GW'03 Abstract

Christian Vogler and Dimitris Metaxas. Handshapes and movements: Multiple-channel ASL recognition. Springer Lecture Notes in Artificial Intelligence 2915, pp. 247-258, 2004. Proceedings of the Gesture Workshop'03, Genova, Italy.

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In this paper we present a framework for recognizing American Sign Language (ASL). The main challenges in developing scalable recognition systems are to devise the basic building blocks from which to build up the signs, and to handle simultaneous events, such as signs where both the hand moves and the handshape changes. The latter challenge is particularly thorny, because a naive approach to handling them can quickly result in a combinatorial explosion.

We loosely follow the Movement-Hold model to devise a breakdown of the signs into their constituent phonemes, which provide the fundamental building blocks. We also show how to integrate the handshape into this breakdown, and discuss what handshape representation works best. To handle simultaneous events, we split up the signs into a number of channels that are independent from one another. We validate our framework in experiments with a 22-sign vocabulary and up to three channels.