尤其是白细胞分类,在重大疾病的诊断和控制领域发挥着非常重要的作用。与传统的光学显微成像相比,高光谱图像结合了空间和光谱信息,为识别细胞提供了更丰富的信息。本文基于医学高光谱成像,提出了一种新的血细胞分类框架,该框架结合了调制的 Gabor 小波和深度卷积神经网络(CNN)核,称为 MGCNN。对于每个卷积层,多尺度和方向的 Gabor 算子与初始 CNN 核进行点积。本质上是将卷积核转换到频域以学习特征。通过结合 Gabor 小波的特征,调制核在不同频率和方向上学习到的特征更具代表性和可区分性。实验结果表明,与传统的 CNN 和广泛使用的支持向量机方法相比,所提出的模型可以实现更好的分类性能,特别是在训练小样本情况时。

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