Sign Language Recognition Using Temporal Classification
Devices like the Myo armband available in the market today enable us to collect data about the position of a user's hands and fingers over time. We can use these technologies for sign language translation since each sign is roughly a combination of gestures across time. In this work, we utilize...
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Zusammenfassung: | Devices like the Myo armband available in the market today enable us to
collect data about the position of a user's hands and fingers over time. We can
use these technologies for sign language translation since each sign is roughly
a combination of gestures across time. In this work, we utilize a dataset
collected by a group at the University of South Wales, which contains
parameters, such as hand position, hand rotation, and finger bend, for 95
unique signs. For each input stream representing a sign, we predict which sign
class this stream falls into. We begin by implementing baseline SVM and
logistic regression models, which perform reasonably well on high quality data.
Lower quality data requires a more sophisticated approach, so we explore
different methods in temporal classification, including long short term memory
architectures and sequential pattern mining methods. |
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DOI: | 10.48550/arxiv.1701.01875 |