A Hybrid Cnn-Rf Method for Electron Microscopy Images Segmentation

Guibao Cao, Shuangling Wang, B. Wei, Yilong Yin, Gongping Yang
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引用次数: 17

Abstract

To get new insights into the function and structure of the brain,neuroanatomists need to build 3D reconstructions of brain tissue from electron microscopy (EM) images. One key step towards this is to get automatic segmentation of neuronal structures depicted in stacks of electron microscopy images. However, due to the visual complex appearance of neuronal structures, it is challenging to automatically segment membranes in the EM images. Based on Convolutional Neural Network (CNN) and Random Forest classifier (RF), a hybrid CNN-RF method for EM neuron segmentation is presented. CNN as a feature extractor is trained firstly, and then well behaved features are learned with the trained feature extractor automatically. Finally, Random Forest classifier is trained on the learned features to perform neuron segmentation. Experiments have been conducted on the benchmarks for the ISBI2012 EM Segmentation Challenge, and the proposed method achieves the effectiveness results: The Rand error, Warping error and Pixel error attains to 0.109388991, 0.001455688 and 0.072129307, respectively.
一种用于电子显微镜图像分割的Cnn-Rf混合方法
为了获得对大脑功能和结构的新见解,神经解剖学家需要从电子显微镜(EM)图像中构建脑组织的3D重建。实现这一目标的关键一步是对电子显微镜图像中描绘的神经元结构进行自动分割。然而,由于神经元结构在视觉上的复杂外观,在EM图像中自动分割膜是一个挑战。基于卷积神经网络(CNN)和随机森林分类器(RF),提出了一种用于EM神经元分割的CNN-RF混合方法。首先训练CNN作为特征提取器,然后用训练好的特征提取器自动学习表现良好的特征。最后,根据学习到的特征训练随机森林分类器进行神经元分割。在ISBI2012 EM分割挑战的基准上进行了实验,得到了有效的结果:Rand误差、Warping误差和Pixel误差分别达到0.109388991、0.001455688和0.072129307。
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