In state estimation algorithms that use feature tracks as input, it is customary to assume that the errors in feature track positions are zero-mean Gaussian. Using a combination of calibrated camera intrinsics, ground-truth camera pose, and depth images, it is possible to compute ground-truth positions for feature tracks extracted using an image processing algorithm. We find that feature track errors are not zero-mean Gaussian and that the distribution of errors is conditional on the type of motion, the speed of motion, and the image processing algorithm used to extract the tracks.
翻译:在使用特征轨迹作为输入的状态估计算法中,通常假设特征轨迹位置的误差是零均值高斯分布的。通过使用校准的相机内参、实际相机姿势和深度图像,可以计算出图像处理算法提取的特征轨迹的真实位置。我们发现,特征轨迹的误差不是零均值高斯分布的,并且错误分布与运动类型、运动速度和用于提取轨迹的图像处理算法有关。