基于异构传感器融合的全向目标检测

Hyunjee Ryu, Inhwan Wee, Taeyeon Kim, D. Shim
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引用次数: 4

摘要

近年来,飞行器的目标识别问题日益受到重视,并进行了大量的研究。对于城市空中交通(UAM)来说,重要的是要识别其他车辆,如无人机和鸟类,并在飞行时避免碰撞。本文将两个传感器融合在一起进行目标检测。它是通过融合一个可以使用光和低功耗的相机传感器和一个具有高近场可靠性并可以知道物体位置信息的激光雷达传感器来使用的。通常情况下,雷达是用来识别飞机上的物体,但已经被乘客取代,在无人机平台上进行研究。利用两种传感器的特点,提高了近距离和远距离目标的识别率,并通过传感器冗余度提高了可靠性。此外,通过系统优化,可以在嵌入式板上实现实时驱动。现有车辆通过雷达和通信识别其他车辆。然而,通过本文提出的传感器融合,可以提高单机情况下的目标识别率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heterogeneous sensor fusion based omnidirectional object detection
Nowadays, the importance of the object recognition of an aerial vehicle has increased, and many studies have been conducted. For Urban Aerial Mobility (UAM), it is important to recognize other vehicles, such as drones and birds, and avoid collisions when flying. In this paper, two sensors are fused to detect objects. It is used by fusing a camera sensor that can be used with light and low power, and a lidar sensor that has high near-field reliability and can know the location information of an object. Typically, Radar is used to recognize objects on airplanes but has been replaced by riders to conduct research on the drone platform. By using the features of the two sensors, the recognition rate of objects at short and long distances is increased, and reliability is increased through sensor redundancy. In addition, it was possible to drive in real-time on the embedded board through system optimization. Existing vehicles recognize other vehicles using Radar and communication. However, through the sensor fusion presented in this paper, it is possible to increase the object recognition rate in stand-alone situations.
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