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首页> 外文期刊>IEEE Transactions on Medical Imaging >3D Neuron Microscopy Image Segmentation via the Ray-Shooting Model and a DC-BLSTM Network
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3D Neuron Microscopy Image Segmentation via the Ray-Shooting Model and a DC-BLSTM Network

机译:通过光线拍摄模型和DC-BLSTM网络的3D神经元显微镜图像分割

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摘要

The morphology reconstruction (tracing) of neurons in 3D microscopy images is important to neuroscience research. However, this task remains very challenging because of the low signal-to-noise ratio (SNR) and the discontinued segments of neurite patterns in the images. In this paper, we present a neuronal structure segmentation method based on the ray-shooting model and the Long Short-Term Memory (LSTM)-based network to enhance the weak-signal neuronal structures and remove background noise in 3D neuron microscopy images. Specifically, the ray-shooting model is used to extract the intensity distribution features within a local region of the image. And we design a neural network based on the dual channel bidirectional LSTM (DC-BLSTM) to detect the foreground voxels according to the voxel-intensity features and boundary-response features extracted by multiple ray-shooting models that are generated in the whole image. This way, we transform the 3D image segmentation task into multiple 1D ray/sequence segmentation tasks, which makes it much easier to label the training samples than many existing Convolutional Neural Network (CNN) based 3D neuron image segmentation methods. In the experiments, we evaluate the performance of our method on the challenging 3D neuron images from two datasets, the BigNeuron dataset and the Whole Mouse Brain Sub-image (WMBS) dataset. Compared with the neuron tracing results on the segmented images produced by other state-of-the-art neuron segmentation methods, our method improves the distance scores by about 32% and 27% in the BigNeuron dataset, and about 38% and 27% in the WMBS dataset.
机译:3D显微镜图像中神经元的形态重建(追踪)对神经科学研究很重要。但是,由于低信噪比(SNR)和图像中的神经元模式的已停止片段,此任务仍然非常具有挑战性。在本文中,我们介绍了一种基于光线拍摄模型的神经元结构分割方法和基于长短期存储器(LSTM)的网络,以增强弱信号神经元结构并去除3D神经元显微镜图像中的背景噪声。具体地,光线拍摄模型用于提取图像的局部区域内的强度分布特征。并且我们根据双通道双向LSTM(DC-BLSTM)设计一个神经网络,以根据体素 - 强度特征和由整个图像中产生的多个光线拍摄模型提取的边界响应特征来检测前景体素。这样,我们将3D图像分割任务转换为多个1D射线/序列分割任务,这使得标记训练样本比基于许多基于卷积神经网络(CNN)的3D神经元图像分割方法更容易。在实验中,我们评估我们的方法对来自两个数据集,Bigneuron数据集和整个鼠标脑子图像(WMBS)数据集的挑战3D神经元图像的性能。与由其他最先进的神经元分段方法产生的分段图像上的神经元跟踪结果相比,我们的方法将距离分数提高了距离呋喃数据集的32%和27%,约38%和27% WMBS数据集。

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