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Evaluation Criteria for Inside-Out Indoor Positioning Systems Based on Machine Learning

机译:基于机器学习的室内外室内定位系统评估标准

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Real-time tracking allows to trace goods and enables the optimization of logistics processes in many application areas. Camera-based inside-out tracking that uses an infrastructure of fixed and known markers is costly as the markers need to be installed and maintained in the environment. Instead, systems that use natural markers suffer from changes in the physical environment. Recently a number of approaches based on machine learning (ML) aim to address such issues. This paper proposes evaluation criteria that consider algorithmic properties of ML-based positioning schemes and introduces a dataset from an indoor warehouse scenario to evaluate for them. Our dataset consists of images labeled with millimeter precise positions that allows for a better development and performance evaluation of learning algorithms. This allows an evaluation of machine learning algorithms for monocular optical positioning in a realistic indoor position application for the first time. We also show the feasibility of ML-based positioning schemes for an industrial deployment.
机译:实时跟踪可以跟踪货物,并可以优化许多应用领域中的物流流程。由于需要在环境中安装和维护标记,因此使用固定和已知标记的基础结构的基于相机的由内而外的跟踪成本很高。相反,使用自然标记的系统会遭受物理环境的变化。最近,许多基于机器学习(ML)的方法旨在解决此类问题。本文提出了一种评估标准,该评估标准考虑了基于ML的定位方案的算法特性,并引入了一个室内仓库场景中的数据集进行评估。我们的数据集包含标有毫米精确位置的图像,可以更好地开发和评估学习算法。这允许首次评估在实际室内位置应用中用于单眼光学定位的机器学习算法。我们还展示了基于ML的定位方案在工业部署中的可行性。

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