Published November 29, 2022 | Version v1
Conference paper Open

Machine learning based animal emotion classification using audio signals

  • 1. Wallee AG
  • 2. SoftServe

Description

This paper presents the machine learning approach to the automated classification of a dog's emotional state based on the processing and recognition of audio signals. It offers helpful information for improving human-machine interfaces and developing more precise tools for classifying emotions from acoustic data. The presented model demonstrates an overall accuracy value above 70% for audio signals recorded for one dog.

Notes

M. Slobodian and M. Kozlenko, "Machine learning based animal emotion classification using audio signals," 2022 International Conference on Innovative Solutions in Software Engineering (ICISSE), Vasyl Stefanyk Precarpathian National University, Ivano-Frankivsk, Ukraine, Nov. 29-30, 2022, pp. 277-281, doi: 10.5281/zenodo.7514137

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