Application of Artificial Intelligence in an Unsupervised Algorithm for Trajectory Segmentation Based on Multiple Motion Features

Wenjin Xu, Shaokang Dong
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引用次数: 2

Abstract

With the development of the wireless network, location-based services (e.g., the place of interest recommendation) play a crucial role in daily life. However, the data acquired is noisy, massive, it is difficult to mine it by artificial intelligence algorithm. One of the fundamental problems of trajectory knowledge discovery is trajectory segmentation. Reasonable segmentation can reduce computing resources and improvement of storage effectiveness. In this work, we propose an unsupervised algorithm for trajectory segmentation based on multiple motion features (TS-MF). The proposed algorithm consists of two steps: segmentation and mergence. The segmentation part uses the Pearson coefficient to measure the similarity of adjacent trajectory points and extract the segmentation points from a global perspective. The merging part optimizes the minimum description length (MDL) value by merging local sub-trajectories, which can avoid excessive segmentation and improve the accuracy of trajectory segmentation. To demonstrate the effectiveness of the proposed algorithm, experiments are conducted on two real datasets. Evaluations of the algorithm’s performance in comparison with the state-of-the-art indicate the proposed method achieves the highest harmonic average of purity and coverage.
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人工智能在基于多运动特征的无监督轨迹分割算法中的应用
随着无线网络的发展,基于位置的服务(如景点推荐)在日常生活中发挥着至关重要的作用。然而,所获取的数据是嘈杂的、海量的,很难用人工智能算法对其进行挖掘。轨迹分割是轨迹知识发现的基本问题之一。合理分割可以减少计算资源,提高存储效率。本文提出了一种基于多运动特征(TS-MF)的无监督轨迹分割算法。该算法包括两个步骤:分割和合并。分割部分使用Pearson系数度量相邻轨迹点的相似度,从全局角度提取分割点。合并部分通过合并局部子轨迹来优化最小描述长度(MDL)值,避免了过度分割,提高了轨迹分割的精度。为了验证该算法的有效性,在两个真实数据集上进行了实验。与最先进的算法相比,该算法的性能评估表明,所提出的方法达到了纯度和覆盖率的最高谐波平均值。
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