Snakebite Detection and Treatment Using AI
Abstract
Snakebite envenomation remains a critical public health challenge, particularly in rural and resource-limited regions where timely diagnosis and treatment are often unavailable. Traditional diagnostic methods rely heavily on clinical symptoms and patient history, which can lead to delays and misclassification. This research introduces an AI-driven snakebite detection and treatment system that leverages machine learning and computer vision to classify snakebite images into specific snake types and recommend appropriate treatment protocols. The model is trained using convolutional neural networks (CNNs) and deployed via the Django framework, ensuring accessibility through a user-friendly interface.
How to cite this paper
KOMAL SINGH MARKAM, Aarti Gupta, Keshav Maloo. "Snakebite Detection and Treatment Using AI." PaperNova (2026). https://www.papernova.online/papers/snakebite-detection-and-treatment-using-ai-t2bos
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