基于深度卷积特征的荧光-彩色图像配准

Xingxing Liu, Tri Quang, Wenxiang Deng, Yang Liu
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引用次数: 0

摘要

荧光成像已广泛应用于各种临床应用。作为一种功能成像方式,近红外荧光成像往往不能提供足够的结构细节。因此,结构成像,如彩色反射叠加荧光成像是外科可视化的一种优越方法。为了实现准确的叠加,需要对彩色反射率和近红外荧光图像进行配准。在这项研究中,我们实现了一种基于特征的荧光到彩色图像配准的深度卷积算法。进行软硬件协同设计。在生物组织上进行了几组实验,比较了该算法与传统方法的性能。我们已经证明了基于深度卷积特征的荧光到彩色图像配准的可行性。据我们所知,这是荧光图像和彩色图像之间基于深度学习的图像配准的第一次演示。
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Deep Convolutional Feature-Based Fluorescence-to-Color Image Registration
Fluorescence imaging has been widely utilized in various clinical applications. As a functional imaging modality, NIR fluorescence imaging often does not offer sufficient structural details. Therefore, structural imaging such as color reflectance overlaid with fluorescence imaging represents a superior approach for surgical visualization. Image registration of color reflectance and NIR fluorescence is needed for accurate overlay. In this study, we have implemented a deep convolutional algorithm for feature-based fluorescence-to-color image registration. Software-hardware codesign was conducted. Several sets of experiments were performed on biological tissues to compare the performance of our algorithm and traditional methods. We have demonstrated the feasibility of deep convolutional feature-based fluorescence-to-color image registration. To our best knowledge, this is the first demonstration of deep learning-based image registration between fluorescence and color imageries.
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