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3D Cnn-Based Soma Segmentation from Brain Images at Single-Neuron Resolution

机译:以单神经元分辨率从脑图像中基于3D Cnn的身体分割

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Neuron segmentation is an important task for automatic analyses of brain images that are of huge volume. Previous methods for neuron segmentation rely on handcrafted image features, and have difficulty in coping with high-resolution, low signal-to-noise-ratio brain images. Convolutional neural network (CNN) has achieved remarkable success in natural image segmentation, but CNN requires accurately labeled data for training that are difficult to achieve on brain images of huge volume. In this paper, we present a weakly supervised learning strategy to deal with the inaccurate training data problem, and thus adopt 3D CNN to perform automatic soma segmentation from brain images. We test our method on our own collected mouse brain images that are of single-neuron resolution, and results show that 3D CNN-based method outperforms the traditional methods by a significant margin.
机译:神经元分割是自动分析海量图像的重要任务。用于神经元分割的先前方法依赖于手工制作的图像特征,并且难以应对高分辨率,低信噪比的脑图像。卷积神经网络(CNN)在自然图像分割方面取得了显著成功,但CNN需要精确标记的数据进行训练,而这些数据很难在大体积的大脑图像上实现。在本文中,我们提出了一种弱监督学习策略,以解决训练数据不准确的问题,因此采用3D CNN从大脑图像中进行自动的躯体分割。我们在自己收集的具有单个神经元分辨率的小鼠大脑图像上测试了该方法,结果表明基于3D CNN的方法明显优于传统方法。

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