This lecture covers the concept of Mixture of Gauss Functions, explaining the density of mixture, linear weighted combination, and the expectation-maximization (E-M) algorithm. It also discusses Gaussian Mixture Modeling with E-M, hyper-parameter optimization, and the tradeoff between computation costs and better fit.