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An Application Driven Comparison of Several Feature Extraction Algorithms in Bronchoscope Tracking During Navigated Bronchoscopy

机译:导航支气管镜在支气管镜跟踪中几种特征提取算法的应用驱动比较

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This paper compares Kanade-Lucas-Tomasi (KLT), speeded up robust feature (SURF), and scale invariant feature transformation (SIFT) features applied to bronchoscope tracking. In our study, we first use KLT, SURF, or SIFT features and epipolar constraints to obtaininter-frame translation (up to scale) and orientation displacements and Kalman filtering to recover an estimate for the magnitude of the motion (scale factor determination), and then multiply inter-frame motion parameters onto the previous pose of the bronchoscope camera to achieve the predicted pose, which is used to initialize intensity-based image registration to refine the current pose of the bronchoscope camera. We evaluate the KLT-, SURF-, and SIFT-based bronchoscope camera motion tracking methods on patient datasets. According to experimental results, we may conclude that SIFT features are more robust than KLT and SURF features at predicting the bronchoscope motion, and all methods for predicting the bronchoscope camera motion show a significant performance boost compared to sole intensity-based image registration without an additional position sensor.
机译:本文比较了Kanade-Lucas-Tomasi(KLT),加速鲁棒特征(SURF)和比例不变特征变换(SIFT)应用于支气管镜跟踪的特征。在我们的研究中,我们首先使用KLT,SURF或SIFT特征和极点约束来获得帧间平移(按比例缩放)和方向位移以及卡尔曼滤波以恢复运动幅度的估计值(比例因子确定),以及然后将帧间运动参数乘以支气管镜相机的先前姿势,以实现预测的姿势,该姿势用于初始化基于强度的图像配准,以细化支气管镜相机的当前姿势。我们对患者数据集评估了基于KLT,SURF和SIFT的支气管镜相机运动跟踪方法。根据实验结果,我们可以得出结论,在预测支气管镜运动方面,SIFT功能比KLT和SURF功能更强大,并且与基于单独强度的图像配准相比,所有用于预测支气管镜相机运动的方法均具有显着的性能提升位置传感器。

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