Aid System for Estimating Agricultural Yield Using a Deep Learning Technique: Tomato Case

dc.contributor.authorDJARA, Tahirou
dc.contributor.authorSONON, jehovah-nis
dc.date.accessioned2026-06-02T16:06:57Z
dc.date.available2026-06-02T16:06:57Z
dc.date.issued2024
dc.description.abstractThe precision of traditional methods for estimating crop yield is a major challenge, particularly for large areas. To improve this process, we developed a tomato detection and localization system using deep learning techniques. The system uses Faster-RCNN, a cutting edge technology of object detection model, to detect and localize tomatoes in images. We trained the model on a database of 150 images, which were normalized to 100*100 pixels in RGB. The system estimates the real sizes of tomatoes using the Ground Sampling Distance method and predicts their masses using a regression model. The model produces an average absolute error of 42.365% and a quadratic error of 51.044%. Our system provides a more efficient and accurate way to estimate tomato crop yields on a large scale.
dc.identifier.doi10.9734/CJAST
dc.identifier.otherBECDB-16864
dc.identifier.urihttps://dspace.uac.bj/handle/123456789/14095
dc.language.isofr
dc.relation.ispartofCurrent Journal of Applied Science and Technology (CJAST)
dc.subjectTomato
dc.subjectobject detection
dc.subjectconvolutional neural networks
dc.subjectdeep learning
dc.subjectdrone
dc.subjectagricultural yield
dc.subjectprecision agriculture
dc.subjectground sampling distance
dc.subjectregression model
dc.subjectfaster-RCNN.
dc.titleAid System for Estimating Agricultural Yield Using a Deep Learning Technique: Tomato Case
dc.typeArticle

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