Institute of Agricultural Engineering, University Bonn, 53115 Bonn, Germany.
Sensors (Basel). 2017 Aug 8;17(8):1823. doi: 10.3390/s17081823.
Plant-specific herbicide application requires sensor systems for plant recognition and differentiation. A literature review reveals a lack of sensor systems capable of recognizing small weeds in early stages of development (in the two- or four-leaf stage) and crop plants, of making spraying decisions in real time and, in addition, are that are inexpensive and ready for practical use in sprayers. The system described in this work is based on free cascadable and programmable true-color sensors for real-time recognition and identification of individual weed and crop plants. The application of this type of sensor is suitable for municipal areas and farmland with and without crops to perform the site-specific application of herbicides. Initially, databases with reflection properties of plants, natural and artificial backgrounds were created. Crop and weed plants should be recognized by the use of mathematical algorithms and decision models based on these data. They include the characteristic color spectrum, as well as the reflectance characteristics of unvegetated areas and areas with organic material. The CIE-Lab color-space was chosen for color matching because it contains information not only about coloration (a- and b-channel), but also about luminance (L-channel), thus increasing accuracy. Four different decision making algorithms based on different parameters are explained: (i) color similarity (ΔE); (ii) color similarity split in ΔL, Δa and Δb; (iii) a virtual channel 'd' and (iv) statistical distribution of the differences of reflection backgrounds and plants. Afterwards, the detection success of the recognition system is described. Furthermore, the minimum weed/plant coverage of the measuring spot was calculated by a mathematical model. Plants with a size of 1-5% of the spot can be recognized, and weeds in the two-leaf stage can be identified with a measuring spot size of 5 cm. By choosing a decision model previously, the detection quality can be increased. Depending on the characteristics of the background, different models are suitable. Finally, the results of field trials on municipal areas (with models of plants), winter wheat fields (with artificial plants) and grassland (with dock) are shown. In each experimental variant, objects and weeds could be recognized.
植物专用除草剂的应用需要传感器系统来识别和区分植物。文献综述表明,目前缺乏能够识别处于早期发育阶段(两片或四片叶期)的小型杂草和作物的传感器系统,无法实时做出喷雾决策,并且价格低廉,可直接用于喷雾器。本工作中描述的系统基于可级联和可编程的真彩色传感器,用于实时识别和识别单个杂草和作物植物。这种类型的传感器的应用适用于有和没有作物的城市地区和农田,以进行除草剂的定点应用。最初,创建了具有植物、自然和人工背景反射特性的数据库。应使用基于这些数据的数学算法和决策模型来识别作物和杂草植物。它们包括特征色谱以及无植被区域和有机物质区域的反射特性。选择 CIE-Lab 颜色空间进行颜色匹配,因为它不仅包含有关颜色(a-和 b-通道)的信息,还包含有关亮度(L-通道)的信息,从而提高了准确性。解释了基于以下参数的四种不同的决策算法:(i)颜色相似性(ΔE);(ii)颜色相似性分为 ΔL、Δa 和 Δb;(iii)虚拟通道 'd' 和(iv)反射背景和植物差异的统计分布。然后,描述了识别系统的检测成功率。此外,通过数学模型计算了测量点上最小杂草/植物覆盖率。可以识别大小为测量点的 1-5%的植物,并且可以使用 5 cm 的测量点大小识别出两片叶期的杂草。通过选择先前的决策模型,可以提高检测质量。根据背景的特点,选择不同的模型。最后,展示了在城市地区(具有植物模型)、冬小麦田(具有人工植物)和草地(具有码头)上的田间试验结果。在每个实验变体中,都可以识别物体和杂草。