基于深度学习与复合字典的马铃薯病害识别方法
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国家自然科学基金项目(31971792、61461005)


Identification Method for Potato Disease Based on Deep Learning and Composite Dictionary
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    摘要:

    为解决自然环境下小样本病害叶片识别率低、鲁棒性不强的问题,以马铃薯病害叶片为研究对象,提出一种基于深度卷积神经网络与复合特征字典结合的病害叶片识别方法。首先,利用迁移学习技术对Faster R-CNN模型进行训练,检测出病害叶片的斑块区域;然后,采用高密度采样方法对整个斑块区域提取颜色特征和SIFT特征,建立颜色特征和SIFT特征词汇表,再由K-均值聚类算法对两类表观特征词汇表进行聚类,构造出复合特征字典;最后,将病害区域提取的特征在复合特征字典中映射后获得特征直方图,利用支持向量机训练出病害的识别模型。试验结果表明,复合特征字典中视觉单词数为50时,病害识别的鲁棒性和实时性最佳,平均识别准确率为90.83%,单帧图像耗时1.68s;在颜色特征和SIFT特征组合下,本文方法在自然光照条件下对病害的平均识别准确率最高,达到84.16%;在相同数据集下,与传统词袋法相比,本文方法的平均识别准确率提高了25.45个百分点。

    Abstract:

    Potato disease is one of the most important influencing factors for agricultural high quality. Traditional methods of image processing for disease identification under light of the outdoor natural environment are easily affected by typical interfering factors, such as illumination change, uneven brightness, similar foreground and so on. Therefore, these factors will lead to low recognition rate and low robustness. To improve the accuracy and stability of disease identification, a disease recognition method of deep convolutional neural network and composite feature words was proposed. Firstly, the Faster R-CNN model was trained by the migration learning technology, disease areas were detected with leaf image. Secondly, color feature and SIFT feature were extracted from the entire patch region set by high-density sampling method, and color feature and SIFT feature vocabulary were established. Then, the K-means algorithm was used to cluster the two types of apparent feature vocabularies to construct a composite feature dictionary. Finally, the features extracted from the disease area were mapped in the compound dictionary to obtain the feature histogram, and the identification model of the disease was trained by the support vector machine. The experimental results showed that when the number of visual words in the couposite dictionary was 50, the robustness and real-time performance of disease recognition was better, the average recognition rate was 90.83%, as well as the single frame image average time-consuming was 1.68s. The average accuracy of model detection reached 84.16%, when the feature used a combination of color features and SIFT features. In addition, compared with the traditional bag of word recognition methods for the same data set, the proposed method could make the recognition accuracy increase by 25.45 percentage points.

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杨森,冯全,张建华,孙伟,王关平.基于深度学习与复合字典的马铃薯病害识别方法[J].农业机械学报,2020,51(7):22-29. YANG Sen, FENG Quan, ZHANG Jianhua, SUN Wei, WANG Guanping. Identification Method for Potato Disease Based on Deep Learning and Composite Dictionary[J]. Transactions of the Chinese Society for Agricultural Machinery,2020,51(7):22-29.

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  • 收稿日期:2019-10-19
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  • 在线发布日期: 2020-07-10
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