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Early and accurate detection of harmful farm insects is essential for ensuring agricultural productivity, food security, and sustainable farming practices. This study proposes a Vision Transformer based deep learning framework for automated multi class insect detection in agricultural environments. The model leverages global self-attention mechanisms and transfer learning from large scale pretraining to capture both local visual features and long range contextual relationships, enabling robust fine grained insect classification. A balanced learning strategy incorporating random oversampling and data augmentation is employed to address class imbalance and improve model generalization. The framework is evaluated on a multi-class insect image dataset containing 15 agriculturally significant species under realistic field conditions. Experimental results demonstrate stable convergence, strong generalization, and reliable classification performance across diverse insect categories. The proposed system provides a scalable and intelligent solution for precision agriculture, supporting early pest identification, targeted intervention, and data driven crop protection strategies. This work highlights the potential of transformer based architectures for advancing automated pest monitoring and sustainable agricultural management. Key Words: Vision Transformer, Agricultural Pest Detection, Farm Insect Classification, Deep Learning, Computer Vision, Smart Farming
Published in: International Scientific Journal of Engineering and Management
Volume 05, Issue 03, pp. 1-9
DOI: 10.55041/isjem05543