面向大规模指纹识别系统的区域分类

Suining He, Jiajie Tan, S. Chan
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引用次数: 20

摘要

在宽敞、多区域的建筑物中,基于指纹的定位往往受到昂贵的位置搜索的困扰。此外,内部/外部区域和建筑面积等背景知识对于完整的定位服务也很重要。为了解决上述问题,除了寻找准确定位点的算法之外,我们还研究了基于指纹的大规模室内区域准确高效分类。我们首先研究了利用一类分类方法在只给定内部指纹的情况下进行内/外区域检测。然后讨论了不同的区域确定算法,并比较了它们的检测精度和部署效率。为了进一步提高精度,我们还讨论了拒绝不可分类的信号和校准异构器件。我们在Android平台上实现了不同的算法。在国际机场、商业大楼、高级购物中心和大学校园进行的实验(总计超过30,000个指纹和15,000个测试数据)评估了不同分类方案的实用性和可部署性。我们的研究也可以作为区域分类的设计指南。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards area classification for large-scale fingerprint-based system
In spacious and multi-area buildings, fingerprint-based localization often suffers from expensive location search. Besides, context knowledge like inside/outside-region and floor area is important for complete location service. To address above issues, beyond the algorithms finding the exact location point, we study accurate and efficient indoor area classification for large-scale fingerprint-based system. We first study leveraging the one-class classification to conduct inside/outside-region detection given only the inside fingerprints. Then we discuss different area determination algorithms, and compare their detection accuracy and deployment efficiency. To further enhance accuracy, we also discuss rejecting unclassifiable signals and calibrating heterogeneous devices. We have implemented different algorithms on Android platforms. Experimental trials (totally over 30,000 fingerprints and 15,000 test data) at an international airport, a business building, a premium shopping mall and a university campus have evaluated practicability and deployability of different classification schemes. Our studies can also serve as design guidelines for area classification.
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