Sound event recognition in unstructured environments using spectrogram image processing

@inproceedings{Dennis2014SoundER,
  title={Sound event recognition in unstructured environments using spectrogram image processing},
  author={Jonathan William Dennis},
  year={2014}
}
The objective of this research is to develop feature extraction and classification techniques for the task of sound event recognition (SER) in unstructured environments. Although this field is traditionally overshadowed by the popular field of automatic speech recognition (ASR), an SER system that can achieve human-like sound recognition performance opens up a range of novel application areas. These include acoustic surveillance, bio-acoustical monitoring, environmental context detection… CONTINUE READING

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