基于视觉的有机农业低成本无人机影像作物行检测

V. Czymmek, Riko Schramm, S. Hussmann
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引用次数: 8

摘要

无人驾驶飞行器(uav)和自主智能农业机器人是减少化学或合成农药使用的绝佳解决方案。这些系统的一个关键方面是要求在不损坏植物或水坝的情况下跟踪作物行。本文开发了一种利用作物行检测实现有机农业半自主飞行的系统。该系统由一个带有摄像头的树莓派微控制器组成,并使用多种图像处理方法来检测植物行。对不同作物行田图像和作物行模型的评价表明,不同作物行都能被可靠地检测出来。运行时评估表明,该应用程序的微控制器的计算能力有限。诸如减小图像大小和采用计算密集型方法等优化导致帧率达到8至12 FPS。这个处理时间对于一个缓慢的无人机飞行是足够的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vision Based Crop Row Detection for Low Cost UAV Imagery in Organic Agriculture
Unmanned aerial vehicles (UAVs) and autonomous smart farming robots are a great solution to reduce the use of chemical or synthetic pesticides. One of the critical aspects of these systems are the requirement to follow the crop rows without damaging the plants or the dam. In this paper, a system was developed which enables a semi-autonomous flight by means of crop row detection in organic agriculture. The system consists of a Raspberry Pi microcontroller with a camera and uses a number of image processing methods to detect plant rows. The evaluation of images of different crop row fields and of crop row models showed that all different plant rows were reliably detected. A runtime evaluation showed that the computing power of the microcontroller for the application is limited. Optimizations such as reducing the image size and adapting calculation-intensive methods resulted in a frame rate of 8 to 12 FPS. This processing time is sufficient for a slow UAV flight.
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