Abstract
The system utilizes a
convolutional neural network (CNN), renowned for its proficiency in image classification tasks. A
dataset comprising diverse bird species images is preprocessed and augmented to enhance
model robustness and generalization. The model architecture is designed to extract intricate
features, enabling accurate identification even in challenging scenarios such as varying lighting
conditions, occlusions, or similar species appearances. The model's performance is evaluated
using metrics such as accuracy, precision, recall, and F1-score, ensuring comprehensive
validation. Results indicate significant accuracy improvements over traditional machine learning
approaches, demonstrating the potential of deep learning in species identification.