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Application Of The Hough Transform For Seed Row Localisation Using Machine Vision

机译:霍夫变换在机器视觉种子行定位中的应用

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摘要

This paper compares two methods based on machine vision to provide driver assistance in seed drill guidance in order to improve spacing accuracy during contiguous passages. The first case consisted of following the furrow created at the preceding passage by a special marker disc attached to the seed drill. A camera was located on the tractor and detected this furrow. In the second case, the seed rows themselves were detected by the camera without making use of the marker disc.In both cases, several video sequences were acquired in various situations, including different soil textures and various illumination conditions (375 sequences were acquired during three years). A pre-treatment of these sequences was performed and included a background subtraction in order to remove shadows and other wide unevenness. In the first case, the best results were obtained by using an image treatment based on the Hough transform coupled to a recursive filter. The search of the maximum of the Hough transform was performed using a mean shift algorithm. In the second case, where several parallel rows were simultaneously present on the images, an adapted Hough transform was proposed which took into account the a priori knowledge of the rows spacing. The trueness and precision in row detection were superior in the second case. The results are compatible with the application, since the trueness was smaller than 30 mm. This suggested that it can be possible to assist the manual guidance of a seed drill by an automatic system consisting in a camera detecting the seed rows.
机译:本文比较了两种基于机器视觉的方法,它们可在种子播种指导中为驾驶员提供帮助,以提高连续通过过程中的间距精度。第一种情况是,通过附着在播种机上的特殊标记盘来跟踪在前一通道产生的犁沟。拖拉机上有一个摄像头,并检测到该犁沟。在第二种情况下,无需使用标记盘就可以通过相机检测种子行本身。在两种情况下,都可以在各种情况下获取多个视频序列,包括不同的土壤质地和光照条件(在三个过程中可以获取375个序列)年份)。对这些序列进行了预处理,并进行了背景扣除,以去除阴影和其他较大的不均匀性。在第一种情况下,通过使用基于耦合到递归滤波器的霍夫变换的图像处理获得最佳结果。使用均值漂移算法进行霍夫变换最大值的搜索。在第二种情况下,在图像上同时出现几个平行行时,提出了一种自适应的霍夫变换,该变换考虑了行间距的先验知识。在第二种情况下,行检测的准确性和准确性更高。由于真实度小于30毫米,因此结果与应用程序兼容。这表明可以通过包括检测种子行的摄像机的自动系统来辅助手动引导播种机。

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