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HEp-2 cell classification using a deep neural network trained for natural image classification

机译:使用针对自然图像分类训练的深度神经网络对HEp-2细胞进行分类

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Deep convolutional neural networks is a recently developed method that yields very successful results in image classification. Deep neural networks, which have a high number of parameters, require a large amount of data to avoid overfitting during training. For applications in which the available data is not adequate to train a deep neural network from the scratch, deep neural networks trained for similar objectives can be used as a starting point. In this study, cell images are classified using a deep neural network trained to classify objects in natural images. Even though classification of natural images and cell images are very different objectives, cell images are able to be classified with 74.1% mean class accuracy. The results show that features used for visual classification by deep convolutional neural networks may be more universal than assumed.
机译:深度卷积神经网络是最近开发的一种方法,在图像分类中产生了非常成功的结果。具有大量参数的深度神经网络需要大量数据,以避免在训练过程中过度拟合。对于可用数据不足以从头开始训练深度神经网络的应用,可以将针对相似目标训练的深度神经网络用作起点。在这项研究中,使用经过训练以对自然图像中的对象进行分类的深度神经网络对细胞图像进行分类。即使自然图像和细胞图像的分类是非常不同的目标,细胞图像也能够以74.1%的平均分类精度进行分类。结果表明,深度卷积神经网络用于视觉分类的功能可能比假设的通用。

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