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一种基于深度学习的腰果成熟度分类方法。

A deep learning based approach for classifying the maturity of cashew apples.

作者信息

Winklmair Moritz, Sekulic Robert, Kraus Jonas, Penava Pascal, Buettner Ricardo

机构信息

Chair of Hybrid Intelligence, Helmut-Schmidt-University/University of the Federal Armed Forces Hamburg, Hamburg, Germany.

Chair of Information Systems and Data Science, University of Bayreuth, Bayreuth, Germany.

出版信息

PLoS One. 2025 Jun 25;20(6):e0326103. doi: 10.1371/journal.pone.0326103. eCollection 2025.

Abstract

Over 95% of cashew apples are left to waste and rot on the ground. However, both cashew nuts and the often overlooked cashew apples possess significant nutritional and economic value. The cashew apple constitutes the major part (90%) of the cashew fruit, with the nut forming a modest portion (10%). Cashew nuts can be harvested and processed even after lying on the ground, but cashew apples are more delicate. Assessing the maturity status of these apples still requires human visual observation due to the challenges posed by their moisture content. Timely harvesting is crucial, as the pseudofruit is prone to microbial infections upon hitting the ground, making the process time- and labor-intensive. In this study, a Deep Learning based image classification model is presented, which can be used to automatically identify mature cashew apples. The model achieved an accuracy of 95.58% in classifying the cashew apples (immature vs. mature). Overall, the results highlight the potential of Deep Learning models for the classification of cashew apples and other fruits for precision agriculture purposes. This approach could enhance the harvesting process by enabling the utilization of the entire fruit and reducing the need for manual labor, thereby unlocking the full economic potential of the cashew tree.

摘要

超过95%的腰果苹果被丢弃在地上腐烂。然而,腰果和常常被忽视的腰果苹果都具有显著的营养和经济价值。腰果苹果占腰果果实的主要部分(90%),而腰果仅占一小部分(10%)。即使腰果落在地上后也可以收获和加工,但腰果苹果更为娇嫩。由于其含水量带来的挑战,评估这些苹果的成熟度仍然需要人工目视观察。及时收获至关重要,因为这种假果落地后容易受到微生物感染,使得这个过程既耗时又费力。在本研究中,提出了一种基于深度学习的图像分类模型,该模型可用于自动识别成熟的腰果苹果。该模型在对腰果苹果进行分类(未成熟与成熟)时达到了95.58%的准确率。总体而言,研究结果凸显了深度学习模型在为精准农业目的对腰果苹果和其他水果进行分类方面的潜力。这种方法可以通过实现对整个果实的利用并减少人工劳动力需求来改进收获过程,从而释放腰果的全部经济潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ba50/12193572/9adab85a18a7/pone.0326103.g001.jpg

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