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Crop positioning for robotic intra-row weeding based on machine vision

机译:基于机器视觉的行内机器人除草的作物定位

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A machine-vision-based method of locating crops is described in this research. This method was used to provide real-time positional information of crop plants for a mechanical intra-row weeding robot. Within the normalized red, green, and blue chromatic coordinates (rgb), a modified excess green feature (g-r>T & g-b>T) was used to segment plant material from back ground in color images. The threshold T was automatically selected by the maximum variance (OTSU) algorithm to cope with variable natural light. Taking into account the geometry of the camera arrangement and the crop row spacing, the target regions covering the crop rows were defined based on a pinhole camera model. According to the statistical variation in the pixel histogram in each target region, locations of the crop plants were initially estimated. To obtain the accurate locations of crops, median filtering was conducted locally in the bounding boxes of the crops close to the bottom of the images. For the lateral guidance of the robot, a novel method of calculating lateral offset was proposed based on a simplified match between a template and the detected crops. Field experiments were conducted under three different illumination conditions. The results showed that the accurate identification rates on lettuce, cauliflower and maize were all above 95%. The positional error as within ±15 mm, and the average processing time for a 640×480 image was 31 ms. The method was adequate to meet the technical requirement of the weeding robot, and laid a foundation for robotic weeding in commercial production system. Keywords: mechanical weeding, computer vision, real-time image processing, crop sensing, precision agriculture DOI: 10.3965/j.ijabe.20150806.1932 Citation: Li N, Zhang C L, Chen Z W, Ma Z H, Sun Z, Yuan T, et al. Crop positioning for robotic intra-row weeding based on machine vision. Int J Agric & Biol Eng, 2015; 8(6): 20-29.
机译:在这项研究中描述了一种基于机器视觉的农作物定位方法。该方法用于为行内机械除草机器人提供作物的实时位置信息。在归一化的红色,绿色和蓝色色坐标(rgb)内,修改后的多余绿色特征(g-r> T&g-b> T)用于从彩色图像的背景中分割植物材料。阈值T由最大方差(OTSU)算法自动选择,以应对可变的自然光。考虑到摄像机布置的几何形状和农作物行距,基于针孔摄像机模型定义了覆盖农作物行的目标区域。根据每个目标区域中像素直方图的统计变化,初步估算了农作物的位置。为了获得农作物的准确位置,在靠近图像底部的农作物的边界框中局部进行了中值滤波。对于机器人的横向引导,基于模板和检测到的农作物之间的简化匹配,提出了一种计算横向偏移的新方法。在三种不同的照明条件下进行了现场实验。结果表明,生菜,菜花,玉米的准确鉴别率均在95%以上。位置误差在±15 mm之内,并且640×480图像的平均处理时间为31 ms。该方法足以满足除草机器人的技术要求,为商业化生产系统中的机器人除草奠定了基础。关键字:机械除草,计算机视觉,实时图像处理,作物感测,精准农业DOI:10.3965 / j.ijabe.20150806.1932引用:李娜,张丽丽,陈中伟,马志中,孙中,袁天,等。基于机器视觉的机器人行内除草的作物定位。农业与生物工程学杂志,2015; 8(6):20-29。

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