“AgriFutura”-Plant Disease Detection with Fertilizer Recommendation using Deep Learning (CNN)
- Version
- Download 34
- File Size 431.43 KB
- File Count 1
- Create Date 26 December 2025
- Last Updated 26 December 2025
AgriFutura”-Plant Disease Detection with Fertilizer Recommendation using Deep Learning (CNN)
Aysha Sabah1, Bhumika Ladu Parab2, Deepthi L3, Gunashree S4
1Information Science and Engineering, AMC Engineering College
2Information Science and Engineering, AMC Engineering College
3Information Science and Engineering, AMC Engineering College
4Information Science and Engineering, AMC Engineering College
Abstract - Agriculture is an important, critical sector that ensures the provision of sustenance and economic viability. Among the critical issues that affect agricultural practitioners is the ability to detect plant diseases in real time, which has critical impacts on plant yield and viability. Traditionally, disease detection requires human assessment and consultation, which is associated with costs and human error. To overcome the aforementioned limitations and shortcomings, this work introduces AgriFutura, an online plant disease identification and fertilizer guidance platform that utilizes deep learning concepts. The proposed platform utilizes a Convolutional Neural Network (CNN) architecture to evaluate images of plant leaves and identify them based on health and disease. In addition to healthcare guidance and recommendations, the platform also provides disease-oriented fertilizer guidance and recommendations, which can aid decision-making. The proposed platform is simple to use and therefore does not incur costs that are normally associated with specialized technical skills and knowledge. Results from experimental studies indicate that the proposed platform is effective and has short response times, which therefore qualifies to be used in real-life agricultural settings.
Key Words: Smart Agriculture, Plant Disease Detection, Convolutional Neural Network, Deep Learning, Fertilizer Recommendation