Face: Fast, Accurate and Context-Aware Audio Annotation and Classification

03/07/2023
by   M. Mehrdad Morsali, et al.
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This paper presents a context-aware framework for feature selection and classification procedures to realize a fast and accurate audio event annotation and classification. The context-aware design starts with exploring feature extraction techniques to find an appropriate combination to select a set resulting in remarkable classification accuracy with minimal computational effort. The exploration for feature selection also embraces an investigation of audio Tempo representation, an advantageous feature extraction method missed by previous works in the environmental audio classification research scope. The proposed annotation method considers outlier, inlier, and hard-to-predict data samples to realize context-aware Active Learning, leading to the average accuracy of 90 algorithm for sound classification obtained average prediction accuracy of 98.05 and implementation results are available at https://github.com/gitmehrdad/FACE.

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