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Indoor Corner Detection and Matching from Crowdsourced Movement Trajectories

机译:众包运动轨迹的室内角落检测与匹配

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Indoor landmarks, like corners, staircases and etc, play an important role in crowdsourcing-based indoor localization systems. This paper studies the problem of indoor corner detection and matching from crowdsourced movement trajectories. For corner detection, we adopt a machine learning approach by training a corner detector with both time and frequency features. For corner matching, we first apply the multidimensional scaling technique for matrix dimensionality reduction and then propose an improved K-means algorithm to obtain an intermediate matching result for each feature dimension. We also propose a voting algorithm to obtain the final matching result for each corner sample based on its all intermediate dimension matching results. Experiment results show that the machine learning-based corner detection can achieve much better detection performance, compared with the existing algorithms based on signal change detection. For corner matching, the proposed scheme can achieve high matching accuracy and the constructed corner fingerprints can achieve the nearest distance with their respective reference corner fingerprints.
机译:室内地标,例如拐角,楼梯等,在基于众包的室内定位系统中起着重要作用。本文研究了基于众包运动轨迹的室内角落检测与匹配问题。对于角点检测,我们通过训练具有时间和频率特征的角点检测器来采用机器学习方法。对于角点匹配,我们首先将多维缩放技术应用于矩阵降维,然后提出一种改进的K-means算法,以获取每个特征维的中间匹配结果。我们还提出一种投票算法,以基于每个角样本的所有中间维度匹配结果来获得最终的匹配结果。实验结果表明,与现有的基于信号变化检测的算法相比,基于机器学习的角点检测具有更好的检测性能。对于角点匹配,该方案可以实现较高的匹配精度,并且所构造的角点指纹可以与各自的参考角点指纹保持最近的距离。

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