Cell Image Segmentation by Integrating Multiple CNNs

Yuki Hiramatsu, K. Hotta, Ayako Imanishi, M. Matsuda, Kenta Terai
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引用次数: 16

Abstract

Convolutional Neural Network is valid for segmentation of objects in an image. In recent years, it is beginning to be applied to the field of medicine and cell biology. In semantic segmentation, the accuracy has been improved by using single deeper neural network. However, the accuracy is saturated for difficult segmentation tasks. In this paper, we propose a semantic segmentation method by integrating multiple CNNs adaptively. This method consists of a gating network and multiple expert networks. Expert network outputs the segmentation result for an input image. Gating network automatically divides the input image into several sub-problems and assigns them to expert networks. Thus, each expert network solves only the specific problem, and our proposed method is possible to learn more efficiently than single deep neural network. We evaluate the proposed method on the segmentation problem of cell membrane and nucleus. The proposed method improved the segmentation accuracy in comparison with single deep neural network.
集成多个cnn的细胞图像分割
卷积神经网络对图像中物体的分割是有效的。近年来,它开始应用于医学和细胞生物学领域。在语义分割中,利用单个深层神经网络提高了准确率。然而,对于困难的分割任务,其精度已经饱和。本文提出了一种自适应集成多个cnn的语义分割方法。该方法由一个门控网络和多个专家网络组成。专家网络输出输入图像的分割结果。门控网络将输入图像自动划分为若干子问题并分配给专家网络。因此,每个专家网络只解决特定的问题,我们提出的方法可能比单个深度神经网络更有效地学习。我们对该方法在细胞膜和细胞核的分割问题上进行了评价。与单一深度神经网络相比,该方法提高了分割精度。
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