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HEp-2 Cell Image Classification With Deep Convolutional Neural Networks

机译:深度卷积神经网络的HEp-2细胞图像分类

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摘要

Efficient Human Epithelial-2 cell image classification can facilitate the diagnosis of many autoimmune diseases. This paper proposes an automatic framework for this classification task, by utilizing the deep convolutional neural networks (CNNs) which have recently attracted intensive attention in visual recognition. In addition to describing the proposed classification framework, this paper elaborates several interesting observations and findings obtained by our investigation. They include the important factors that impact network design and training, the role of rotation-based data augmentation for cell images, the effectiveness of cell image masks for classification, and the adaptability of the CNN-based classification system across different datasets. Extensive experimental study is conducted to verify the above findings and compares the proposed framework with the well-established image classification models in the literature. The results on benchmark datasets demonstrate that 1) the proposed framework can effectively outperform existing models by properly applying data augmentation, 2) our CNN-based framework has excellent adaptability across different datasets, which is highly desirable for cell image classification under varying laboratory settings. Our system is ranked high in the cell image classification competition hosted by ICPR 2014.
机译:高效的人类上皮2细胞图像分类可以促进许多自身免疫性疾病的诊断。本文利用最近在视觉识别中引起广泛关注的深度卷积神经网络(CNN),提出了用于此分类任务的自动框架。除了描述拟议的分类框架外,本文还详细阐述了一些有趣的观察结果和通过我们的调查获得的发现。它们包括影响网络设计和培训的重要因素,基于旋转的细胞图像数据增强在细胞图像中的作用,细胞图像蒙版用于分类的有效性以及基于CNN的分类系统在不同数据集中的适应性。进行了广泛的实验研究,以验证上述发现,并将所提出的框架与文献中已建立的图像分类模型进行比较。基准数据集上的结果表明:1)所提出的框架可以通过适当地应用数据增强有效地胜过现有模型; 2)我们基于CNN的框架在不同数据集上具有出色的适应性,这对于在不同实验室设置下进行细胞图像分类非常需要。我们的系统在ICPR 2014主办的细胞图像分类比赛中排名很高。

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