【24h】

Detecting Soybean Rust Severity In Terms of Multispectral Images

机译:在多光谱图像方面检测大豆生锈严重程度

获取原文

摘要

Soybean rust is one of the most destructive foliar diseases of soybean primarily because it produces copious amounts of air-borne spores that can infect large areas of soybean production causing significant yield losses if left unchecked. Timely application of fungicide in the early stage of rust infection is critical for effective control of the disease, and heavily relies on the capability of detecting the degree of infection or severity. This paper reported research outcomes from developing an image processing method for quantitatively detecting rust severity from multispectral images. A simpler and faster threshold tuning method was developed based on HSI (Hue Saturation Intensity) color model for segmenting disease infected area from plant leaves. Two disease diagnostic parameters, i.e. ratio of infected area (RIA) and rust severity index (RSI), were extracted and used as symptom indicators for quantifying rust severity. To realize timely and automatic rust detection, another method of analyzing the centroid of leaf color distribution in the polar coordinate system was investigated to replace the segmentation approach. Plant images with various levels of rust severity were collected to support this research. Test results proved that the segmentation method was capable of detecting degrees of soybean rust severity under laboratory conditions by calculating RIA and RSI. The centroid locating method had a potential to be used for practical application in the field.
机译:大豆生锈是大豆最具破坏性叶面疾病之一,主要是因为它产生了大量的空气传播孢子,可以感染大型大豆产生的大部分,如果没有选中,可能会导致显着的产量损失。及时在生锈感染早期施用杀菌剂对于有效控制疾病至关重要,并且严重依赖于检测感染程度或严重程度的能力。本文报道了开发图像处理方法的研究结果,用于从多光谱图像中定量检测生锈严重程度的图像处理方法。基于HSI(HUE饱和强度)颜色模型开发了更简单和更快的阈值调谐方法,用于从植物叶片分割疾病感染区域进行分割。提取两种疾病诊断参数,即受感染的区域(RIA)和锈病严重程度指数(RSI)的比例,并用作量化生锈严重程度的症状指标。为了实现及时和自动防锈检测,研究了另一种分析叶片颜色分布在极性坐标系中的质心来取代分割方法。收集了各种水平的植物图像,以支持这项研究。试验结果证明,通过计算RIA和RSI,分段方法能够在实验室条件下检测大豆生锈程度。质心定位方法有可能用于在该领域的实际应用。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号