利用无人机对鸟类进行威慑的探测和定位

Shivam Goel, Santosh Bhusal, Matthew E. Taylor, M. Karkee
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引用次数: 3

摘要

仅在华盛顿州,樱桃、葡萄和蓝莓种植者每年因鸟类伤害损失约8000万美元。多种作物的种植者迫切需要一种安全、经济有效的方法来持续遏制鸟类,这将大大降低生产成本。这项研究的目标是建立一个完全自主的无人机系统(UAS),以阻止蓝莓田和葡萄园的鸟类。在建造无人机的过程中,视觉系统是其实施中最重要的部分。本文的主要目标是建立一个检测和定位鸟类的系统。为了检测鸟类,采用了背景减法算法,并对各种背景减法算法的性能进行了测试。研究发现,背景减法算法ViBe在鸟类检测场景中表现最好,准确率为63%。为了提高鸟类的检测速度和实时性,采用了分窗技术,将检测速度提高了13%。为了估计被探测到的鸟的距离,提出了一种立体视觉系统。使用我们目前的系统,精确测量物体的距离可能在2到7米之间,误差精度为30厘米。长期目标是结合论文的努力,成功地创造一个完全自主的智能稻草人,可以安全,有效和可靠地吓唬和阻止鸟类接近高价值的作物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and localization of birds for Bird Deterrence using UAS
Abstract Cherry, grape, and blueberry growers lose around 80 million dollars annually to bird damage in the state of Washington alone. Growers of a wide range of crops have a critical need for a safe and cost-effective method for persistent bird deterrence, which would lead to significantly reduced production costs. The goal of this research is to build a completely autonomous Unmanned Aerial System (UAS) to deter birds from the blueberry fields and grape vineyards. In the effort to build the UAS, the most vital part of its implementation is the vision system. The primary objective of this paper is to build a system to detect and localize birds. To detect birds, background subtraction algorithms have been used and the performance of various background subtraction algorithms are measured. It is found out that ViBe, a background subtraction algorithm, performs best in the bird detection scenario and provides an accuracy of 63%. In the quest of improving the bird detection speed and obtaining it in real time, a split window technique is used to improve the detection speed by 13%. To estimate the distance of the detected bird, a stereo vision system is proposed. With our current system, an accurate measure of the distance of the object is possible from 2 to 7 meters with an error accuracy of 30 centimeters. The long-term goal is to combine the efforts of the paper to successfully create a completely autonomous Smart Scarecrow that can safely, effectively and reliably scare and deter birds from high-value crops.
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