QuickLoc: Adaptive Deep-Learning for Fast Indoor Localization with Mobile Devices

Saideep Tiku, Prathmesh Kale, S. Pasricha
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引用次数: 12

Abstract

Indoor localization services are a crucial aspect for the realization of smart cyber-physical systems within cities of the future. Such services are poised to reinvent the process of navigation and tracking of people and assets in a variety of indoor and subterranean environments. The growing ownership of computationally capable smartphones has laid the foundations of portable fingerprinting-based indoor localization through deep learning. However, as the demand for accurate localization increases, the computational complexity of the associated deep learning models increases as well. We present an approach for reducing the computational requirements of a deep learning-based indoor localization framework while maintaining localization accuracy targets. Our proposed methodology is deployed and validated across multiple smartphones and is shown to deliver up to 42% reduction in prediction latency and 45% reduction in prediction energy as compared to the best-known baseline deep learning-based indoor localization model.
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QuickLoc:移动设备快速室内定位的自适应深度学习
室内定位服务是未来城市中智能网络物理系统实现的一个关键方面。这些服务将重塑各种室内和地下环境中人员和资产的导航和跟踪过程。越来越多的智能手机为通过深度学习实现基于指纹的便携式室内定位奠定了基础。然而,随着对精确定位需求的增加,相关深度学习模型的计算复杂度也随之增加。我们提出了一种方法来降低基于深度学习的室内定位框架的计算需求,同时保持定位精度目标。我们提出的方法在多个智能手机上进行了部署和验证,与最著名的基于基线深度学习的室内定位模型相比,预测延迟减少42%,预测能量减少45%。
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