IMPLEMENTATION OF MACHINE LEARNING AND DEEP LEARNING IN IMPROVING SIGNAL TO NOISE RATIO FOR AUDIO ANALYSIS IN DIGITAL MEDIA PLATFORMS
Abstract
Audio analysis is fast becoming a requirement of digital media for analysing multiple frequencies of sound at a time and also reduce the background noise.The urban sound challenge is increasing day by day and the problem is meant to introduce for audio analysis and processing in the usual classification scenario. Model is implemented on the basis of keras framework and librosalibrary. Keras is capable of running of the algorithm tensorflow. Kerascan be described as an interface rather than a standalone machine learning tools. Librosa is one of the python library for music and audio analysis. It helps us with necessary music information retrieval systems.
The authorcollect the database and use the data and also use the graph for a better understanding of audio data analysis.
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