Post-grad speech, audio processing & recognition coursework - Hidden Markov Model invesigations. Achieved 98%
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Hidden Markov Models

Speech recognition coursework focusing on training and analysing hidden markov models, main dev notebook here.

PDFs with observations marked Probability density functions with provided observations marked

Occupation likelihoods Occupation likelihoods for each state through time

Training iterations Output Gaussian functions through 5 iterations of Baum-Welch training