Analysing neural network models for detecting panic attacks with uncertainty analysis
Abstract
In our society and around the world a lot of people suffer from panic attacks. These
panic attacks can be mild or very intense physical stimulations that may incapacitate
an individual at the spot when the panic attack occurs. The problem in this case
is, if the person suffers from a panic attack outside their house and loses control
over themselves, they might be subjected to external environmental hazard such as
getting into a car accident, etc. Therefore, if we can effectively track and detect
whether a person had a panic attack via their spatiotemporal and biometric data,
steps can be taken to help them recover from the panic attack or send help to
them, as quickly as possible. Keeping this in our mind, in this study we analysed
the performance of different neural network models and techniques to detect panic
attacks of individuals from their spatiotemporal and biometric data. Since detection
of panic attacks is an emergency use-case, model reliability is essential. To ensure
model reliability, we also represented the uncertainty analysis of these neural network
models using Monte Carlo Dropout. During our study, we found that among all the
models that were used, GRU (Gated Recurrent Unit) had the highest accuracy of
95.56%, and GRU also had one of the least amount of uncertainty. However, the
ensemble model had the least amount of uncertainty among all the models that were used.