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A biological image classification method based on improved CNN

机译:一种基于改进CNN的生物学图像分类方法

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摘要

With the increase of biological images, how to classify them effectively is a challenging problem, the Convolutional Neural Networks (CNNs) show promise for this problem. The challenges of using CNNs to handle images classification lie in two aspects: (1) How to further improve the classification accuracy? (2) How to make the network more light weight? To address the above challenges, this paper proposed a biological image classification method based on improved CNN. In this paper, fixed size images as input of CNN are replaced with appropriately large size images and some modules were replaced with an Inverted Residual Block module with fewer computational cost and parameters. The proposed method extensively evaluated the computational cost and classification accuracy on five well known benchmark datasets, and the results demonstrate that compared with existing image classification methods, proposed method shows better performance image classification and reduces the network parameters and computational cost.
机译:随着生物图像的增加,如何有效地对它们进行分类是一个具有挑战性的问题,卷积神经网络(CNNS)显示了这个问题的承诺。使用CNN来处理图像分类的挑战在两个方面:(1)如何进一步提高分类准确性? (2)如何使网络更轻松?为了解决上述挑战,本文提出了一种基于改进CNN的生物学图像分类方法。在本文中,用适当大尺寸的图像替换为CNN的输入的固定尺寸图像,并用具有较少计算成本和参数的反相残留块模块代替一些模块。所提出的方法在五个公知的基准数据集上广泛地评估了计算成本和分类准确性,结果证明与现有的图像分类方法相比,所提出的方法显示了更好的性能图像分类并降低了网络参数和计算成本。

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