UTR: UNSUPERVISED LEARNING OF THICKNESS-INSENSITIVE REPRESENTATIONS FOR ELECTRON MICROSCOPE IMAGE
Xin T(辛桐)4,5; Chen BH(陈波昊)4,5; Chen X(陈曦)5; Han H(韩华)1,2,3,5
2021-10
会议日期2021-10
会议地点美国阿拉斯加
关键词Feature Descriptor Unsupervised learning Electron Microscopy Image registration FIB-SEM
英文摘要

Registration of serial section electron microscopy (ssEM) images is essential for neural circuit reconstruction. Morphologies of neurite structure in adjacent sections are different. Thus, it is challenging to extract valid features in ssEM image registration. Convolutional neural networks (CNN)
have made unprecedented progress in feature extraction of natural images. However, morphological differences need not be considered in the registration of natural images. Directly applying these methods will result in matching failure or over-registration. This paper proposes an unsupervised
learning-based representation taking the morphological differences of ssEM images into account. CNN architecture was used to extract the feature. To train the network, the focused ion beam scanning electron microscope (FIB-SEM) images are used. The FIB-SEM images are in situ, so they are naturally registered. Sampling those images with a certain thickness can teach CNN to learn changes in neurite structure. The learned feature can be directly applied to existing ssEM image registration methods and reduce the negative effect of section thickness on registration accuracy. The experimental results show that the proposed feature outperforms the state-of-the-art method in matching accuracy and significantly improves the registration outcome when used in ssEM images.

语种英语
内容类型会议论文
源URL[http://ir.ia.ac.cn/handle/173211/48583]  
专题类脑智能研究中心_微观重建与智能分析
通讯作者Han H(韩华)
作者单位1.中国科学院脑科学与智能技术卓越创新中心
2.中国科学院大学未来技术学院
3.中国科学院自动化研究所模式识别国家实验室
4.中国科学院大学人工智能学院
5.中国科学院自动化研究所
推荐引用方式
GB/T 7714
Xin T,Chen BH,Chen X,et al. UTR: UNSUPERVISED LEARNING OF THICKNESS-INSENSITIVE REPRESENTATIONS FOR ELECTRON MICROSCOPE IMAGE[C]. 见:. 美国阿拉斯加. 2021-10.
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