Definition and recovery of kinematic features for recognition of American sign language movements

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An approach to recognizing human hand gestures from a monocular temporal sequence of images is presented. Of concern is the representation and recognition of hand movements that are used in single-handed American sign language (ASL). The approach exploits previous linguistic analysis of manual languages that decompose dynamic gestures into their static and dynamic components. The first level of decomposition is in terms of three sets of primitives, hand shape, location and movement. Further levels of decomposition involve the lexical and sentence levels and are beyond the scope of the present paper. We propose and subsequently demonstrate that given a monocular gesture sequence, kinematic features can be recovered from the apparent motion that provide distinctive signatures for 14 primitive movements of ASL. The approach has been implemented in software and evaluated on a database of 592 gesture sequences with an overall recognition rate of 86% for fully automated processing and 97% for manually initialized processing.

论文关键词:Gesture recognition,Motion estimation,Human computer interaction (HCI),Linguistics,American sign language (ASL)

论文评审过程:Received 23 August 2006, Revised 16 February 2008, Accepted 3 April 2008, Available online 22 April 2008.

论文官网地址:https://doi.org/10.1016/j.imavis.2008.04.007