The code has now been modularized with clean condition of method exit.
We were proud that our design was able to look at each beat and heart
sound, which is a far greater achievement than what ML code does
usually. Something really interesting was how we used compression to
detect heart sounds features automatically in each beat.
Now we introduce something similar in spirit: Until now sometimes our
code was unable to find the correct heart rate if the sound file was
heavily polluted by noise. Now we use a simple statistical test akin to
standard deviation, to test the randomness of beats distribution. If it
is distributed at random, then it means our threshold is too low: We
detect noise in addition to the signal.
This helped us to improve the guessing of the heart rate.
In an unrelated area, we also started to work on multi-HMM, which means detecting several, concurrent features. An idea that we toy with, would be to use our compression trick, at beat level, whereas now it is used at heart sound level. This is tricky and interesting in the context of a multi-HMM. Indeed it makes multi-HMM more similar to unsupervised ML algorithms.
Discussions
Become a Hackaday.io Member
Create an account to leave a comment. Already have an account? Log In.