HAND GESTURE RECOGNITION ON BAHASA ISYARAT INDONESIA (BISINDO) BY USING VISION-BASED MACHINE LEARNING
Sign language, a type of communication based on hand movements, is widely used by deaf people. The two types of sign language used in Indonesia are SIBI (Indonesian Sign Language System) and BISINDO (Indonesian Sign Language). BISINDO is more commonly utilized in everyday life because BISINDO was...
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Format: | Theses |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/65105 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Sign language, a type of communication based on hand movements, is widely used
by deaf people. The two types of sign language used in Indonesia are SIBI
(Indonesian Sign Language System) and BISINDO (Indonesian Sign Language).
BISINDO is more commonly utilized in everyday life because BISINDO was
developed by Deaf People themselves so that it is easier to understand.
Communication issues often occur between Deaf people and hearing people. As a
result, we need media that can help them communicate more effectively. One of the
technologies that can be employed is SLR (Sign Language Recognition). Visionbased SLR is one of the many various approaches used in SLR. The fact that it does
not require a specific gadget to be attached to the hand and instead relies on the
user making movements in front of the camera with their bare hands provides a
number of advantages for vision-based SLR. This research developed a machine
learning model that can recognize BISINDO static and dynamic gestures, including
the alphabet (A-Z), numbers (1-10), and seven frequent words, using a vision-based
SLR technique. The model was created using the LSTM (Long Short-Term Memory)
architecture. The LSTM model was trained and tested using the BISINDO gestures
dataset. The validation accuracy of the static model was 99.69%, and the validation
accuracy of the dynamic model was 99.17 %. For testing using testing dataset, this
research yielded the accuracy 99,63% on static gestures and 98,33% on dynamic
model. This research also combined the model into a single simple system for
realtime testing. The realtime testing was completed 45 times by 15 BISINDO
signers, yielding a static model accuracy of 69.42%, a dynamic model accuracy of
56.67%, and an overall model accuracy of 66.45%. User experience measurement
was also carried out using User Experience Questionnaire Plus (UEQ+) with the
results of Attractiveness (DT) 2.02, Efficiency (EF) 1.32, Reliability Level (TK)
1.53, Novelty (KB) 1.73, Usability (KG) 2.37, Intuitive Use (PI) 1.95, and Quality
of Response (KR) 1.67 which can be interpreted as Good for each measured scale.
However, the Quality of Response (KR), Usability (KG), and Reliability Level (TK)
scales which are ranked 1, 3, and 4 respectively on the importance rating have
lower scores when compared to the other scales. |
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