Analisis Model Ringan Pra-terlatih Deep Learning Untuk Klasifikasi Spesies Burung

Anatasya, Remet Tirzah (2026) Analisis Model Ringan Pra-terlatih Deep Learning Untuk Klasifikasi Spesies Burung. Bachelor thesis, Institut Teknologi Kalimantan.

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Abstract

Bird biodiversity plays a vital role in maintaining ecological balance but is highly vulnerable to urbanization and environmental degradation. Manual identification of bird species requires considerable time and expertise, making automated classification systems essential. This study develops an efficient bird species classification framework using lightweight deep learning models. Six pretrained architectures were evaluated: MobileViT-V1, MobileViT-V2, EfficientNetV2-B3, ResNet-18, MobileNetV3, and ShuffleNetV2. The dataset, obtained from TensorFlowDataset, consists of 200 bird species with a total of 11,788 images. The research procedure included data preprocessing, model training, and performance evaluation using accuracy, precision, recall, F1-score, and latency metrics. Results indicate that EfficientNetV2-B3 achieved the highest accuracy (63%) and F1-score (0.63). MobileViT-V2 provided a balanced trade-off with 57% accuracy and 1.833 ms latency. ResNet-18 and MobileNetV3 demonstrated low latency (<1 ms) with moderate accuracy (53% and 56%), making them suitable for real-time applications. ShuffleNetV2 recorded the lowest latency (0.220 ms) but poor accuracy (34%), while MobileViT-V1 showed low accuracy (42%) with relatively high latency (2.514 ms). Based on comparative analysis, MobileNetV3 is recommended as the optimal model for deployment on resource-constrained devices, offering the best balance between accuracy and computational efficiency

Item Type: Thesis (Bachelor)
Subjects: A General Works > AI Indexes (General)
Divisions: Jurusan Matematika dan Teknologi Informasi > Informatika
Depositing User: Remet Tirzah Anatasya
Date Deposited: 09 Jan 2026 03:27
Last Modified: 09 Jan 2026 03:27
URI: http://repository.itk.ac.id/id/eprint/25022

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