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IMU preintegration on manifold for efficient visual-inertial maximum-a-posteriori estimation

机译:IMU在流形上的预集成可有效地实现视觉惯性最大值后验估计

摘要

Recent results in monocular visual-inertial navigation (VIN) have shown that optimization-based approaches outperform filtering methods in terms of accuracy due to their capability to relinearize past states. However, the improvement comes at the cost of increased computational complexity. In this paper, we address this issue by preintegrating inertial measurements between selected keyframes. The preintegration allows us to accurately summarize hundreds of inertial measurements into a single relative motion constraint. Our first contribution is a preintegration theory that properly addresses the manifold structure of the rotation group and carefully deals with uncertainty propagation. The measurements are integrated in a local frame, which eliminates the need to repeat the integration when the linearization point changes while leaving the opportunity for belated bias corrections. The second contribution is to show that the preintegrated IMU model can be seamlessly integrated in a visual-inertial pipeline under the unifying framework of factor graphs. This enables the use of a structureless model for visual measurements, further accelerating the computation. The third contribution is an extensive evaluation of our monocular VIN pipeline: experimental results confirm that our system is very fast and demonstrates superior accuracy with respect to competitive state-of-the-art filtering and optimization algorithms, including off-the-shelf systems such as Google Tango.
机译:单目视觉惯性导航(VIN)的最新结果表明,基于优化的方法由于能够使过去的状态重新线性化,因此在准确性方面优于过滤方法。但是,这种改进是以增加计算复杂性为代价的。在本文中,我们通过对选定关键帧之间的惯性测量值进行预积分来解决此问题。通过预积分,我们可以将数百个惯性测量值准确地汇总为一个相对运动约束。我们的第一个贡献是预积分理论,该理论可以正确解决旋转群的流形结构并仔细处理不确定性传播。测量值集成在本地框架中,从而消除了线性化点变化时重复进行积分的需求,同时保留了迟来的偏差校正的机会。第二个贡献是表明,在因子图的统一框架下,预集成的IMU模型可以无缝集成在视觉惯性管道中。这样就可以将无结构模型用于视觉测量,从而进一步加快了计算速度。第三个贡献是对我们的单目VIN管道的广泛评估:实验结果证实,我们的系统非常快速,并且相对于竞争性的最新过滤和优化算法(包括诸如作为Google Tango。

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