一种高效方便的轨迹压缩算法评价框架

Jonathan Muckell, Paul W. Olsen, Jeong-Hyon Hwang, S. Ravi, C. Lawson
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引用次数: 6

摘要

轨迹压缩算法消除了运动目标历史中的冗余信息。这样的压缩能够有效地传输、存储和处理轨迹数据。虽然文献中提出了许多压缩算法,但没有一个通用的基准平台来评估它们的有效性。本文提出了一种有效、方便、准确地比较轨迹压缩算法的基准框架。该框架支持文献中定义的各种压缩算法和度量,以及三个具有不同权衡的合成轨迹生成器。它还具有高度可扩展的体系结构,便于合并新的压缩算法、评估指标和轨迹数据生成器。本文全面概述了轨迹压缩算法、评估指标和数据生成器,并详细讨论了它们的独特优势和相关应用场景。此外,本文还描述了在上述框架的设计和实现中出现的挑战以及我们应对这些挑战的方法。最后,本文给出了评估结果,证明了基准框架的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Framework for Efficient and Convenient Evaluation of Trajectory Compression Algorithms
Trajectory compression algorithms eliminate redundant information in the history of a moving object. Such compression enables efficient transmission, storage, and processing of trajectory data. Although a number of compression algorithms have been proposed in the literature, no common benchmarking platform for evaluating their effectiveness exists. This paper presents a benchmarking framework for efficiently, conveniently, and accurately comparing trajectory compression algorithms. This framework supports various compression algorithms and metrics defined in the literature, as well as three synthetic trajectory generators that have different trade-offs. It also has a highly extensible architecture that facilitates the incorporation of new compression algorithms, evaluation metrics, and trajectory data generators. This paper provides a comprehensive overview of trajectory compression algorithms, evaluation metrics and data generators in conjunction with detailed discussions on their unique benefits and relevant application scenarios. Furthermore, this paper describes challenges that arise in the design and implementation of the above framework and our approaches to tackling these challenges. Finally, this paper presents evaluation results that demonstrate the utility of the benchmarking framework.
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