A Deterministic Construction of Projection matrix for Adaptive Trajectory Compression
Rajib Rana, Mingrui Yang, Tim Wark, Chun Tung Chou, Wen Hu

TL;DR
This paper introduces a deterministic, data-driven method for constructing projection matrices in adaptive trajectory compression, leveraging compressive sensing and support vector regression to improve compression efficiency based on trajectory predictability.
Contribution
It proposes a novel deterministic construction of projection matrices using SVD on learned dictionaries, enhancing adaptive trajectory compression performance.
Findings
Significantly improved compression ratios over existing methods.
Effective adaptation to trajectory compressibility based on speed.
Validated on GPS data from 127 subjects.
Abstract
Compressive Sensing, which offers exact reconstruction of sparse signal from a small number of measurements, has tremendous potential for trajectory compression. In order to optimize the compression, trajectory compression algorithms need to adapt compression ratio subject to the compressibility of the trajectory. Intuitively, the trajectory of an object moving in starlight road is more compressible compared to the trajectory of a object moving in winding roads, therefore, higher compression is achievable in the former case compared to the later. We propose an in-situ compression technique underpinning the support vector regression theory, which accurately predicts the compressibility of a trajectory given the mean speed of the object and then apply compressive sensing to adapt the compression to the compressibility of the trajectory. The conventional encoding and decoding process of…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Sparse and Compressive Sensing Techniques · Energy Efficient Wireless Sensor Networks
