• DocumentCode
    763718
  • Title

    Audio-based context recognition

  • Author

    Eronen, Antti J. ; Peltonen, Vesa T. ; Tuomi, Juha T. ; Klapuri, Anssi P. ; Fagerlund, Seppo ; Sorsa, Timo ; Lorho, Gaëtan ; Huopaniemi, Jyri

  • Author_Institution
    Nokia Res. Center, Tampere, Finland
  • Volume
    14
  • Issue
    1
  • fYear
    2006
  • Firstpage
    321
  • Lastpage
    329
  • Abstract
    The aim of this paper is to investigate the feasibility of an audio-based context recognition system. Here, context recognition refers to the automatic classification of the context or an environment around a device. A system is developed and compared to the accuracy of human listeners in the same task. Particular emphasis is placed on the computational complexity of the methods, since the application is of particular interest in resource-constrained portable devices. Simplistic low-dimensional feature vectors are evaluated against more standard spectral features. Using discriminative training, competitive recognition accuracies are achieved with very low-order hidden Markov models (1-3 Gaussian components). Slight improvement in recognition accuracy is observed when linear data-driven feature transformations are applied to mel-cepstral features. The recognition rate of the system as a function of the test sequence length appears to converge only after about 30 to 60 s. Some degree of accuracy can be achieved even with less than 1-s test sequence lengths. The average reaction time of the human listeners was 14 s, i.e., somewhat smaller, but of the same order as that of the system. The average recognition accuracy of the system was 58% against 69%, obtained in the listening tests in recognizing between 24 everyday contexts. The accuracies in recognizing six high-level classes were 82% for the system and 88% for the subjects.
  • Keywords
    audio signal processing; computational complexity; feature extraction; hidden Markov models; pattern classification; 14 sec; audio-based context recognition; automatic context classification; computational complexity; discriminative training; feature vectors; hidden Markov models; linear data-driven feature transformations; mel-cepstral features; recognition accuracy; resource-constrained portable devices; spectral features; test sequence length; Acoustic devices; Acoustic signal processing; Computational complexity; Context awareness; Feature extraction; Hidden Markov models; Humans; Mobile handsets; System testing; Vectors; Audio classification; context awareness; feature extraction; hidden Markov models (HMMs);
  • fLanguage
    English
  • Journal_Title
    Audio, Speech, and Language Processing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1558-7916
  • Type

    jour

  • DOI
    10.1109/TSA.2005.854103
  • Filename
    1561288