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Artificial intelligence for detection and quantification of rust and leaf miner in coffee crop

A convolutional neural network algorithm detects rust and leaf miner in coffee leaves and quantifies disease severity through a mobile application, achieving significant precision and low computational cost.

Year
2021
Venue
arXiv 2021
Authors
3
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arxiv.org/abs/2103.11241v2ARXIV-DEFAULT
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Abstract

Pest and disease control plays a key role in agriculture since the damage caused by these agents are responsible for a huge economic loss every year. Based on this assumption, we create an algorithm capable of detecting rust (Hemileia vastatrix) and leaf miner (Leucoptera coffeella) in coffee leaves (Coffea arabica) and quantify disease severity using a mobile application as a high-level interface for the model inferences. We used different convolutional neural network architectures to create the object detector, besides the OpenCV library, k-means, and three treatments: the RGB and value to quantification, and the AFSoft software, in addition to the analysis of variance, where we compare the three methods. The results show an average precision of 81,5% in the detection and that there was no significant statistical difference between treatments to quantify the severity of coffee leaves, proposing a computationally less costly method. The application, together with the trained model, can detect the pest and disease over different image conditions and infection stages and also estimate the disease infection stage.

Authors

3