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引用次数: 4
摘要
本文提出了一种利用无人机进行图像处理,特别是物体和人的检测的创新解决方案。与以前依靠良好的网络连接来实现良好功能的实现相比,在我的情况下,处理/检测将使用安装在无人机上的树莓Pi4模块在本地完成。我们研究的第一部分包括建造一架轻型无人机,其中有一些最好的赛车组件,根据我们的具体需求精心选择。第二部分包括在树莓派上实现计算成本低的检测算法,使用卷积神经网络和Tensorflow Lite。我们选择的算法是SSD - Single Shot Detection,可以在一次迭代中检测到一张图像中的多个目标。我还设计了一个外壳,以安全地放置无人机电池,树莓派电池和树莓派模块在无人机上,这是3D打印的。
On Flight Real Time Image Processing by Drone Equipped with Raspberry Pi4
This paper presents an innovative solution for image processing, especially object and person detection, using a drone. Compared to previous implementations that relied on a good network connection for good functionality, in my case the processing/detection will be done locally using a Raspberry Pi4 module, mounted on the drone. The first part of our research consisted of building a lightweight drone with some of the best racing components, chosen carefully for our specific needs. The second part consisted of implementing a computationally-low-cost detection algorithm on the Raspberry Pi, using convolutional neural networks and Tensorflow Lite. The chosen algorithm that was used was SSD - Single Shot Detection, capable of detecting multiple objects in one image during one iteration of the algorithm. I also designed an enclosure to securely place the drone battery, Raspberry Pi Battery and Raspberry Pi module on the drone, which was 3D printed.