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Planar approximation of three-dimensional data for refinement of marker-based tracking algorithm

机译:基于标记的跟踪算法改进三维数据的平面逼近

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Reference markers still are required to achieve the highest accuracy in tracking applications. Geometrical patterns allow precisely recognizing objects in image processing techniques. However, researchers are looking for new techniques for the minimization of the error. Post-processing stage was implemented for the refinement of the 3D coordinates computed for flat markers. In our application the flat markers are recognized with digital cameras through corner detection. Later, the points are paired and the corners are reconstructed forming a set of connected 3D points. Inevitably, the reconstruction algorithm introduces a spatial error dislocating the points from the original plane of the flat mark. The overall objective in this paper is to generate the best fitting plane for the 3D points which it was confirmed it produces a better approximation to the original flat marker. At this stage the measured points can be projected to the best fitting plane to be treated like fixed points. PCA was used for finding the best fitting plane. Finally, the influence of the method was evaluated in measurements of an underdevelopment image guided surgery system obtaining an error reduction of 17%.
机译:参考标记仍然是在跟踪应用中实现最高精度的。几何图案允许精确地识别图像处理技术中的对象。然而,研究人员正在寻找最小化错误的新技术。实施后处理阶段为用于平面标记计算的3D坐标的改进。在我们的应用中,通过角落检测使用数码相机识别出平标记。稍后,该点配对,并且角落被重建形成一组连接的3D点。不可避免地,重建算法引入了空间误差从平坦标记的原始平面脱离的空间误差。本文的整体目标是为确认它产生的3D点产生最佳拟合平面,其产生与原始扁平标记的更好近似值。在该阶段,测量点可以投影到最佳的配合平面,以便像固定点一样处理。 PCA用于找到最合适的平面。最后,在欠发达的图像引导手术系统的测量中评估了该方法的影响获得17%的误差。

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