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Wide-Baseline Dense Feature Matching for Endoscopic Images

机译:内窥镜图像的宽基线密集特征匹配

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摘要

Providing a feature-matching strategy to accurately recover tracked features after a fast and large endoscopic-camera motion or a strong organ deformation, is key in many endoscopic-imaging applications, such as augmented reality or soft-tissue shape recovery. Despite recent advances, existing feature-matching algorithms are characterized by limiting assumptions, and have not yet met the necessary levels of accuracy, especially when used to recover features in distorted or poorly-textured tissue areas. In this paper, we present a novel feature-matching algorithm that accurately recovers the position of image features over the entire organ's surface. Our method is fully automatic, it does not require any explicit assumption about the organ's 3-D surface, and leverages Gaussian Process Regression to incorporate noisy matches in a probabilistically sound way. We have conducted extensive tests with a large database of more than 100 endoscopic-image pairs, which show the improved accuracy and robustness of our approach when compared to current state-of-the-art methods.
机译:在许多内窥镜成像应用(例如增强现实或软组织形状恢复)中,提供一种特征匹配策略以在快速且较大的内窥镜相机运动或强烈的器官变形后准确恢复所跟踪的特征是关键。尽管有最新进展,但是现有特征匹配算法的特征在于局限性​​假设,并且尚未达到必要的准确性水平,尤其是当用于恢复变形或纹理较差的组织区域中的特征时。在本文中,我们提出了一种新颖的特征匹配算法,可以准确地恢复整个器官表面图像特征的位置。我们的方法是全自动的,不需要对器官的3-D表面进行任何明确的假设,并且利用高斯过程回归以概率合理的方式结合了噪声匹配。我们已经对包含100多个内窥镜图像对的大型数据库进行了广泛的测试,与当前的最新技术相比,这些数据库显示出我们的方法具有更高的准确性和鲁棒性。

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