监测葡萄营养生长的航空图像

J. S. Pereira, G. Ferraz, L. S. Santana
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摘要

用于监测作物的遥控飞机(RPA)获得的图像可以帮助评估叶片质量、植物形成和植物种群。在这种情况下,本研究的目的是分析在棚架系统中训练的葡萄作物的植物生长,检测故障,并使用RPA获得的图像确定植物覆盖面积。飞行参数化,正面重叠75%,侧面重叠70%,地面样本距离(GSD)为60m,飞行速度为5ms-1,使用可见范围内的传感器。处理后的图像显示,林分比投影面积小3%,葡萄枝覆盖面积占60.8%,灌木丛和入侵植物占5.3%,裸露土壤占33.9%。植被指数中葡萄被确定为绿色点,入侵植物被确定为黄色点,裸露土壤被确定为红色点。用RPA获得的图像处理可以识别处于不同发育阶段的植物,在形成过程中葡萄藤占主导地位。使用MPRI植被指数可以识别植物并量化叶片质量,还可以区分暴露的土壤和植物材料。还观察到,该地块在飞行时有一个不完整的支架。
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Aerial images to monitor grapevine vegetative growth
Images obtained by Remotely Piloted Aircraft (RPA) used to monitor the crop can help evaluate leaf mass, plant formation, and plant population. In this context, the objectives of this study were to analyze plant growth in a grapevine crop trained in the trellis system, detect failures and determine the plant covered area using images obtained by RPA. The flight was parameterized with frontal overlap of 75%, lateral overlap of 70%, Ground Sample Distance (GSD) of 60 m, and flight speed of 5 m.s-1, using a sensor in the visible range. Processed images showed a stand 3% smaller than projected, an area covered by vine branches occupying 60.8%, undergrowth and invasives represented 5.3%, and exposed soil 33.9%. Vines were identified in the vegetation indices as green points, invasive plants as yellow points, and exposed soil as red points. Image processing obtained with RPA allowed identification of plants in various stages of development, with predominance of vines in the formation process. It was possible to identify the plants and quantify the leaf mass using the MPRI vegetation index, as well as to differentiate exposed soil from plant material. It was also observed that the plot had an incomplete stand at the time the flight was performed.
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发文量
35
审稿时长
24 weeks
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