Robust Motion Estimation and Structure Recovery from Endoscopic Image Sequences With an Adaptive Scale Kernel Consensus Estimator.

Hanzi Wang, Daniel Mirota, Masaru Ishii, Gregory D Hager
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引用次数: 49

Abstract

To correctly estimate the camera motion parameters and reconstruct the structure of the surrounding tissues from endoscopic image sequences, we need not only to deal with outliers (e.g., mismatches), which may involve more than 50% of the data, but also to accurately distinguish inliers (correct matches) from outliers. In this paper, we propose a new robust estimator, Adaptive Scale Kernel Consensus (ASKC), which can tolerate more than 50 percent outliers while automatically estimating the scale of inliers. With ASKC, we develop a reliable feature tracking algorithm. This, in turn, allows us to develop a complete system for estimating endoscopic camera motion and reconstructing anatomical structures from endoscopic image sequences. Preliminary experiments on endoscopic sinus imagery have achieved promising results.

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基于自适应尺度核一致估计的内窥镜图像序列鲁棒运动估计与结构恢复。
为了从内窥镜图像序列中正确估计相机运动参数并重建周围组织的结构,我们不仅需要处理可能涉及50%以上数据的异常值(例如,不匹配),还需要准确区分异常值(正确匹配)和异常值。在本文中,我们提出了一种新的鲁棒估计器,自适应尺度核共识(ASKC),它可以容忍超过50%的离群值,同时自动估计内线的规模。利用ASKC,我们开发了一种可靠的特征跟踪算法。这反过来又使我们能够开发一个完整的系统,用于估计内窥镜相机运动和从内窥镜图像序列重建解剖结构。鼻窦内窥镜成像的初步实验取得了可喜的结果。
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