Research on UAV Obstacle Detection based on Data Fusion of Millimeter Wave Radar and Monocular Camera

Xiyue Wang, Xinsheng Wang, Zhiquan Zhou, Junjie Li
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引用次数: 2

Abstract

Abstract—Obstacle avoidance detection of small UAVs has been a challenging problem because of size and weight constraints. In this paper, a fusion of MMW and monocular camera data is proposed for small UAVs obstacle detection systems. A MMW sensor is used to detect distance and angle and the image of obtacles capturing by the camera. Next, the target point information detected by MMW is calibrated into the image to complete the data fusion. Then, the optimized edge detection algorithm and image grayscale frequency saliency map are used to segment the obstacle area in images. The proposed method was evaluated by experiments in a real flying environment which consist of obstacles with textures and shadows. In the experiments, we successfully detect the shape of obstacles for complex situations. Obstacles with complex textures and shadows can be effectively detected, which shows that the method has good robustness.
基于毫米波雷达与单目摄像机数据融合的无人机障碍物检测研究
由于尺寸和重量的限制,小型无人机的避障检测一直是一个具有挑战性的问题。提出了一种基于毫米波和单目摄像机数据的小型无人机障碍物检测方法。毫米波传感器用于检测距离和角度以及相机捕获的障碍物图像。然后,将毫米波检测到的目标点信息校准到图像中,完成数据融合。然后利用优化后的边缘检测算法和图像灰度频率显著性图对图像中的障碍物区域进行分割;在包含纹理和阴影的障碍物的真实飞行环境中对该方法进行了实验验证。在实验中,我们成功地检测了复杂情况下障碍物的形状。具有复杂纹理和阴影的障碍物能够被有效检测出来,表明该方法具有较好的鲁棒性。
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