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Silhouette measurements for Bayesian object tracking in noisy point clouds

机译:噪声点云中贝叶斯目标跟踪的轮廓测量

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In this paper, we consider the problem of jointly tracking the pose and shape of objects based on noisy data from cameras and depth sensors. Our proposed approach formalizes object silhouettes from image data as measurements within a Bayesian estimation framework. Projecting object silhouettes from images back into space yields a visual hull that constrains the object. In this work, we focus on the 2D case. We derive a general equation for the silhouette measurement update that explicitly considers segmentation uncertainty of each pixel. By assuming a bounded error for the silhouettes, we can reduce the complexity of the general solution to only consider uncertain edges and derive an approximate measurement update. In simulations, we show that the proposed approach dramatically improves point-cloud-based estimators, especially in the presence of high noise.
机译:在本文中,我们考虑了基于来自摄像头和深度传感器的嘈杂数据共同跟踪对象的姿态和形状的问题。我们提出的方法将来自图像数据的对象轮廓正式化为贝叶斯估计框架内的测量值。将对象轮廓从图像投影回空间会产生约束对象的可视外壳。在这项工作中,我们专注于2D情况。我们为轮廓测量更新推导出一个通用方程,该方程明确考虑了每个像素的分割不确定性。通过假设轮廓的有界误差,我们可以降低仅考虑不确定边缘并得出近似测量值更新的一般解决方案的复杂性。在仿真中,我们表明,所提出的方法显着改善了基于点云的估计器,尤其是在存在高噪声的情况下。

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