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Quality Classification of Enoki Mushroom Caps Based on CNN

机译:基于CNN的香菇盖的质量分类。

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Agriculture is vital to human survival and remains one of the main driving forces of several economies in the world, and more so in developing economies. Agriculture is an important industry in China. With the increase of agricultural demand, it is urgent to reduce costs while maximizing agricultural production. As there are few traditional algorithms for enoki mushroom detection, this paper proposed a automatic enoki mushroom caps classification algorithm, and built a convolutional neural network model based on LeNet. The existing preprocessing approaches and network models based on convolutional neural network are improved and fine-tuned to realize the recognition of enoki mushroom caps. Experimental results demonstrate that CNN-driven classification application has higher recognition rate for enoki mushroom caps, which provides an important reference for the application of enoki mushrooms in agricultural automation production and helps to optimize yield and increase productivity.
机译:农业对人类的生存至关重要,仍然是世界上几个经济体的主要驱动力之一,在发展中经济体中更是如此。农业是中国的重要产业。随着农业需求的增加,迫切需要在最大程度提高农业产量的同时降低成本。由于传统的圆规蘑菇帽检测算法很少,本文提出了一种自动的圆规蘑菇帽分类算法,并建立了基于LeNet的卷积神经网络模型。对现有的基于卷积神经网络的预处理方法和网络模型进行了改进和微调,以实现对enoki蘑菇帽的识别。实验结果表明,CNN驱动的分类应用程序对enoki蘑菇帽具有较高的识别率,这为enoki蘑菇在农业自动化生产中的应用提供了重要参考,并有助于优化产量和提高生产力。

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