Implementasi Teknik Gamma Correction pada Sistem Penerjemah Bahasa Isyarat
The Implementation of Gamma Correction Technique in a Sign Language Translation System

Date
2024Author
Ewaldo, Ewaldo
Advisor(s)
Candra, Ade
Harumy, Henny Febriana
Metadata
Show full item recordAbstract
It’s known that approximately 1.3 billion people or 16% of the global population
experienced significant disabilities in 2023. Individuals with impaired hearing and
speech use sign language as a communication tool. One solution to bridge
communication between disabled people and the general public is a sign language
translation system capable of detecting hand movements and translating them into text.
A major challenge in detecting hand movements is insufficient lighting, which can
affect system performance. This study employs Gamma Correction as an image
enhancement technique to improve image quality by adjusting brightness, allowing
hand movements to be more easily detected. Gamma Correction is applied to a webbased system using the OpenCV.js library, which modifies every pixel value in images.
The dataset in this research consists of 10,000 hand gesture images divided into 25
classes, in which 7,500 images are used as training data and 2,500 images as
validation data. The testing was conducted by comparing a Convolutional Neural
Network model's performance on validation data without Gamma Correction and with
Gamma Correction. The results of testing show that even though there’s no significant
increase in training accuracy, the model's generalization ability improved.
Additionally, analysis through the Confusion Matrix revealed a 2% increase in
accuracy. This model will be integrated into a website to translate hand movements
into words or sentences.
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- Undergraduate Theses [1235]