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A review of visual inertial odometry from filtering and optimisation perspectives

机译:从滤波和优化的角度研究视觉惯性里程计

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摘要

Visual inertial odometry (VIO) is a technique to estimate the change of a mobile platform in position and orientation overtime using the measurements from on-board cameras and IMU sensor. Recently, VIO attracts significant attentions from large number of researchers and is gaining the popularity in various potential applications due to the miniaturisation in size and low cost in price of two sensing modularities. However, it is very challenging in both of technical development and engineering implementation when accuracy, real-time performance, robustness and operation scale are taken into consideration. This survey is to report the state of the art VIO techniques from the perspectives of filtering and optimisation-based approaches, which are two dominated approaches adopted in the research area. To do so, various representations of 3D rigid motion body are illustrated. Then filtering-based approaches are reviewed, and followed by optimisation-based approaches. The links between these two approaches will be clarified via a framework of the Bayesian Maximum A Posterior. Other features, such as observability and self calibration, will be discussed.
机译:视觉惯性里程计 (VIO) 是一种使用车载摄像头和 IMU 传感器的测量值来估计移动平台在位置和方向上随时间变化的技术。最近,VIO吸引了大量研究人员的极大关注,并且由于两种传感模块化的小型化和低成本的价格,在各种潜在应用中越来越受欢迎。然而,在技术开发和工程实施方面,当考虑到准确性、实时性、鲁棒性和操作规模时,这是非常具有挑战性的。本调查旨在从基于过滤和优化的方法的角度报告最先进的 VIO 技术,这是研究领域采用的两种主要方法。为此,图示了 3D 刚体运动体的各种表示形式。然后回顾基于过滤的方法,然后回顾基于优化的方法。这两种方法之间的联系将通过贝叶斯最大 A 后验框架得到澄清。将讨论其他功能,例如可观察性和自校准。

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