Publication | Open Access
Multimodal Approaches for Indoor Localization for Ambient Assisted Living in Smart Homes
65
Citations
41
References
2021
Year
Location TrackingEngineeringSmart CityWearable TechnologyLocalization TechniqueSmart EnvironmentLocalizationAmbient Assisted LivingBuilt EnvironmentSensor NetworksWireless LocalizationMultimodal ApproachesData ScienceDecision TreeSmart SystemsLocation AwarenessSmart HomesInternet Of ThingsHuman MotionAssistive TechnologyWireless NetworkingMobile ComputingMobile SensingSmart LivingPerformance Evaluation MetricsIndoor Positioning SystemRandom Forest
This work makes multiple scientific contributions to the field of Indoor Localization for Ambient Assisted Living in Smart Homes. First, it presents a Big-Data driven methodology that studies the multimodal components of user interactions and analyzes the data from Bluetooth Low Energy (BLE) beacons and BLE scanners to detect a user’s indoor location in a specific ‘activity-based zone’ during Activities of Daily Living. Second, it introduces a context independent approach that can interpret the accelerometer and gyroscope data from diverse behavioral patterns to detect the ‘zone-based’ indoor location of a user in any Internet of Things (IoT)-based environment. These two approaches achieved performance accuracies of 81.36% and 81.13%, respectively, when tested on a dataset. Third, it presents a methodology to detect the spatial coordinates of a user’s indoor position that outperforms all similar works in this field, as per the associated root mean squared error—one of the performance evaluation metrics in ISO/IEC18305:2016—an international standard for testing Localization and Tracking Systems. Finally, it presents a comprehensive comparative study that includes Random Forest, Artificial Neural Network, Decision Tree, Support Vector Machine, k-NN, Gradient Boosted Trees, Deep Learning, and Linear Regression, to address the challenge of identifying the optimal machine learning approach for Indoor Localization.
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