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Identification of Wild Mushroom Based on Ensemble Learning

机译:基于集合学习的野生蘑菇鉴定

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摘要

Yunnan Province has the most abundant wild mushroom resources in China. With the development of modern science and technology, wild mushroom resources have attracted more and more attention because of their potential edible, medicinal, and economic value. The identification of wild mushrooms is regarded as an important research field by more and more researchers. In this paper, we collected the data of wild mushrooms in multiple scenes as the training data of the base learners. The VGG16, Resnet18, and Googlenet models integrated by bagging algorithm are trained. Then they are used for integration learning. So that adapt to the complex scenes of wild mushroom recognition and improve the accuracy and generalization ability. Experiments have shown that, compared with a single CNN, our model showed better performance. With our 10% Holdout Validation Dataset, we saw that the accuracy of the integrated model is 93.1%, compared with the best single bagging integrated model 90.8%.
机译:云南省拥有中国最丰富的野生蘑菇资源。 随着现代科学技术的发展,野生蘑菇资源由于其潜在的食用,药用和经济价值而受到越来越多的关注。 野生蘑菇的鉴定被越来越多的研究人员被视为重要的研究领域。 在本文中,我们将多个场景中的野生蘑菇数据作为基础学习者的培训数据收集。 培训由BAGGANG算法集成的VGG16,RENET18和Googlenet模型。 然后它们用于集成学习。 因此,适应野生蘑菇识别的复杂场景,提高准确性和泛化能力。 实验表明,与单一CNN相比,我们的模型表现出更好的性能。 凭借我们的10%HoldOut验证数据集,我们看到综合型号的准确性为93.1%,而最佳单袋综合型号90.8%相比。

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