为实现快速而准确的油菜缺素诊断,根据不同缺素导致叶片颜色的变化,提出一种基于HSV颜色空间的非均匀直方图量化和组合多个支撑向量机分类器的智能化油菜缺素分析与诊断方法。采用霍格兰配方配制营养液,并使用山崎配方无土栽培技术,模拟正常、缺氮、缺磷、缺钾、缺硼5类营养状况下的油菜生长条件,栽培了一批甘蓝型双低油菜新品种阳光2009,采集幼苗期5类油菜叶片图像建立缺素数据库。首先使用主动轮廓模型分割油菜叶片区域,然后提取分割后的油菜叶片区域的HSV颜色直方图特征,并采用非均匀量化表征不同缺素油菜叶片图像的颜色差异,最后利用一对多方案训练多个支持向量机(support vector machine,SVM)分类器实现不同缺素油菜叶片图像的分类识别。缺素分类试验结果表明,该方法能较准确地判别常见油菜的缺素类型,对5种缺素的总体识别率达到93%,为数字化和智能化的油菜营养分析与诊断提供了一条有效途径。
Color changes of rape leaves are closely related to the variety and quantity of nutrient deficiency. To achieve a fast accurate nutrient diagnose for rape, an intelligent analysis and diagnose method for rape nutrient deficiency was proposed according to color changes of rape leaf caused by nutrient deficiency, which was based on the non-equal quantization of color histogram in the HSV (hue, saturation, value) color space and combined multiple support vector machine (SVM) classifiers. In order to build a validating database, the Hoagland’s formula was used to configure nutrient solution and the Kawasaki soilless formula was employed to cultivate a batch of new double-low rapes (the variety “Sun 2009” (Brassica napusL.)). With the soilless culture technique, 5 different growth conditions, i.e. normal, potassium-deficiency, phosphorus-deficiency, nitrogen-deficiency, and borondeficiency, were mimicked to cultivate rape samples. During the cultivation, the pH value of the nutrient solution was in the range of from 6 to 7. First, the nutrient solution was dispensed as base solution and then was diluted with water to make different working liquids for use. To avoid unexpected precipitation caused by chemical reaction, the nutrient solutions were grouped into 3 different base solutions in terms of their chemical characteristics. Next, these base solutions were configured as the original liquids in a certain order and rule. When irrigating, the original liquids were diluted with water in the proportion of 1:10. In an indoor light situation, a Canon EOS600 digital single lens reflex (DSLR) camera, which was equipped with EF-S18-135mm f/3.5-5.6 IS lens and a high-resolution 18 megapixel (MP) APS-C CMOS sensor, was applied to capture the rape leaf images. For each type of nutrient deficiency, 100 labeled leaf images in young seedling were collected and their enclosing rectangle regions were manually cropped to establish the nutrient deficiency database comprising 500 rape leaf images with 5