2023
DOI: 10.21512/emacsjournal.v5i3.10621
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Deep Transfer Learning for Sign Language Image Classification: A Bisindo Dataset Study

Ika Dyah Agustia Rachmawati,
Rezki Yunanda,
Muhammad Fadlan Hidayat
et al.

Abstract: This study aims to identify and categorize the BISINDO sign language dataset, primarily consisting of image data. Deep learning techniques are used, with three pre-trained models: ResNet50 for training, MobileNetV4 for validation, and InceptionV3 for testing. The primary objective is to evaluate and compare the performance of each model based on the loss function derived during training. The training success rate provides a rough idea of the ResNet50 model's understanding of the BISINDO dataset, while MobileNe… Show more

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