Classification of Animal Species Using a Deep Neural Network-Based Feature Extraction Method
Date
2024Author
Ibrahim, MohammedAl-Kubaise, Khamis
Alkapti, Ali
Almusa, Abdullah
Abdelaziz, Osama
Al-Maadeed, Somaya
Sadasivuni, Kishor Kumar
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This study presents an innovative approach to animal classification and recognition utilizing machine learning and deep learning methodologies. Leveraging advanced algorithms, the proposed system achieves remarkable accuracy in identifying diverse animal species. By integrating sophisticated image processing techniques, the system enhances image quality, improving overall performance. The research demonstrated that the SVM model combined with deep neural network-based feature extraction achieved the highest accuracy of 95.65%. This paper represents a significant stride toward improving the precision and efficiency of animal classification, offering promising applications in biodiversity conservation and ecological monitoring by using advanced feature extraction approach with deep learning.
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- Center for Advanced Materials Research [1652 items ]
- Computer Science & Engineering [2518 items ]

