SGP-RI: A Real-Time-Trainable and Decentralized IoT Indoor Localization Model Based on Sparse Gaussian Process with Reduced-Dimensional Inputs
Zhe Tang, Sihao Li, Zichen Huang, Guandong Yang, Kyeong Soo Kim, and, Jeremy S. Smith

TL;DR
This paper introduces SGP-RI, a decentralized, real-time trainable indoor localization model for IoT devices using sparse Gaussian processes with reduced-dimensional inputs, improving adaptability, security, and resource efficiency.
Contribution
The paper proposes a novel decentralized indoor localization method based on sparse Gaussian processes with input reduction, enabling real-time training and deployment on resource-constrained IoT devices.
Findings
Achieves comparable accuracy with fewer training samples.
Enables decentralization for resource-limited IoT devices.
Supports real-time adaptation to environmental changes.
Abstract
Internet of Things (IoT) devices are deployed in the filed, there is an enormous amount of untapped potential in local computing on those IoT devices. Harnessing this potential for indoor localization, therefore, becomes an exciting research area. Conventionally, the training and deployment of indoor localization models are based on centralized servers with substantial computational resources. This centralized approach faces several challenges, including the database's inability to accommodate the dynamic and unpredictable nature of the indoor electromagnetic environment, the model retraining costs, and the susceptibility of centralized servers to security breaches. To mitigate these challenges we aim to amalgamate the offline and online phases of traditional indoor localization methods using a real-time-trainable and decentralized IoT indoor localization model based on Sparse Gaussian…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Context-Aware Activity Recognition Systems · Robotics and Sensor-Based Localization
MethodsGaussian Process
