Data Augmentation Model for Audio Signal Extraction | IEEE Conference Publication | IEEE Xplore

Data Augmentation Model for Audio Signal Extraction


Abstract:

In analysis of data, data augmentation pertains to ways to raise the availability of data yappending slightly tweaked copies of current data or creating new generated inf...Show More

Abstract:

In analysis of data, data augmentation pertains to ways to raise the availability of data yappending slightly tweaked copies of current data or creating new generated information from the collected data. Data augmentation can assist improve the performance and output of machine learning models by producing new and varied cases to train datasets. Data augmentation techniques, which produce deviations that the model could meet in the real world, might make machine learning models more robust. This research study suggest the use of such audio data augmentation to solve the challenges of data scarcity, and further the impact of various part of this approach is also investigated. The suggested model generates cutting-edge findings for system environmental sound prediction. With the aid of the function, we can also use the 4 kinds of data augmentation to improve the data and show the outcome in an effective manner. Data augmentation is well known for combating over fitting and improving the generalization capabilities of both the input and output systems. The proposed system's recognition performance has improved as a result of the experiments done with four augmentation techniques those are Random Sequential, Random Independent, Specified Sequential, Specified Independent.
Date of Conference: 17-19 August 2022
Date Added to IEEE Xplore: 19 September 2022
ISBN Information:
Conference Location: Coimbatore, India

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