Indoor localisation is the state-of-the-art to identify and observe a moving human or an object inside a building. However, because of the harsh indoor conditions, current indoor localisation systems remain either too expensive or not accurate enough.In this paper, we tackle the latter issue in a different direction, with a new conformal prediction algorithm to enhance the accuracy of the prediction. We handle the common indoor signal attenuation issue, which introduces errors into the training database, with a reliability measurement for our prediction. We show why our approach performs better than other solutions through empirical studies with two testbeds. To the best of our knowledge, we are the first to apply conformal prediction for t...
The ability to capture people’s location within large indoor spaces (such as office buildings, unive...
The knowledge of the exact location of an object or person is an important enabler for a wide variet...
This paper presents a framework for indoor location prediction system using multiple wireless signal...
We proposed the first Conformal Prediction (CP) algorithm for indoor localisation with a classificat...
Part 9: Second Workshop on Conformal Prediction and Its Applications (CoPA 2013)International audien...
Indoor localisation is the state-of-the-art to identify and observe a moving human or object inside ...
Part 4: First Conformal Prediction and Its Applications Workshop (COPA 2012)International audienceIn...
This paper presents a framework for indoor loca-tion prediction system using multiple wireless signa...
Location prediction enables us to use a person???s mobility history to realize various applications ...
Location prediction enables us to use a person’s mobility history to realize various applications su...
Indoor localization has been a hot area of research over the past two decades. Since its advent, it ...
The localization speed and accuracy in the indoor scenario can greatly impact the Quality of Experie...
Indoor localization with a significant degree of precision is extremely challenging. In this paper, ...
Indoor navigation provides the positioning service to the indoor users, where the GPS coverage is no...
Indoor localization is difficult because of issues regarding the physics of signal propagation and m...
The ability to capture people’s location within large indoor spaces (such as office buildings, unive...
The knowledge of the exact location of an object or person is an important enabler for a wide variet...
This paper presents a framework for indoor location prediction system using multiple wireless signal...
We proposed the first Conformal Prediction (CP) algorithm for indoor localisation with a classificat...
Part 9: Second Workshop on Conformal Prediction and Its Applications (CoPA 2013)International audien...
Indoor localisation is the state-of-the-art to identify and observe a moving human or object inside ...
Part 4: First Conformal Prediction and Its Applications Workshop (COPA 2012)International audienceIn...
This paper presents a framework for indoor loca-tion prediction system using multiple wireless signa...
Location prediction enables us to use a person???s mobility history to realize various applications ...
Location prediction enables us to use a person’s mobility history to realize various applications su...
Indoor localization has been a hot area of research over the past two decades. Since its advent, it ...
The localization speed and accuracy in the indoor scenario can greatly impact the Quality of Experie...
Indoor localization with a significant degree of precision is extremely challenging. In this paper, ...
Indoor navigation provides the positioning service to the indoor users, where the GPS coverage is no...
Indoor localization is difficult because of issues regarding the physics of signal propagation and m...
The ability to capture people’s location within large indoor spaces (such as office buildings, unive...
The knowledge of the exact location of an object or person is an important enabler for a wide variet...
This paper presents a framework for indoor location prediction system using multiple wireless signal...