TY - GEN
T1 - Machine Learning: Challenges, Limitations, and Compatibility for Audio Restoration Processes
AU - Sowells-Boone, Evelyn
AU - Casey, Owen
AU - Dave, Rushit
AU - Seliya, Naeem
AU - Sowells Boone, Evelyn R.
PY - 2021
Y1 - 2021
N2 - In this paper, machines learning networks are explored for their use in restoring degraded and compressed speech audio. The project intent is to build a new trained model from voice data to learn features of compression artifacting (distortion introduced by data loss from lossy compression) and resolution loss with an existing algorithm presented in 'SEGAN: Speech Enhancement Generative Adversarial Network'. The resulting generator from the model was then to be used to restore degraded speech audio. This paper details an examination of the subsequent compatibility and operational issues presented by working with deprecated code, which obstructed the trained model from successfully being developed. This paper further serves as an examination of the challenges, limitations, and compatibility in the current state of machine learning.
AB - In this paper, machines learning networks are explored for their use in restoring degraded and compressed speech audio. The project intent is to build a new trained model from voice data to learn features of compression artifacting (distortion introduced by data loss from lossy compression) and resolution loss with an existing algorithm presented in 'SEGAN: Speech Enhancement Generative Adversarial Network'. The resulting generator from the model was then to be used to restore degraded speech audio. This paper details an examination of the subsequent compatibility and operational issues presented by working with deprecated code, which obstructed the trained model from successfully being developed. This paper further serves as an examination of the challenges, limitations, and compatibility in the current state of machine learning.
UR - https://dx.doi.org/10.1109/ICCMA53594.2021.00013
U2 - 10.1109/iccma53594.2021.00013
DO - 10.1109/iccma53594.2021.00013
M3 - Conference contribution
BT - 2021 International Conference on Computing, Computational Modelling and Applications, ICCMA 2021
ER -