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Stochastic filtering for motion trajectory in image sequences using a Monte Carlo filter with estimation of hyper-parameters

机译:使用带有超参数估计的蒙特卡罗滤波器对图像序列中的运动轨迹进行随机滤波

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摘要

False matching due to errors in feature extraction and changes in illumination between frames may occur in feature tracking in image sequences. False matching leads to outliers in feature motion trajectory. One way of reducing the effect of outliers is stochastic filtering using a state space model for motion trajectory. Hyper-parameters in the state space model, e.g., variances of noise distributions, must be determined appropriately to control tracking motion and outlier rejection properly. Likelihood can be used to estimate hyper-parameters, but it is difficult to apply online tracking due to computational cost. To estimate hyper-parameters online, we include hyper-parameters in state vector and estimate feature coordinates and hyper-parameters simultaneously. A Monte Carlo filter is used in state estimation, because adding hyper-parameters to state vector makes state space model nonlinear. Experimental results using synthetic data show that the proposed method can estimate appropriate hyper-parameters for tracking motion and reducing the effect of outliers.
机译:在图像序列中进行特征跟踪时,可能会发生由于特征提取错误和帧之间照度变化导致的错误匹配。错误匹配会导致特征运动轨迹出现异常值。减少离群值影响的一种方法是使用状态空间模型进行运动轨迹的随机滤波。必须适当确定状态空间模型中的超参数,例如噪声分布的方差,以适当地控制跟踪运动和离群值抑制。似然性可用于估计超参数,但由于计算量大,因此难以应用在线跟踪。为了在线估计超参数,我们在状态向量中包括超参数,并同时估计特征坐标和超参数。蒙特卡罗滤波器用于状态估计,因为在状态向量中添加超参数会使状态空间模型非线性。使用合成数据进行的实验结果表明,该方法可以估计用于跟踪运动并减少离群值影响的超参数。

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