基于颜色分类策略的番茄早疫病自动检测

Juan F. Molina, R. Gil, C. Bojacá, Francisco Gomez, Hugo Franco
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引用次数: 18

摘要

本文提出了一种用于番茄真菌感染自动检测的计算机视觉原型策略。这种计算机视觉方法是基于通过颜色描述(MPEG-7标准描述符)对番茄小叶(健康和早期枯萎病感染的感兴趣区域- roi)进行表征。由专家手动标注的小型ROI集合用于简单分类器(1-NN)的训练和测试。所研究的每个描述子的性能(颜色结构描述子,CSD;颜色布局描述符,CLD;和可伸缩颜色描述符(SCD)通过嵌套留一交叉验证进行分析。内部循环允许单独的描述符配置评估,而外部循环产生不同描述符之间的平均性能比较。结果表明,CSD比SCD和CLD具有更好的性能。
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Automatic detection of early blight infection on tomato crops using a color based classification strategy
This work presents a Computer Vision prototype strategy for the automatic detection of mycotic infections on tomato crops. This Computer Vision method is based on the characterization of tomato leaflets (both healthy and early blight-infected regions of interest - ROIs) by color description (MPEG-7 standard descriptors). A small size ROI collection manually annotated by experts is used for both training and testing of a simple classifier (1-NN). The performance of each descriptor under study (Color Structure Descriptor, CSD; Color Layout descriptor, CLD; and Scalable Color Descriptor, SCD) is analysed by a nested-leave-one-out cross validation. The inner loop permits a individual descriptor configuration evaluation, while the outer loop yields an average performance comparison between different descriptors. Our results show that CSD had a better performance than SCD and CLD.
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