首页> 外文期刊>American journal of agricultural and biological sciences >DEVELOPMENT OF A MACHINE VISION SYSTEM FOR WEED DETECTION DURING BOTH OF OFF-SEASON AND IN-SEASON IN BROADACRE NO-TILLAGE CROPPING LANDS | Science Publications
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DEVELOPMENT OF A MACHINE VISION SYSTEM FOR WEED DETECTION DURING BOTH OF OFF-SEASON AND IN-SEASON IN BROADACRE NO-TILLAGE CROPPING LANDS | Science Publications

机译:布拉索尔免耕播种季间和季节内杂草检测机器视觉系统的开发科学出版物

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> More than half of the Australian cropping land is no-tillage and weed control within continuous no-tillage agricultural cropping area is becoming more and more difficult. A major problem is that the heavy herbicide usage causes some of more prolific weeds becoming more resistant to the regular herbicides and therefore more powerful and more expensive options are being pursued. To overcome such problems with aiming at the reduction of herbicide usage, this proposed research focuses on developing a machine vision system which can detect and mapping weeds or do spot spray. The weed detection methods described in this study include three aspects which are image acquisition, a new green plant detection algorithm using hybrid spectral indices and a new inter-row weed detection method taking the advantage of the location of the crop rows. The developed method could detect the weeds both during the non-growing summer period and also within the growing season until the canopy of the crop has closed. The design of the methods focuses on overcoming the challenges of the complex no-tillage background, the faster image acquisition speed and quicker processing time for real-time spot spray. The experiment results show that the proposed method are more suitable for the weed detection in the no-tillage background than the existing methods and could be used as a powerful tool for the weed control.
机译: >超过一半的澳大利亚耕地都是免耕的,并且在连续的免耕农业种植区内控制杂草变得越来越困难。一个主要问题是大量使用除草剂会使一些多产的杂草对常规除草剂产生更大的抵抗力,因此正在寻求更强大,更昂贵的选择。为了克服这些问题,旨在减少除草剂的使用,这项拟议的研究集中在开发一种机器视觉系统上,该系统可以检测并绘制杂草或进行点喷。本研究中描述的杂草检测方法包括三个方面:图像采集,使用混合光谱指数的新绿色植物检测算法以及利用作物行位置的新行间杂草检测方法。所开发的方法可以在夏季非生长期以及生长季节直至作物冠层关闭之前检测杂草。这些方法的设计着重于克服复杂的免耕背景,更快的图像采集速度和更快的实时点喷处理时间等挑战。实验结果表明,所提出的方法比现有方法更适合于免耕背景下的杂草检测,可作为控制杂草的有力工具。

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