Tomato maturity stage prediction based on vision transformer and deep convolution neural networks
Pradeep Nahak,
Dilip Kumar Pratihar,
Alok Kanti Deb
Abstract:Automated assessment of tomato crop maturity is vital for improving agricultural productivity and reducing food waste. Traditionally, farmers have relied on visual inspection and manual assessment to predict tomato maturity, which is prone to human error and time-consuming. Computer vision and deep learning automate this process by analysing visual characteristics, enabling data-driven harvest decisions, optimising quality, and reducing waste for sustainable and efficient agriculture. This research demonstrate… Show more
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