基于深度学习卷积神经网络的花生籽粒完整性检测
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张军锋(1982—),男,河南水利与环境职业学院副教授,硕士。Email:zhangzj5566@126.com

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河南省高等学校青年骨干教师培养计划项目(编号:2018GGJS281)


Peanut kernel integrity detection based on deep learning convolution neural network
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    摘要:

    目的:准确区分完整花生、果仁破损花生和表皮破损花生。方法:提出了一种基于深度学习卷积神经网络(CNN)的花生籽粒完整性检测方案。搭建了花生籽粒色选系统,建立了花生籽粒图像库;利用改进的密度峰值聚类(DPC)算法对CNN卷积核进行自适应压缩,有效平衡网络深度和运算效率;采用改进的麻雀搜索算法对CNN超参数配置和网络结构进行优化,得到适用于花生籽粒完整性检测的CNN模型。结果:相比于DL-CNN、CO-Net等检测方法,该方案识别准确率提高了5.41%~13.92%,花生籽粒单幅图像检测时间缩短了约16.9%。结论:该方法可有效提高花生籽粒完整性检测的准确率和实时性。

    Abstract:

    Objective: To accurately distinguish intact peanut, nut damaged peanut and epidermis damaged peanut. Methods: A peanut seed integrity detection scheme based on deep learning convolution neural network (CNN) was proposed. The peanut seed color selection system was established and a peanut seed image database was also established; The improved density peak clustering (DPC) algorithm was used to adaptively compress the CNN convolution kernel to effectively balance the network depth and operation efficiency; The improved sparrow search algorithm was used to optimize the CNN super parameter configuration and network structure, and the CNN model suitable for peanut grain integrity detection was obtained. Results: Compared with other detection methods, this scheme improved the recognition accuracy by about 5.41%~13.92%, and the detection time of single image of peanut grain was shortened by about 16.9%. Conclusion: This method effectively improves the accuracy and real-time of peanut grain integrity detection.

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张军锋,尚展垒.基于深度学习卷积神经网络的花生籽粒完整性检测[J].食品与机械,2022,(5):24-29,36.
ZHANG Jun-feng, SHANG Zhan-lei. Peanut kernel integrity detection based on deep learning convolution neural network[J]. Food & Machinery,2022,(5):24-29,36.

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  • 在线发布日期: 2022-06-30
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