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首页> 外文期刊>Computers and Electronics in Agriculture >Identification of citrus disease using color texture features and discriminant analysis.
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Identification of citrus disease using color texture features and discriminant analysis.

机译:使用颜色纹理特征和判别分析来鉴定柑橘病。

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摘要

The citrus industry is an important constituent of Florida's overall agricultural economy. Proper disease control measures must be undertaken in citrus groves to minimize losses. Technological strategies using machine vision and artificial intelligence are being investigated to achieve intelligent farming, including early detection of diseases in groves, selective fungicide application, etc. This research used the color co-occurrence method (CCM) to determine whether texture based hue, saturation, and intensity (HSI) color features in conjunction with statistical classification algorithms could be used to identify diseased and normal citrus leaves under laboratory conditions. Normal and diseased citrus leaf samples with greasy spot, melanose, and scab were evaluated. The leaf sample discriminant analysis using CCM textural features achieved classification accuracies of over 95% for all classes when using hue and saturation texture features. Data models that relied on intensity features suffered a reduction in classification accuracy when categorizing leaf fronts, due to the darker pigmentation of the leaf fronts. This reduction was not experienced on the leaf backs where the lighter pigmentation clearly revealed the disease discoloration. Although, high accuracies were achieved when using an unreduced dataset consisting of all HSI texture features, the overall best performer was determined to be a reduced data model that relied on hue and saturation features. This model was selected due to reduced computational load and the elimination of intensity features, which are not robust in the presence of ambient light variation..
机译:柑橘产业是佛罗里达州整体农业经济的重要组成部分。必须在柑橘林中采取适当的疾病控制措施,以最大程度地减少损失。正在研究使用机器视觉和人工智能的技术策略来实现智能化农业,包括及早发现树林中的疾病,选择性杀真菌剂的应用等。这项研究使用了颜色共现法(CCM)来确定是否基于纹理的色相,饱和度,以及强度(HSI)颜色特征与统计分类算法的结合,可用于在实验室条件下识别病变和正常的柑橘叶片。评估了正常和患病的带有油腻斑点,黑色素和结ab的柑橘叶片样品。使用CCM纹理特征进行叶样本判别分析时,使用色相和饱和度纹理特征时,所有类别的分类精度均达到95%以上。由于叶前部的色素沉着,在对叶前部进行分类时,依赖强度特征的数据模型的分类精度有所下降。这种减少在较浅的色素沉着清楚地表明疾病变色的叶背上没有经历。尽管使用包含所有HSI纹理特征的未约简数据集可实现较高的准确性,但总体上表现最佳的还是确定为依赖色相和饱和度特征的约简数据模型。选择该模型是因为减少了计算量,并消除了强度特征,这些特征在存在环境光变化的情况下并不可靠。

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