Commercial visual-inertial odometry (VIO) systems have been gaining attention as cost-effective, off-the-shelf six degrees of freedom (6-DoF) ego-motion tracking methods for estimating accurate and consistent camera pose data, in addition to their ability to operate without external localization from motion capture or global positioning systems. It is unclear from existing results, however, which commercial VIO platforms are the most stable, consistent, and accurate in terms of state estimation for indoor and outdoor robotic applications. We assess four popular proprietary VIO systems (Apple ARKit, Google ARCore, Intel RealSense T265, and Stereolabs ZED 2) through a series of both indoor and outdoor experiments where we show their positioning stability, consistency, and accuracy. We present our complete results as a benchmark comparison for the research community.
翻译:商业视觉内皮测量(VIO)系统作为成本效益高、现成六度自由(6-DoF)自我感知跟踪方法,用于估计准确和一致的相机,除了能够不通过运动捕获或全球定位系统进行外部定位而操作外,还能够提供数据,但从现有结果来看,尚不清楚哪些商业视觉内皮测量(VIO)平台在室内和室外机器人应用的国家估计方面是最稳定、一致和准确的。我们通过一系列室内和室外实验,评估了四种流行的自有性静电(VIO)系统(Apple ArKit、Google ARCore、Intel RealSense T265和Stereolabs ZED 2),显示其定位稳定性、一致性和准确性。我们把我们的全部结果作为研究界的基准比较。