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Efficient Locality Classification for Indoor Fingerprint-Based Systems

机译:基于室内指纹的系统的有效位置分类

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Locality classification is an important component to enable location-based services. It entails two sequential queries: 1) whether a target is within the site or not, i.e., inside/outside region decision, and 2) if so, which area in the region the target is located, i.e., area classification. Locality classification is hence more coarse-grained and efficient as compared with pinpointing the exact target location in the region. The classification problem is challenging, because fingerprints may not exist outside the region for training. Furthermore, the target may sample an incomplete RSSI vector due to, say, random signal noise, momentary occlusion, or scanning duration. The algorithm also has to be computationally efficient. We propose INOA, a scalable and practical locality classification overcoming the above challenges. INOA may serve as a plug-in before any fingerprint-based localization, and can be incrementally extended to cover new areas or regions for large-scale deployment. Its preprocessor cherry-picks only those discriminating access points, which greatly enhances computational efficiency and accuracy. By formulating a "one-class" classifier using ensemble learning, INOA accurately decides whether the target is within the region or not. Extensive experimental trials in different sites validate the high efficiency and accuracy of INOA, without the need of full RSSI vectors collected at the target.
机译:位置分类是启用基于位置的服务的重要组成部分。它需要两个连续的查询:1)目标是否在站点内,即内部/外部区域决策; 2)如果是,则目标位于该区域中的哪个区域,即区域分类。因此,与精确定位该区域中的确切目标位置相比,位置分类更粗糙,更有效。分类问题具有挑战性,因为在训练区域之外可能不存在指纹。此外,由于例如随机信号噪声,瞬时遮挡或扫描持续时间,目标可能会采样不完整的RSSI向量。该算法还必须具有计算效率。我们提出了INOA,这是一种可扩展且实用的地区分类,可以克服上述挑战。 INOA可以充当任何基于指纹的本地化之前的插件,并且可以逐步扩展以覆盖新的区域或区域以进行大规模部署。它的预处理器仅挑选那些可区分的访问点,从而大大提高了计算效率和准确性。通过使用集成学习制定“一类”分类器,INOA可以准确地确定目标是否在区域内。在不同地点进行的广泛实验验证了INOA的高效率和准确性,而无需在目标位置收集完整的RSSI向量。

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