首页> 外文OA文献 >Machine vision-based weed spot spraying: a review and where next for sugarcane?
【2h】

Machine vision-based weed spot spraying: a review and where next for sugarcane?

机译:基于机器视觉的杂草点喷:评论以及甘蔗的下一步计划?

摘要

Automated precision weed spot spraying in the sugarcane industry has potential to increase production while reducing herbicide usage. However, commercially-available technologies based on sensing of weed optical properties are typically restricted to detecting weeds on a soil background (i.e. detection of green on brown) and are not suited to detecting weeds amongst a growing crop. Machine vision and image analysis technology potentially enables leaf colour, shape and texture to achieve discrimination between vegetation species. ududThe National Centre for Engineering in Agriculture (NCEA) has developed a machine vision-based weed spot spraying demonstration unit to target the weed Panicum spp. (Guinea Grass) in a sugarcane crop, which requires discrimination of a green grass weed from a green grass crop. The system operated effectively at night time for mature Guinea Grass but further work is required for the system to operate under a greater range of conditions (e.g. different times of day and crop growth stages). Techniques such as multispectral imaging and shape analysis may potentially be required to achieve more robust weed identification. The implications for machine vision detection of Guinea Grass and other weed species in sugarcane crops are considered.ud
机译:甘蔗工业中的自动精密杂草点喷有潜力增加产量,同时减少除草剂的使用。然而,基于对杂草光学特性的感测的可商购获得的技术通常限于检测土壤背景上的杂草(即,检测棕色上的绿色),并且不适用于在生长的农作物中检测杂草。机器视觉和图像分析技术可能使叶片的颜色,形状和质地达到区分植物种类的目的。国家农业工程中心(NCEA)已开发了一种基于机器视觉的杂草点喷示范装置,以针对Panicum spp杂草为目标。 (几内亚草)在甘蔗作物中,这要求从绿草作物中鉴别出绿草杂草。对于成熟的几内亚草来说,该系统在夜间可以有效运行,但是要使该系统在更大范围的条件下(例如一天中的不同时间和作物生长阶段)运行,还需要进一步的工作。可能需要诸如多光谱成像和形状分析之类的技术来实现更可靠的杂草识别。考虑了对甘蔗作物中的豚草和其他杂草物种进行机器视觉检测的意义。 ud

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号