Rice serves as a fundamental staple for a significant portion of the global population, playing an essential role in ensuring food security worldwide. However, the continuous threat of various diseases risks both yield and quality. Detecting these diseases at an early stage is very important for effective management of these risks. This research introduces a novel approach for rice disease detection using the fusion vision boosted classifier (FVBC), integrating VGG19 for feature extraction and LightGBM for classification. The meticulously curated dataset comprises 2627 rice leaf images, categorized into training, validation, and test sets for robust model evaluation. The FVBC model achieves impressive accuracies of 97.78% on the training set, 97.5% on the validation set, and 97.6% on the test set, demonstrating its efficacy in disease detection. The model's performance compared with other classifiers, including Softmax, highlights its superiority. Hyperparameter tuning, such as learning rate and tree depth for LightGBM, was crucial for optimizing model performance. The proposed FVBC model offers a non-invasive, scalable solution for early disease detection, empowering farmers to implement timely interventions and enhance agricultural productivity.