Untethered, inside-out tracking is considered a new goalpost for virtual reality, which became attainable with advent of machine learning in SLAM. Yet computer vision-based navigation is always at risk of a tracking failure due to poor illumination or saliency of the environment. An extension for a navigation system is proposed, which recognizes agents motion and stillness states with 87% accuracy from accelerometer data. 40% reduction in navigation drift is demonstrated in a repeated tracking failure scenario on a challenging dataset.
翻译:内向外追踪被视为虚拟现实的新目标,随着机器在SLAM的学习而实现。然而,计算机视像导航总是由于环境的光亮或突出度差而面临跟踪失败的风险。 提议延长导航系统,承认物剂运动和静态状态,加速计数据准确度为87%。 40%的导航漂移在反复跟踪一个具有挑战性的数据集的故障假设中显示减少。