A main challenge in target localization arises from the lack of reliable distance measures. This issue is especially pronounced in indoor settings due to the presence of walls, floors, furniture, and other dynamically changing conditions such as the movement of people and goods, varying temperature, and airflows. Here, we develop a new computational framework to estimate the location of a target without the need for reliable distance measures. The method, which we term Ordinal UNLOC, uses only ordinal data obtained from comparing the signal strength from anchor pairs at known locations to the target. Our estimation technique utilizes rank aggregation, function learning as well as proximity-based unfolding optimization. As a result, it yields accurate target localization for common transmission models with unknown parameters and noisy observations that are reminiscent of practical settings. Our results are validated by both numerical simulations and hardware experiments.
翻译:目标定位的主要挑战在于缺乏可靠的距离测量,这个问题在室内环境尤为突出,因为墙壁、地板、家具和其他动态变化条件的存在,如人员和货物的流动、不同的温度和空气流。在这里,我们制定了一个新的计算框架,用以估计目标的位置,而不需要可靠的距离测量。我们称为Ordinal ULOC的方法仅使用从比较已知地点的锚对的信号强度到目标的普通数据。我们的估算技术利用了等级组合、功能学习以及以近距离为基础的快速优化。因此,它产生了具有未知参数和噪音观测的通用传输模型的准确目标定位,这些参数和噪音观测与实际环境的相似。我们的结果通过数字模拟和硬件实验得到验证。