A Deep Neural Network for Fast Confocal Laser Scanning Microscopy Imaging Recovery Algorithm from Random Undersampling Measurements

碩士 === 國立臺灣大學 === 電機工程學研究所 === 105 === Confocal laser scanning microscopy (CLSM) is a powerful non-destructive optical inspection system in high precision measurement technology. CLSM can be used to construct three-dimensional profile of biological cells or micro and sub-micro engineering materials....

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Main Authors: Kuang-Yao Chang, 張光耀
Other Authors: 傅立成
Format: Others
Language:en_US
Published: 2017
Online Access:http://ndltd.ncl.edu.tw/handle/avr4ue
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spelling ndltd-TW-105NTU054420182019-05-15T23:39:36Z http://ndltd.ncl.edu.tw/handle/avr4ue A Deep Neural Network for Fast Confocal Laser Scanning Microscopy Imaging Recovery Algorithm from Random Undersampling Measurements 深度類神經網路實現快速共軛焦雷射掃描顯微鏡縮減隨機取樣影像還原演算法 Kuang-Yao Chang 張光耀 碩士 國立臺灣大學 電機工程學研究所 105 Confocal laser scanning microscopy (CLSM) is a powerful non-destructive optical inspection system in high precision measurement technology. CLSM can be used to construct three-dimensional profile of biological cells or micro and sub-micro engineering materials. Recently, compressive sensing (CS) is applied to CLSM system for high speed scan by reducing the amount of sampled data required to reconstruct an accurate image. However, the CS recovery algorithm employed in CLSM applications is iteration-based optimization method of which computation complexity is relatively high. In this work, a non-iteration-based deep residual convolutional neural network compressive sensing reconstruction (DRCNN-CSR) framework in end-to-end manner is proposed. Not only the computation time but also the quality of reconstructed image is greatly improved with this algorithm, and our method has an ability to recover images sampled under multi-undersampling rates (USRs) in single trained model. The quantitative comparisons with state-of-the-art CS recovery algorithms are provided, and the experiment results demonstrate that our proposed method outperforms the others under a wide range of under-sampling rates. Furthermore, in order to deal with the uneven sample information density problem, we also propose an adaptive undersampling rate strategy to adjust the under-sampling rate in different local areas. At the end, by the reconstructions of the real CLSM measured data in random scanning pattern, the recovery robustness of our model is validated for fast CLSM imaging application. 傅立成 2017 學位論文 ; thesis 89 en_US
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language en_US
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description 碩士 === 國立臺灣大學 === 電機工程學研究所 === 105 === Confocal laser scanning microscopy (CLSM) is a powerful non-destructive optical inspection system in high precision measurement technology. CLSM can be used to construct three-dimensional profile of biological cells or micro and sub-micro engineering materials. Recently, compressive sensing (CS) is applied to CLSM system for high speed scan by reducing the amount of sampled data required to reconstruct an accurate image. However, the CS recovery algorithm employed in CLSM applications is iteration-based optimization method of which computation complexity is relatively high. In this work, a non-iteration-based deep residual convolutional neural network compressive sensing reconstruction (DRCNN-CSR) framework in end-to-end manner is proposed. Not only the computation time but also the quality of reconstructed image is greatly improved with this algorithm, and our method has an ability to recover images sampled under multi-undersampling rates (USRs) in single trained model. The quantitative comparisons with state-of-the-art CS recovery algorithms are provided, and the experiment results demonstrate that our proposed method outperforms the others under a wide range of under-sampling rates. Furthermore, in order to deal with the uneven sample information density problem, we also propose an adaptive undersampling rate strategy to adjust the under-sampling rate in different local areas. At the end, by the reconstructions of the real CLSM measured data in random scanning pattern, the recovery robustness of our model is validated for fast CLSM imaging application.
author2 傅立成
author_facet 傅立成
Kuang-Yao Chang
張光耀
author Kuang-Yao Chang
張光耀
spellingShingle Kuang-Yao Chang
張光耀
A Deep Neural Network for Fast Confocal Laser Scanning Microscopy Imaging Recovery Algorithm from Random Undersampling Measurements
author_sort Kuang-Yao Chang
title A Deep Neural Network for Fast Confocal Laser Scanning Microscopy Imaging Recovery Algorithm from Random Undersampling Measurements
title_short A Deep Neural Network for Fast Confocal Laser Scanning Microscopy Imaging Recovery Algorithm from Random Undersampling Measurements
title_full A Deep Neural Network for Fast Confocal Laser Scanning Microscopy Imaging Recovery Algorithm from Random Undersampling Measurements
title_fullStr A Deep Neural Network for Fast Confocal Laser Scanning Microscopy Imaging Recovery Algorithm from Random Undersampling Measurements
title_full_unstemmed A Deep Neural Network for Fast Confocal Laser Scanning Microscopy Imaging Recovery Algorithm from Random Undersampling Measurements
title_sort deep neural network for fast confocal laser scanning microscopy imaging recovery algorithm from random undersampling measurements
publishDate 2017
url http://ndltd.ncl.edu.tw/handle/avr4ue
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