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Multidimensional Similarity Measuring for Semantic Trajectories

机译:语义轨迹的多维相似度测量

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摘要

Most existing approaches aiming at measuring trajectory similarity are focused on two-dimensional sequences of points, called raw trajectories. However, recent proposals have used background geographic information and social media data to enrich these trajectories with a semantic dimension, giving rise to the concept of semantic trajectories. Only a few works have proposed similarity measures for semantic trajectories or multidimensional sequences, having limitations such as predefined weight of the dimensions, sensitivity to noise, tolerance for gaps with different sizes, and the prevalence of the worst dimension similarity. In this article we propose MSM, a novel similarity measure for multidimensional sequences that overcomes the aforementioned limitations by considering and weighting the similarity in all dimensions. MSM is evaluated through an extensive experimental study that, based on a seed trajectory, creates sets of semantic trajectories with controlled transformations to introduce different kinds and levels of dissimilarity. For each set, we compute the similarity between the seed and the transformed trajectories, using different measures. The results showed that MSM was more robust and efficient than related approaches in the domain of semantic trajectories.
机译:旨在测量轨迹相似性的大多数现有方法都集中在称为原始轨迹的二维点序列上。然而,最近的提议使用背景地理信息和社交媒体数据来以语义维度丰富这些轨迹,从而产生了语义轨迹的概念。仅有少数著作提出了针对语义轨迹或多维序列的相似性度量,但具有局限性,例如预定义的维权重,对噪声的敏感性,对具有不同大小的间隙的容忍度以及最差的维数相似性。在本文中,我们提出了MSM,一种针对多维序列的新颖相似性度量,它通过考虑和加权所有维的相似性来克服了上述限制。通过广泛的实验研究对MSM进行评估,该实验基于种子轨迹,创建具有受控转换的语义轨迹集,以引入不同种类和不同程度的异同。对于每个集合,我们使用不同的度量来计算种子和变换轨迹之间的相似度。结果表明,MSM在语义轨迹领域比相关方法更加健壮和高效。

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