The plethora of sensors in our commodity devices provides a rich substrate for sensor-fused tracking. Yet, today's solutions are unable to deliver robust and high tracking accuracies across multiple agents in practical, everyday environments - a feature central to the future of immersive and collaborative applications. This can be attributed to the limited scope of diversity leveraged by these fusion solutions, preventing them from catering to the multiple dimensions of accuracy, robustness (diverse environmental conditions) and scalability (multiple agents) simultaneously. In this work, we take an important step towards this goal by introducing the notion of dual-layer diversity to the problem of sensor fusion in multi-agent tracking. We demonstrate that the fusion of complementary tracking modalities, - passive/relative (e.g., visual odometry) and active/absolute tracking (e.g., infrastructure-assisted RF localization) offer a key first layer of diversity that brings scalability while the second layer of diversity lies in the methodology of fusion, where we bring together the complementary strengths of algorithmic (for robustness) and data-driven (for accuracy) approaches. RoVaR is an embodiment of such a dual-layer diversity approach that intelligently attends to cross-modal information using algorithmic and data-driven techniques that jointly share the burden of accurately tracking multiple agents in the wild. Extensive evaluations reveal RoVaR's multi-dimensional benefits in terms of tracking accuracy (median of 15cm), robustness (in unseen environments), light weight (runs in real-time on mobile platforms such as Jetson Nano/TX2), to enable practical multi-agent immersive applications in everyday environments.
翻译:我们商品设备中过多的传感器为传感器跟踪提供了丰富的基质。然而,今天的解决方案无法在实际的日常环境中在多种物剂中提供强大和高跟踪的精度,这是未来沉浸式和协作应用的核心特征。这可归因于这些聚变解决方案所利用的多样性范围有限,使它们无法同时满足准确性、稳健性(不同环境条件)和可缩放性(多种物剂)的多重层面。在这项工作中,我们为实现这一目标迈出了重要的一步,在多剂跟踪中引入了双层多样性的概念,使传感器的精度融合问题成为多剂的多剂跟踪问题。我们证明,补充性跟踪模式的融合,即被动/弹性(如视觉odology)和主动/悬浮性跟踪(如基础设施辅助的RFS本地化)提供了关键的第一层多样性,带来可缩放度,而第二层多样性则存在于混合方法中,在此过程中,我们把算法(强度)和数据递增度应用的精度(为精确性)的多量性、15个量级的流流流化(即机能性)的精确性跟踪方法中,从而在了动态数据流压式的深度的深度环境中,使数据流流压式的精度评估成为了滚动的分。