학술논문

GoPlaces: An App for Personalized Indoor Place Prediction
Document Type
Conference
Source
2023 IEEE 20th International Conference on Mobile Ad Hoc and Smart Systems (MASS) MASS Mobile Ad Hoc and Smart Systems (MASS), 2023 IEEE 20th International Conference on. :566-574 Sep, 2023
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Location awareness
Privacy
Protocols
Smart homes
Predictive models
Trajectory
Servers
Indoor place prediction
Sensor fusion
WiFi-RTT
Time series analysis
Deep learning
Smart phones
Language
ISSN
2155-6814
Abstract
High-accuracy and low-latency indoor place prediction for mobile users can enable a wide range of applications for domains such as assisted living and smart homes. Previous studies used localization techniques that are difficult to deploy, may negatively impact user privacy, and are not suitable for personalized place prediction. To solve these challenges, we propose GoPlaces, a phone app that fuses inertial sensor data with distances estimated by the WiFi Round Trip Time (WiFi-RTT) protocol to predict the indoor places visited by a user. GoPlaces does not require help from servers or localization infrastructure, except for one cheap off-the-shelf WiFi access point that supports ranging with RTT. GoPlaces enables personalized place naming and prediction, and it protects users’ location privacy. GoPlaces uses an attention-based BiLSTM model to detect user’s current trajectory, which is then used together with historical information stored in a prediction tree to infer user’s future places. We implemented GoPlaces in Android and evaluated it in several indoor spaces. The experimental results demonstrate prediction accuracy as high as 86%. Furthermore, they show GoPlaces is feasible in real life because it has low latency and low resource consumption on phones.