轨迹语义分割的半监督方法

Amílcar Soares Júnior, V. Times, C. Renso, S. Matwin, L. A. Cabral
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引用次数: 29

摘要

在分析运动数据的过程中,第一个基本步骤是轨迹分割,即根据一定的标准将轨迹分割成均匀的段。尽管在过去的十年中,轨迹分割已经成为几种方法的目标,但基于半监督方法的建议仍然存在。半监督方法意味着用户手动标记一小组有意义的轨迹,并从这组轨迹中,以无监督的方式推断出剩余轨迹的片段。与纯监督方法相比,这种方法的主要优点是它减少了人类标记轨迹数量的工作量。在这项工作中,我们提出使用最小描述长度(MDL)原则来测量片段内部的同质性。我们还介绍了用于语义半监督轨迹分割的反应性贪婪随机自适应搜索程序(RGRASP-SemTS)算法,该算法通过将有限的用户标记阶段与低数量的输入参数和无预定义分割标准相结合来分割轨迹。本文详细介绍了该方法和算法,并在两个真实数据集上进行了实验。评估测试证明了我们的方法如何优于最先进的竞争对手,当与地面真相相比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Semi-Supervised Approach for the Semantic Segmentation of Trajectories
A first fundamental step in the process of analyzing movement data is trajectory segmentation, i.e., splitting trajectories into homogeneous segments based on some criteria. Although trajectory segmentation has been the object of several approaches in the last decade, a proposal based on a semi-supervised approach remains inexistent. A semi-supervised approach means that a user labels manually a small set of trajectories with meaningful segments and, from this set, the method infers in an unsupervised way the segments of the remaining trajectories. The main advantage of this method compared to pure supervised ones is that it reduces the human effort to label the number of trajectories. In this work, we propose the use of the Minimum Description Length (MDL) principle to measure homogeneity inside segments. We also introduce the Reactive Greedy Randomized Adaptive Search Procedure for semantic Semi-supervised Trajectory Segmentation (RGRASP-SemTS) algorithm that segments trajectories by combining a limited user labeling phase with a low number of input parameters and no predefined segmenting criteria. The approach and the algorithm are presented in detail throughout the paper, and the experiments are carried out on two real-world datasets. The evaluation tests prove how our approach outperforms state-of-the-art competitors when compared to ground truth.
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