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Strawberry Ripeness Detection Using Deep Learning Models

Zhiyuan Mi, Weiqi Yan

2024Big Data and Cognitive Computing17 citationsDOIOpen Access PDF

Abstract

In agriculture, the timely and accurate assessment of fruit ripeness is crucial to optimizing harvest planning and reduce waste. In this article, we explore the integration of two cutting-edge deep learning models, YOLOv9 and Swin Transformer, to develop a complex model for detecting strawberry ripeness. Trained and tested on a specially curated dataset, our model achieves a mean precision (mAP) of 87.3% by using the metric intersection over union (IoU) at a threshold of 0.5. This outperforms the model using YOLOv9 alone, which achieves an mAP of 86.1%. Our model also demonstrated improved precision and recall, with precision rising to 85.3% and recall rising to 84.0%, reflecting its ability to accurately and consistently detect different stages of strawberry ripeness.

Topics & Concepts

RipenessEnvironmental scienceArtificial intelligenceComputer scienceHorticultureBiologyRipeningSmart Agriculture and AILeaf Properties and Growth MeasurementGreenhouse Technology and Climate Control
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