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Maize stubble row recognition and guidance line detection based on machine vision in natural illumination

机译:基于自然照明机视觉的玉米茬排识别与引导线检测

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In North China Plain where annual maize-wheat rotation is predominantly managed, vision-based automatic guidance can be used for direct seeding of wheat in no-till field, to avoid the standing maize stubbles and the subsequent planter blocking duringseeding operation. This study aimed to focus in the recognition of maize stubble row and the detection of guidance line. Static images of maize stubbles standing in the field were acquired in natural illumination after the combine harvest of maize, separately on cloudy days and sunny days. Sample images extractedfrom the collected statistic images experienced a color feature analysis in RGB and HSI color spaces. Due to the large overlap of the standing stubble and background in previous analysis, a region of interest (ROI) was selected to reduce the difficulties in subsequent segmentation. A color index '0.44R+0.55G-0.5B', which is obtained by optimizing the linear combination of RGB components basing on genetic algorithm, was used to transform the ROIinto monochrome. The threshold for ROI binarization was determined after multiple iterations, meanwhile an evaluation criteria was proposed to eliminate pixels that were judged as noise from the binary ROI. Afterwards, least square method, the commonlyused algorithm for linear fitting, was adopted to fit the guidance line considering its superior processing efficiency. And a noise elimination method was developed to reduce the negative effects of noisy point on baseline fitting. In the end, the proposed maize stubble baseline detection algorithm was tested using 30 randomly selected field images, 73.1% of the total resulted in effective detection.
机译:在华北平原,在玉米玉米旋转主要管理的情况下,基于视觉的自动指导可用于避免常设玉米茬和随后的植物在穿过期间的植物堵塞。本研究旨在专注于识别玉米茬排和引导线的检测。在玉米的收获后,在阴暗的日子和阳光灿烂的日子分开,在自然照明中获得了站立在该领域的静态图像。从RGB和HSI颜色空间中遇到Collected统计图像的示例图像从收集的统计图像中提取了彩色特征分析。由于驻留茬和背景中的较大重叠在先前的分析中,选择了感兴趣区域(ROI)以减少随后的分割中的困难。通过优化基于遗传算法的RGB分量的线性组合来获得的颜色指数'0.44r + 0.55g-0.5b'用于转换Roiinto单色。在多次迭代之后确定了ROI二值化的阈值,同时提出了评估标准,以消除被判断为与二进制ROI噪声的像素。之后,采用最小二乘法,用于线性配件的常用算法,以考虑其卓越的加工效率。开发了一种噪声消除方法,以减少嘈杂点对基线配件的负面影响。最后,使用30个随机选择的场地图像测试所提出的玉米茬基线检测算法,总量的73.1%导致有效检测。

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