Identification of Medicinal Mushrooms using Computer Vision and Convolutional Neural Network

Mark Jayson Y. Sutayco, M. V. Caya
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引用次数: 1

Abstract

Recent studies have demonstrated the predictive capability of deep learning methods in different agriculture fields. In this study, the researcher developed a device through the integration of Convolutional Neural Network (CNN) deep learning models and Raspberry Pi that can classify six medicinal mushrooms including Lion’s Mane, Oyster, Reishi, Shiitake, Shimeji, and Volva. The pre-trained CNN – Inception-V3 architecture was utilized to train 600 sample images of medicinal mushroom. The study employs the 80 by 20 ratio, in which the model was trained using 80 percent of the entire data and its performance was validated using the remaining 20 percent. Overall, the accuracy of the model achieved 92.7 percent. Although a relatively satisfactory performance was obtained, improvement of model performance should be sought using different optimization methods. Furthermore, for future studies, continual learning methods that alleviate catastrophic forgetting can be applied in the developed device to allow robust predictions with other types of mushrooms or other type of tasks.
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利用计算机视觉和卷积神经网络鉴别药用蘑菇
最近的研究已经证明了深度学习方法在不同农业领域的预测能力。在此次研究中,研究人员将卷积神经网络(CNN)深度学习模型与树莓派(Raspberry Pi)相结合,开发了一种可以对狮子鬃、牡蛎、灵芝、香菇、Shimeji、Volva等6种药用蘑菇进行分类的设备。利用预训练好的CNN - Inception-V3架构对600张药菇样本图像进行训练。该研究采用80 × 20的比率,其中模型使用80%的全部数据进行训练,其性能使用剩余的20%进行验证。总体而言,该模型的准确率达到了92.7%。虽然获得了比较满意的性能,但需要通过不同的优化方法寻求模型性能的提高。此外,对于未来的研究,缓解灾难性遗忘的持续学习方法可以应用于开发的设备,以允许对其他类型的蘑菇或其他类型的任务进行可靠的预测。
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