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Accurate stereo visual odometry with gamma distributions

机译:具有伽马分布的精确立体视觉测距法

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Point-based stereo visual odometry systems typically estimate the camera motion by minimizing a cost function of the projection residuals between consecutive frames. Under some mild assumptions, such minimization is equivalent to maximizing the probability of the measured residuals given a certain pose change, for which a suitable model of the error distribution (sensor model) becomes of capital importance in order to obtain accurate results. This paper proposes a robust probabilistic model for projection errors, based on real world data. For that, we argue that projection distances follow Gamma distributions, and hence, the introduction of these models in a probabilistic formulation of the motion estimation process increases both precision and accuracy. Our approach has been validated through a series of experiments with both synthetic and real data, revealing an improvement in accuracy while not increasing the computational burden.
机译:基于点的立体视觉测距系统通常通过最小化连续帧之间的投影残差的代价函数来估计摄像机的运动。在一些温和的假设下,这种最小化等效于在给定的姿态变化下最大化测得的残差的概率,为此,对于误差分布的合适模型(传感器模型)变得至关重要,以获得准确的结果。本文提出了一个基于真实世界数据的鲁棒概率模型,用于投影误差。为此,我们认为投影距离遵循Gamma分布,因此,在运动估计过程的概率公式中引入这些模型可以提高精度和准确性。我们的方法已通过一系列针对合成数据和真实数据的实验进行了验证,从而揭示了准确性的提高,同时又不增加计算负担。

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