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Scaling of Texture in Training Autoencoders for Classification of Histological Images of Colorectal Cancer

机译:培训纹理纹理缩放,用于分类结直肠癌的组织学图像

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Autoencoding in deep learning has been known as a useful tool for extracting image features in multiple layers, which are subsequently configured for classification by deep neural networks. A practical burden for the implementation of autoencoders is the time required for training a large number of artificial neurons. This paper shows the effects of scaling of texture in the histology of colorectal cancer, which can result in significant training time reduction being approximately to an exponential function, with improved classification rates.
机译:深度学习中的自动码被称为用于在多个层中提取图像特征的有用工具,随后被配置用于由深神经网络进行分类。实现自身额外的实际负担是培训大量人工神经元所需的时间。本文显示了纹理缩放在结直肠癌组织学中的影响,这可能导致显着的训练时间,大约是指数函数,具有改进的分类率。

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