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Spatiotemporal Compression Techniques for Moving Point Objects

机译:移动点对象的时空压缩技术

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摘要

Moving object data handling has received a fair share of attention over recent years in the spatial database community. This is understandable as positioning technology is rapidly making its way into the consumer market, not only through the already ubiquitous cell phone but soon also through small, on-board positioning devices in many means of transport and in other types of portable equipment. It is thus to be expected that all these devices will start to generate an unprecedented data stream of time-stamped positions. Sooner or later, such enormous volumes of data will lead to storage, transmission, computation, and display challenges. Hence, the need for compression techniques. Although previously some work has been done in compression for time series data, this work mainly deals with one-dimensional time series. On the other hand, they are good for short time series and in absence of noise, two characteristics not met by moving objects. We target applications in which present and past positions of objects are important, so focus on the compression of moving object trajectories. The paper applies some older techniques of line generalization, and compares their performance against algorithms that we specifically designed for compressing moving object trajectories.
机译:近年来,在空间数据库社区中,移动对象数据处理引起了相当大的关注。这是可以理解的,因为定位技术不仅通过已经无处不在的手机迅速进入消费市场,而且很快通过许多运输工具和其他类型的便携式设备中的小型车载定位设备进入市场。因此,可以预期所有这些设备将开始生成带时间戳位置的前所未有的数据流。如此庞大的数据迟早会导致存储,传输,计算和显示方面的挑战。因此,需要压缩技术。尽管以前已经对时间序列数据进行了一些压缩,但是这项工作主要处理一维时间序列。另一方面,它们适用于短时间序列且没有噪声,这是运动对象无法满足的两个特性。我们针对对象的当前位置和过去位置很重要的应用程序,因此着重于移动对象轨迹的压缩。本文应用了一些较旧的线归纳技术,并将其性能与我们专门为压缩运动对象轨迹而设计的算法进行了比较。

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