首页> 外文期刊>Australian Journal of Multi-Disciplinary Engieering >Development and evaluation of a prototypeprecision spot spray system using image analysis to target Guinea Grass in sugarcane
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Development and evaluation of a prototypeprecision spot spray system using image analysis to target Guinea Grass in sugarcane

机译:利用图像分析瞄准甘蔗中的几内亚草的原型精密点喷系统的开发和评估

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摘要

Herbicide usage in weed control represents a significant economic cost and environmental risk in Australian sugarcane production. Weed spot spraying has potential to increase sugarcane production while reducing chemical usage and environmentally damaging runoff. However, weed spot spraying is traditionally a laborious manual task. This paper reports on a precision machine vision system that was developed to automatically identify and target the difficult to control weed Panicum spp. (Guinea Grass) in sugarcane crops. The infield machine vision system comprised a camera and artificial illumination to enable day and night trials. Image analysis algorithms were developed to discriminate Guinea Grass and sugarcane based on colour and textural differences between the species. A positive weed identification from the image analysis activated solenoid-controlled spray nozzles. Evaluations of the system in a sugarcane crop established that the image analysis algorithm parameters required frequent recalibration during the day but that the requirement for recalibration was reduced at night with constant artificial illumination. The algorithm was only effective at detecting mature Guinea Grass. The developed technology is considered a viable alternative to manual spot spraying of mature Guinea Grass in sugarcane at night. A cost benefit analysis of the new weed control system indicated potential grower savings of$170/ha by adopting the technology.
机译:控制除草剂的使用在澳大利亚甘蔗生产中代表了巨大的经济成本和环境风险。杂草点喷有潜力增加甘蔗产量,同时减少化学药品的使用和对环境的径流。但是,杂草点喷传统上是一项繁重的手动任务。本文报告了一种精密机器视觉系统,该系统旨在自动识别和控制难以控制的杂草Panicum spp。 (几内亚草)甘蔗作物。野外机器视觉系统包括摄像头和人工照明,可以进行白天和黑夜的审判。根据物种之间的颜色和质地差异,开发了图像分析算法来区分几内亚草和甘蔗。通过图像分析激活的螺线管控制的喷嘴可对杂草进行阳性鉴定。对甘蔗作物中系统的评估表明,图像分析算法参数需要在白天进行频繁的重新校准,但是在夜间使用恒定的人工照明可以降低重新校准的要求。该算法仅在检测成熟的几内亚草时有效。发达的技术被认为是在晚上手动点喷甘蔗中成熟的几内亚草的可行替代方案。新杂草控制系统的成本效益分析表明,采用该技术可使种植者每公顷节省170美元。

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