能够在着陆的无人飞机上进行~ 100fps的探测,用于地面视觉恢复

Zhengjiang Cao, Kuang Zhao, Qiang Fang, Weiwei Kong, Dengqing Tang, Tianjiang Hu
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引用次数: 2

摘要

本文提出并开发了一种基于深度学习的解决方案,以实现已有地面立体视觉制导系统对柔性翼无人机安全着陆的及时性和实用性。由于地面制导原型的不及时性限制了其应用范围,最终基于视觉的检测不到15fps(帧/秒)。在这种情况下,我们采用基于回归的深度学习算法对着陆序列图像中的飞行飞机进行自动检测。升级了系统架构以适应新的深度学习要求,并对数据集进行了标注,以支持基于回归的学习检测算法的训练和测试。实验结果表明,在定位精度保持不变的情况下,检测速度达到100fps以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enabling ∼100fps detection on a landing unmanned aircraft for its on-ground vision-based recovery
In this paper, a deep learning inspired solution is proposed and developed to enable timeliness and practicality of the pre-existing ground stereo vision guidance system for flxed-wing UAVs' safe landing. Since the ground guidance prototype was restricted within applications due to its untimeliness, eventually the vision-based detection less than 15 fps (frame per second). Under such circumstances, we employ a regression based deep learning algorithm into automatic detection on the flying aircraft in the landing sequential images. The system architecture is upgraded so as to be compatible with the novel deep learning requests, and furthermore, annotated datasets are conducted to support training and testing of the regression-based learning detection algorithm. Experimental results validate that the detection attaches 100 fps or more while the localization accuracy is kept in the same level.
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