Richardson, Nicholas Joseph Emile2022-05-112022-05-112022-05-112022-05-11http://hdl.handle.net/10012/18262Signal decomposition and multiscale signal analysis provide useful tools for time-frequency analysis. In this thesis, an overview of the signal decomposition problem is given and popular methods are discussed. A novel signal decomposition algorithm is presented: Sparse Random Mode Decomposition (SRMD). This method sparsely represents a signal as a sum of random windowed-sinusoidal features before clustering the time-frequency localized features into the constituent modes. SRMD outperforms state-of-the-art methods on a variety of mathematical signals, and is applied to real-world astronomical and musical examples. Finally, we discuss a neural network approach to tackle challenging musical signals.enoptimizationsignal processingsignal decompositionmachine learningcompressed sensingA Sparse Random Feature Model for Signal DecompositionMaster Thesis