To tackle the problem of increasing numbers of state transition parameters when the number of sensors increases, we present a probabilistic model together with several parsinomious representations for sensor fusion. These include context specific independence (CSI), mixtures of smaller multinomials and softmax function representations to compactly represent the state transitions of a large number of sensors. The model is evaluated on real-world data acquired through ubiquitous sensors in recognizing daily morning activities. The results show that the combination of CSI and mixtures of smaller multinomials achieves comparable performance with much fewer parameters.<br /
Human activity recognition plays a significant role in enabling pervasive applications as it abstrac...
Smart home automation is protective and preventive measures that are taken to monitor elderly people...
Existing work on sensor-based activity recognition focuses mainly on single-user activities. However...
To tackle the problem of increasing numbers of state transition parameters when the number of sensor...
Building smart home environments which automatically or semi-automatically assist and comfort occupa...
Current probabilistic models for activity recognition do not incorporate much sensory input data due...
We detail the solution to the UCAmI Cup Challenge to recognizing on going activities at home from se...
Multi-sensor data fusion is extensively used to merge data collected by heterogeneous sensors deploy...
Accurately recognizing human activities from sensor data recorded in a smart home setting is a chall...
Smart sensors, such as smart meters or smart phones, are nowadays ubiquitous. To be "smart", however...
Activity recognition plays a key role in providing activity assistance and care for users in smart h...
The power of end-to-end deep learning techniques to automatically learn latent high-level features f...
Smart environments are heterogeneous architectures with a broad range of heterogeneous electronic de...
Activity recognition (AR) is a subtask in pervasive computing and context-aware systems, which prese...
Most of the existing approaches to activity recognition in smart homes rely on supervised learning w...
Human activity recognition plays a significant role in enabling pervasive applications as it abstrac...
Smart home automation is protective and preventive measures that are taken to monitor elderly people...
Existing work on sensor-based activity recognition focuses mainly on single-user activities. However...
To tackle the problem of increasing numbers of state transition parameters when the number of sensor...
Building smart home environments which automatically or semi-automatically assist and comfort occupa...
Current probabilistic models for activity recognition do not incorporate much sensory input data due...
We detail the solution to the UCAmI Cup Challenge to recognizing on going activities at home from se...
Multi-sensor data fusion is extensively used to merge data collected by heterogeneous sensors deploy...
Accurately recognizing human activities from sensor data recorded in a smart home setting is a chall...
Smart sensors, such as smart meters or smart phones, are nowadays ubiquitous. To be "smart", however...
Activity recognition plays a key role in providing activity assistance and care for users in smart h...
The power of end-to-end deep learning techniques to automatically learn latent high-level features f...
Smart environments are heterogeneous architectures with a broad range of heterogeneous electronic de...
Activity recognition (AR) is a subtask in pervasive computing and context-aware systems, which prese...
Most of the existing approaches to activity recognition in smart homes rely on supervised learning w...
Human activity recognition plays a significant role in enabling pervasive applications as it abstrac...
Smart home automation is protective and preventive measures that are taken to monitor elderly people...
Existing work on sensor-based activity recognition focuses mainly on single-user activities. However...