σ-DVO:传感器噪声模型满足密集视觉里程计

B. W. Babu, Soohwan Kim, Zhixin Yan, Liu Ren
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引用次数: 16

摘要

在本文中,我们提出了一种新的方法称为s-DVO密集视觉里程计使用概率传感器噪声模型。稀疏视觉里程法是根据匹配的视觉特征估计相机姿态,而密集视觉里程法则充分利用了RGB-D相机的所有像素信息。以前,为了减少优化过程中异常值的影响,使用t分布来模拟光度和几何误差。然而,这种方法的局限性在于它只使用误差值来确定异常值,而不考虑物理过程。因此,我们建议应用概率传感器噪声模型,通过传播线性化的不确定性来衡量每个像素。此外,我们发现传感器噪声模型可以很好地表示几何误差,而光度误差则不能。最后,我们提出了一种混合方法,该方法结合了t分布的光度误差和概率传感器噪声模型的几何误差。我们扩展了密集视觉里程计,并开发了一个包含关键帧生成,环路约束检测和图形优化的视觉SLAM系统。在标准基准数据集上的实验结果表明,我们的算法比以前的方法在绝对轨迹误差上降低了约25%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
σ-DVO: Sensor Noise Model Meets Dense Visual Odometry
In this paper we propose a novel method called s-DVO for dense visual odometry using a probabilistic sensor noise model. In contrast to sparse visual odometry, where camera poses are estimated based on matched visual features, we apply dense visual odometry which makes full use of all pixel information from an RGB-D camera. Previously, t-distribution was used to model photometric and geometric errors in order to reduce the impacts of outliers in the optimization. However, this approach has the limitation that it only uses the error value to determine outliers without considering the physical process. Therefore, we propose to apply a probabilistic sensor noise model to weigh each pixel by propagating linearized uncertainty. Furthermore, we find that the geometric errors are well represented with the sensor noise model, while the photometric errors are not. Finally we propose a hybrid approach which combines t-distribution for photometric errors and a probabilistic sensor noise model for geometric errors. We extend the dense visual odometry and develop a visual SLAM system that incorporates keyframe generation, loop constraint detection and graph optimization. Experimental results with standard benchmark datasets show that our algorithm outperforms previous methods by about a 25% reduction in the absolute trajectory error.
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