Ümit Can Kumdereli's scientific contributions

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Publications (1)


Figure 2. Flow chart of the software.
Figure 3. An example of the main graphical user interface. Windows on the left, Android on the right.
Figure 5. The five gestures recognized by the Myo Armband [45].
Comparison of existing it based solutions.
Features extracted from sEMG signals.

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Novel Wearable System to Recognize Sign Language in Real Time
  • Preprint
  • File available

May 2024

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5 Reads

İlhan Umut

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Ümit Can Kumdereli

The aim of this study is to develop a software solution for real-time recognition of sign language words using two arms. This will enable communication between hearing-impaired individuals and those who can hear. Several sign language recognition systems have been developed using different technologies, including cameras, armbands, and gloves. The system developed in this study utilizes surface electromyography (muscle activity) and inertial measurement unit (motion dynamics) data from both arms. Other methods often have drawbacks, such as high costs, low accuracy due to ambient light and obstacles, and complex hardware requirements, which have prevented their practical application. A software has been developed that can run on different operating systems using digital signal processing and machine learning methods specific to the study. For the test, we created a dataset of 80 words based on their frequency of use in daily life and performed a thorough feature extraction process. We tested the recognition performance using various classifiers and parameters and compared the results. The Random Forest algorithm was found to have the highest success rate with 99.875% accuracy, while the Naive Bayes algorithm had the lowest success rate with 87.625% accuracy. Feedback from a test group of 10 people indicated that the system is user-friendly, aesthetically appealing, and practically useful. The new system enables smoother communication for people with hearing disabilities and promises seamless integration into daily life without compromising user comfort or lifestyle quality.

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