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  <title>PENERAPAN CONVOLUTIONAL NEURAL NETWORK PADA PENGENALAN BAHASA ISYARAT INDONESIA SECARA REAL-TIME</title>
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  <namePart>Rifki Ryan Maulana</namePart>
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  <publisher>Universitas Satya Negara Indonesia</publisher>
  <dateIssued>2025</dateIssued>
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  <languageTerm type="text">Indonesia</languageTerm>
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 <note>Sign language is a form of visual communication used by individuals who&#13;
are deaf or speech-impaired. However, many people in the general public still lack&#13;
understanding of sign language, which hinders communication between people&#13;
with disabilities and their surroundings. This research aims to develop a real-time&#13;
alphabet translator system for Indonesian Sign Language (BISINDO), implemented&#13;
as an Android application. The system utilizes a Convolutional Neural Network&#13;
(CNN) model based on the MobileNetV2 architecture, which is trained to recognize&#13;
26 alphabet letters from hand gesture images sized 128x128 pixels in RGB format.&#13;
The dataset was collected and processed through augmentation and divided into&#13;
training, validation, testing, and evaluation sets. The model was trained using&#13;
transfer learning and fine-tuning methods and then converted into TensorFlow Lite&#13;
(.tflite) format for deployment on Android devices. Evaluation results show that the&#13;
model achieved an average accuracy of 93% on the evaluation dataset. Testing the&#13;
Android application also demonstrated good real-time performance in recognizing&#13;
hand gestures. This application is expected to help bridge communication between&#13;
people with disabilities and the general public through practical and accessible&#13;
technology.</note>
 <note type="statement of responsibility">Rifki Ryan Maulana</note>
 <subject authority="">
  <topic>Teknik Informatika</topic>
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 <subject authority="">
  <topic>Android</topic>
 </subject>
 <subject authority="">
  <topic>CNN</topic>
 </subject>
 <subject authority="">
  <topic>Indonesian Sign Language</topic>
 </subject>
 <subject authority="">
  <topic>BISINDO</topic>
 </subject>
 <subject authority="">
  <topic>MobileNetV2</topic>
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 <subject authority="">
  <topic>TensorFlow Lite</topic>
 </subject>
 <subject authority="">
  <topic>image classification</topic>
 </subject>
 <subject authority="">
  <topic>deaf communication</topic>
 </subject>
 <classification>TI 2025</classification>
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  <physicalLocation>Institutional Repository USNI Universitas Satya Negara Indonesia</physicalLocation>
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