DeepSeqCoco: A Robust Mobile Friendly Deep Learning Model for Detection of Diseases in Cocos nucifera
- URL: http://arxiv.org/abs/2505.10030v1
- Date: Thu, 15 May 2025 07:25:43 GMT
- Title: DeepSeqCoco: A Robust Mobile Friendly Deep Learning Model for Detection of Diseases in Cocos nucifera
- Authors: Miit Daga, Dhriti Parikh, Swarna Priya Ramu,
- Abstract summary: Coconut tree diseases are a serious risk to agricultural yield, particularly in developing countries.<n>DeepSeqCoco is a deep learning based model for accurate and automatic disease identification from coconut tree images.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Coconut tree diseases are a serious risk to agricultural yield, particularly in developing countries where conventional farming practices restrict early diagnosis and intervention. Current disease identification methods are manual, labor-intensive, and non-scalable. In response to these limitations, we come up with DeepSeqCoco, a deep learning based model for accurate and automatic disease identification from coconut tree images. The model was tested under various optimizer settings, such as SGD, Adam, and hybrid configurations, to identify the optimal balance between accuracy, minimization of loss, and computational cost. Results from experiments indicate that DeepSeqCoco can achieve as much as 99.5% accuracy (achieving up to 5% higher accuracy than existing models) with the hybrid SGD-Adam showing the lowest validation loss of 2.81%. It also shows a drop of up to 18% in training time and up to 85% in prediction time for input images. The results point out the promise of the model to improve precision agriculture through an AI-based, scalable, and efficient disease monitoring system.
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