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Classifying Olive Fruits Based on Produced Oil Quality: A Benchmark Dataset and Strong Baselines

机译:根据生产的油质进行分类橄榄水果:基准数据集和强基线

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Obtaining the highest quality olive oil (OO) during the milling process is greatly desirable. Since the quality of the produced oil depends mainly on the olive fruits (OF), it is important to manually check each batch of OF before milling them in addition to performing lab tests to verify the quality of the produced OO. The goal of this work is to automate the process of classifying OF based on whether they produce extra virgin OO (EVOO) or not. We collect a large dataset of more than 11K OF images and label them as positive/negative based on whether they produced EVOO or not. We then fine-tune several state-of-the-art deep learning models on this dataset. The results show that most pretrained models are very accurate for this dataset leading the suggestion that we use the most efficient one.
机译:在铣削过程中获得最高质量的橄榄油(OO)是非常理想的。 由于所生产的油的质量主要取决于橄榄果实(OF),除了执行实验室测试之外,还可以在铣削之前手动检查每批,以验证所产生的OO的质量。 这项工作的目标是自动化根据他们是否产生额外的处女oo(evoo)进行分类的过程。 我们基于是否产生EVOO,收集超过11K图像的大型数据集,并将其标记为正/负。 然后我们在此数据集中微调几种最先进的深层学习模型。 结果表明,大多数预磨损的模型对于这一数据集来说非常准确,这是我们使用最有效的数据集的建议。

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