arXiv Open Access 2025

Evaluating Deep Learning Models for African Wildlife Image Classification: From DenseNet to Vision Transformers

Lukman Jibril Aliyu Umar Sani Muhammad Bilqisu Ismail Nasiru Muhammad Almustapha A Wakili +3 lainnya
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Abstrak

Wildlife populations in Africa face severe threats, with vertebrate numbers declining by over 65% in the past five decades. In response, image classification using deep learning has emerged as a promising tool for biodiversity monitoring and conservation. This paper presents a comparative study of deep learning models for automatically classifying African wildlife images, focusing on transfer learning with frozen feature extractors. Using a public dataset of four species: buffalo, elephant, rhinoceros, and zebra; we evaluate the performance of DenseNet-201, ResNet-152, EfficientNet-B4, and Vision Transformer ViT-H/14. DenseNet-201 achieved the best performance among convolutional networks (67% accuracy), while ViT-H/14 achieved the highest overall accuracy (99%), but with significantly higher computational cost, raising deployment concerns. Our experiments highlight the trade-offs between accuracy, resource requirements, and deployability. The best-performing CNN (DenseNet-201) was integrated into a Hugging Face Gradio Space for real-time field use, demonstrating the feasibility of deploying lightweight models in conservation settings. This work contributes to African-grounded AI research by offering practical insights into model selection, dataset preparation, and responsible deployment of deep learning tools for wildlife conservation.

Topik & Kata Kunci

Penulis (8)

L

Lukman Jibril Aliyu

U

Umar Sani Muhammad

B

Bilqisu Ismail

N

Nasiru Muhammad

A

Almustapha A Wakili

S

Seid Muhie Yimam

S

Shamsuddeen Hassan Muhammad

M

Mustapha Abdullahi

Format Sitasi

Aliyu, L.J., Muhammad, U.S., Ismail, B., Muhammad, N., Wakili, A.A., Yimam, S.M. et al. (2025). Evaluating Deep Learning Models for African Wildlife Image Classification: From DenseNet to Vision Transformers. https://arxiv.org/abs/2507.21364

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Informasi Jurnal
Tahun Terbit
2025
Bahasa
en
Sumber Database
arXiv
Akses
Open Access ✓