dc.description.abstract |
Our thesis explores the complex task of distinguishing NEAT (Non-Exercise Activity
Thermogenesis) activities from non-NEAT activities in a home environment using data
from wearable smartwatch sensors. It presents a multifaceted problem where low-frequency
sensor data is used to differentiate thirteen distinct household activities. Existing research
often prioritizes high-frequency data or multiple sensors, overlooking fundamental home
activities. To address these limitations, this research introduces innovative AI models,
capable of achieving superior accuracy while working on low frequency. This dissertation
unfolds in three key steps, each contributing to the overall understanding and advancement
of NEAT activity recognition.
In our first work (Chapter Three), we introduced the Hierarchical Model, tailored to
differentiate seven home activities using low-frequency (1Hz) sensor data. Our experiments
revealed the model’s remarkable accuracy, outperforming traditional flat models like XGB.
Even when the sampling frequency was reduced to 1Hz, the Hierarchical Model maintained
substantial accuracy. These results provided a foundation for recognizing NEAT activities
using wearable technology, highlighting the potential of our approach.
In our second work (Chapter Four) we delved deeper into the system’s development. The
system, worn on a smartwatch, identifies and classifies 13 distinct activities, including both
physical and sedentary actions. The user initiates data collection, which is transmitted
to a central server for interpretation. Key parameters, such as battery depletion rate
and data sampling rate, were evaluated, with the goal of future on-device deployment.
Notably, our system accommodates unclassified activities through the introduction of the
”OTHERS” class, a versatile approach that can be adjusted based on desired strictness
or leniency.
In our last work (Chapter Five) we tackled the challenge of distinguishing household
activities using low-frequency data without relying on external connectivity. Our
innovative Hybrid Model achieved superior accuracy compared to other models, making
it more user-friendly in environments without readily available Wi-Fi or paired devices.
The choice of a 10-second window length was found to balance accuracy and battery
efficiency. Additionally, the deployment of neural networks, including 1d-CNN, LSTM,
and Bidirectional LSTM, allowed us to propose a Hybrid Model, integrating TensorFlow
Lite (TFLite) for improved performance and efficiency on the smartwatch.
This dissertation provides a comprehensive understanding of NEAT activity recognition
using wearable technology in a home environment. From the introduction of the
Hierarchical Model to the development of the system and the implementation of neural
networks, our findings pave the way for future advancements in the field. Distinguishing
NEAT and non-NEAT activities has the potential to revolutionize how we monitor and
understand daily activities, impacting areas like healthcare, fitness, and beyond. |
en_US |