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White Matter Segmentation Algorithm for DTI Images Based on Super-Pixel Full Convolutional Network

机译:基于超像素全卷积网络的DTI图像白质分割算法

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摘要

Diffusion tensor imaging (DTI) is a new imaging method that can be used to non-invasively measure the diffusion coefficient of water molecules in biological tissue structures in recent years. Since the DTI data is a tensor space, its segmentation is different from ordinary MRI images. Based on the existing deep learning model, an improved image semantic segmentation method based on super-pixels and conditional random field is proposed. Firstly, this paper uses the existing feature extraction model based on deep learning to obtain rough semantic segmentation results, including high-level semantic information of the image but lacking details of the image. In addition, the super-pixel segmentation algorithm is implemented to obtain super-pixels that carries more low-level information. Secondly, due to the lack of image details in rough segmentation results, the segmentation of the edge of the image is inaccurate. In this paper, a boundary optimization algorithm is proposed to optimize the edge segmentation accuracy of the rough results. Finally, the use of super-pixels for local boundary optimization can improve the segmentation accuracy. Experiments results show that this segment is a practical and effective method.
机译:扩散张量成像(DTI)是一种新的成像方法,可用于近年来在生物组织结构中的水分子中的水分子中的扩散系数。由于DTI数据是张量空间,因此其分割与普通MRI图像不同。基于现有的深度学习模型,提出了一种基于超像素和条件随机场的改进的图像语义分段方法。首先,本文使用基于深度学习的现有特征提取模型获得粗糙的语义分割结果,包括图像的高电平语义信息但缺乏图像的细节。另外,实现超像素分割算法以获得具有更多低级信息的超像素。其次,由于粗糙分割结果中缺少图像细节,图像边缘的分割是不准确的。本文提出了一种边界优化算法来优化粗糙结果的边缘分割精度。最后,使用超像素用于局部边界优化可以提高分割精度。实验结果表明,该段是一种实用且有效的方法。

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