[口头报告]Green Fluorescent Protein and Phase Contrast Image Fusion via Dual Attention Residual Network

Green Fluorescent Protein and Phase Contrast Image Fusion via Dual Attention Residual Network
编号:102 稿件编号:22 访问权限:仅限参会人 更新:2021-11-08 20:56:52 浏览:613次 口头报告

报告开始:2021年11月13日 15:40 (Asia/Shanghai)

报告时间:15min

所在会议:[PS1] Plenary Session 1 » [NM1] Workshop on NM Session 1

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摘要
In cell and molecular biology, the green fluorescent protein (GFP) image contains functional information related to the molecular distribution of living cells while the phase contrast image provides high-resolution structural information for targets like nucleus and mitochondria. Fusion of GFP and phase contrast images is conducive to many related fields such as subcellular structure localization and protein functional analysis. In this paper, we propose a deep learning (DL)-based GFP and phase contrast image fusion method via a dual attention residual network (DARN) that consists of a series of dual attention residual blocks (DARBs). In each DARB, a channel attention module (CAM) and a spatial attention module (SAM) are simultaneously integrated into a residual architecture, aiming to achieve high capability in extracting source information from the input images. The proposed network is trained in an unsupervised manner by a loss function which takes the characteristics of both GFP and phase contrast images into account. In comparison to most existing GFP and phase contrast image fusion methods that are based on conventional image transforms, the proposed method owns an end-to-end framework and avoids manually devising image decomposition approaches as well as coefficient fusion strategies. Experimental results on the Arabidopsis thaliana cell database released by John Innes Centre demonstrate that the proposed method outperforms several typical and state-of-the-art methods in terms of both visual quality and objective assessment.
关键字
Green fluorescent protein,phase contrast,image fusion,attention mechanism,residual network
报告人
Lei Wang
HeFei University of Technology

合肥工业大学生物医学工程在读硕士。
研究兴趣:计算机视觉、图像融合

稿件作者
Wei Tang HeFei University of Technology
Lei Wang HeFei University of Technology
Yu Liu HeFei University of Technology
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重要日期

摘要提交日期:

2021/08/31

2021/10/25

全文投稿日期:  

2021/09/15

2021/10/25

录取通知日期: 

2021/09/30

2021/11/01

会议日期:   2021-11-12-2021-11-14

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