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基于SVM的設施番茄早疫病在線識別方法研究
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國家自然科學基金項目(61871041),、北京市科技計劃項目(Z19110000401907)、國家大宗蔬菜產業(yè)技術體系崗位專家項目(CARS-23-C06),、石家莊市科技計劃項目(201490074A)和河北省重點研發(fā)計劃項目 (19226919D)


Online Detection Method of Tomato Early Blight Disease Based on SVM
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    摘要:

    為解決設施環(huán)境下番茄病害在線探測問題,,以溫室大棚內采集的番茄葉部圖像作為研究對象,以番茄早疫病為例提出了一種結合顏色紋理特征(color moments+color coherence vector+co-occurrence among adjacent LBPs,,CCR)并基于支持向量機(SVM)的CCR-SVM葉部圖像病斑識別方法,。為實現小樣本及復雜背景下的快速識別,首先采用滑動窗口將訓練用番茄葉部病害圖像切割成小區(qū)域圖像,選取不包含背景的小區(qū)域圖像作為樣本,,從而增加樣本數量和多樣性,。通過訓練的CCR-SVM模型對早疫病病斑子圖像正負樣本分類識別。實驗結果表明,,本文方法離線識別準確率為96.97%,,在線平均識別準確率達86.39%,平均單幀圖像識別時間為0.073s,。表明CCR-SVM模型可準確識別并定位復雜背景下的早疫病病斑,,且該方法計算量小、系統(tǒng)要求低,,為復雜環(huán)境下番茄病害快速識別提供了新的思路,。

    Abstract:

    Early blight disease is a common disease of greenhouse tomato, which seriously damages the yield and economic benefits. As affected by complex background such as soil, ground, plastic film and lots of overlapping green leaves in greenhouse, it is difficult to recognize disease from image of tomato leaf. In order to provide a solution for such problem, an innovate tomato early blight disease spot detection method of sliding window SVM (SW-SVM) was proposed. To enhance recognition accuracy and stability, color and texture features included color moment (CM), color coherence vector (CCV) and rotation invariant co-occurrence among adjacent LBPs (RIC-LBP) features were introduced, and CCR-SVM (CM+CCV+RIC-LBP+SVM) classification model were trained by using RBF-SVM with the extracted color texture feature (CCR) from the training samples. Meanwhile, for supporting small region data set and to fulfill recognize performance under complex environment, original images were divided to small region images by applying sliding window. And small region images belonged to early blight disease spot, healthy leaves and ground background were selected and divided into three catalogs as training samples. To verify feasibility of the proposed method, offline and online experiments were conducted. For offline classification performance, cross validation average recognition rate was 99.55% and recognition rate for testing data set was 96.97%, and average testing time for a single sliding window image was 0.004s. For online detection performance, the results showed that the proposed method can realize average accuracy rate for the original images with 86.39%, average detection time of single sliding windows image with 0.073s. For rotated images and pixel value adjusted image data, average accuracy rate was 88.98% and 92.59%, respectively; average error recognition rate was 12.71% and 16.44%, respectively; average missing recognition rate was 10.93% and 7.41%, respectively; and average disease detection time of single sliding window image was 0.075s and 0.074s, respectively. As a conclusion, the offline and online experiments results showed that the proposed method of CCR-SVM realized high accuracy and low memory requirement, which could provide real-time solution for tomato early blight detection in greenhouse.

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張 燕,田國英,楊英茹,朱華吉,李瑜玲,吳華瑞.基于SVM的設施番茄早疫病在線識別方法研究[J].農業(yè)機械學報,2021,52(S0):125-133;206. ZHANG Yan, TIAN Guoying, YANG Yingru, ZHU Huaji, LI Yuling, WU Huarui. Online Detection Method of Tomato Early Blight Disease Based on SVM[J]. Transactions of the Chinese Society for Agricultural Machinery,2021,52(S0):125-133,;206.

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  • 收稿日期:2021-07-10
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  • 在線發(fā)布日期: 2021-11-10
  • 出版日期: 2021-12-10
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