Hand Motion Gesture Frequency Properties and Multimodal Discourse Analysis Academic Article uri icon

abstract

  • Gesture and speech are co-expressive and complementary channels of a single human language system. While speech carries the major load of symbolic presentation, gesture provides the imagistic content. We investigate the role of oscillatory/cyclical hand motions in 'carrying' this image content. We present our work on the extraction of hand motion oscillation frequencies of gestures that accompany speech. The key challenges are that such motions are characterized by non-stationary oscillations, and multiple frequencies may be simultaneously extant. Also, the duration of the oscillations may be extended over very few cycles. We apply the windowed Fourier transform and wavelet transform to detect and extract gesticulatory oscillations. We tested these against synthetic signals (stationary and non-stationary) and real data sequences of gesticulatory hand movements in natural discourse. Our results show that both filters functioned well for the synthetic signals. For the real data, the wavelet bandpass filter bank is better for detecting and extracting hand gesture oscillations. We relate the hand motion oscillatory gestures detected by wavelet analysis to speech in natural conversation and apply to multimodal language analysis. We demonstrate the ability of our algorithm to extract gesticulatory oscillations and show how oscillatory gestures reveal portions of the multimodal discourse structure. 2006 Springer Science + Business Media, LLC.

published proceedings

  • International Journal of Computer Vision

altmetric score

  • 3

author list (cited authors)

  • Xiong, Y., & Quek, F.

citation count

  • 40

complete list of authors

  • Xiong, Yingen||Quek, Francis

publication date

  • September 2006