基于深度特征匹配和图像缩放的眼底多模态图像配准

Ju-Chan Kim, D. Le, S. Song, C. Son, Hyunseung Choo
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引用次数: 3

摘要

多模态图像配准是一种将不同图像的异构空间坐标系转换为统一坐标系的技术。这是医学图像分析以及计算机视觉领域的一项基本任务,因为它有助于通过对齐两个或多个图像来全面理解捕获的图像。在眼科领域,注册有利于眼科医生进行临床试验诊断、计划治疗和影像引导手术。然而,常规眼底图像和超宽视场眼底图像的配准是一项具有挑战性的任务,因为这两种图像的尺度差异很大。本文提出了一种基于同一患者眼底两种图像类型的共同特征(如视盘)对图像进行缩放配准的方法。该方法通过图像缩放来减小两幅图像在同质坐标系中的距离,从而提高了多模态图像配准的性能。与传统的深度学习方法相比,该方法提高了13%左右的关键点正确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-modal Fundus Image Registration with Deep Feature Matching and Image Scaling
Multi-modal image registration is a technology that converts heterogeneous spatial coordinate systems of different images into one unified coordinate system. This is a fundamental task of medical image analysis as well as computer vision domain because it facilitates a comprehensive understanding of images captured by aligning two or more images. In the field of ophthalmology, the registration is beneficial for ophthalmologists in clinical trial diagnosis, plan treatment, and image-guided surgery. However, registering for two types of fundus image, including conventional and ultra-wide-field fundus images, is a challenging task due to the highly difference in scales of the images. The paper proposes a method of scaling and register images based on common features (e.g., optic disc) of the two fundus image types taken from the same patient. This method improves the performance of multi-modal image registration by reducing the distance in the homogeneous coordinate system of two images through image scaling. The proposed method improves about 13% correct keypoints compared to the conventional deep learning method.
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