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H.5.1 [Information Interfaces and Presentation]: (2008)

Abstract
Classification of natural hand gestures is usually approached by applying pattern recognition to the movements of the hand. However, the gesture categories most frequently cited in the psychology literature are fundamentally multimodal; the definitions make reference to the surrounding linguistic context. We address the question of whether gestures are naturally multimodal, or whether they can be classified from hand-movement data alone. First, we describe an empirical study showing that the removal of auditory information significantly impairs the ability of human raters to classify gestures. Then we present an automatic gesture classification system based solely on an n-gram model of linguistic context; the system is intended to supplement a visual classifier, but achieves 66 % accuracy on a three-class classification problem on its own. This represents higher accuracy than human raters achieve when presented with the same information.

Publication details
Download http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.86.8378
Source http://rationale.csail.mit.edu/publications/Eisenstein2004Visual.pdf
Contributors CiteSeerX
Repository CiteSeerX - Scientific Literature Digital Library and Search Engine (United States)
Keywords Human Factors, Reliability, Experimentation Keywords Gesture Recognition, Gesture Taxonomies, Multimodal Disambiguation, Validity
Type text
Language English
Relation 10.1.1.14.1751, 10.1.1.15.3658, 10.1.1.111.5468, 10.1.1.52.2440, 10.1.1.20.5479, 10.1.1.58.1366