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Estimating Motion Parameters Using a Flexible Weight Function

机译:使用弹性权重函数估算运动参数

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In this paper, we propose a method to estimate affine motion parameters from consecutive images with the assumption that the motion in progress can be characterized by an affine model. The motion may be caused either by a moving camera or moving object. The proposed method first extracts motion vectors from a sequence of images and then processes them by adaptive robust estimation to obtain affine parameters. Typically, a robust estimation filters out outliers (velocity vectors that do not fit into the model) by fitting velocity vectors to a predefined model. To filter out potential outliers, our adaptive robust estimation defines a flexible weight function based on a sigmoid function. During the estimation process, we tune the sigmoid function gradually to its hard-limit as the errors between the input data and the estimation model are decreased, so that we can effectively separate non-outliers from outliers with the help of the finally tuned hard-limit form of the weight function. The experimental results show that the suggested approach is very effective in estimating affine parameters.
机译:在本文中,我们提出了一种从连续图像估计仿射运动参数的方法,并假设正在进行的运动可以通过仿射模型来表征。运动可能是由移动的相机或移动的物体引起的。所提出的方法首先从图像序列中提取运动矢量,然后通过自适应鲁棒估计对其进行处理以获得仿射参数。通常,通过将速度矢量拟合到预定义的模型,鲁棒估计会滤除异常值(不适合模型的速度矢量)。为了滤除潜在的异常值,我们的自适应鲁棒估计定义了基于S型函数的灵活权重函数。在估算过程中,随着输入数据和估算模型之间的误差减小,我们将S型函数逐渐调整到其硬极限,以便借助最终调整的硬模型,可以有效地将非离群值与离群值分开权重函数的极限形式。实验结果表明,该方法在估计仿射参数方面非常有效。

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