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An automatic zone detection system for safe landing of UAVs

机译:无人机安全着陆的自动区域检测系统

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As the demand increases for the use Unmanned Aerial Vehicles (UAVs) to monitor natural disasters, protecting territories, spraying, vigilance in urban areas, etc., detecting safe landing zones becomes a new area that has gained interest. This paper presents an intelligent system for detecting regions to navigate a UAV when it requires an emergency landing due to technical causes. The proposed system explores the fact that safe regions in images have flat surfaces, which are extracted using the Gabor Transform. This results in images of different orientations. The proposed system then performs histogram operations on different Gabor-oriented images to select pixels that contribute to the highest peak, as Candidate Pixels (CP), for the respective Gabor-oriented images. Next, to group candidate pixels as one region, we explore Markov Chain Codes (MCCs), which estimate the probability of pixels being classified as candidates with neighboring pixels. This process results in Candidate Regions (CRs) detection. For each image of the respective Gabor orientation, including CRs, the proposed system finds a candidate region that has the highest area and considers it as a reference. We then estimate the degree of similarity between the reference CR with corresponding CRs in the respective Gabor-oriented images using a Chi square distance measure. Furthermore, the proposed system chooses the CR which gives the highest similarity to the reference CR to fuse with that reference, which results in the establishment of safe landing zones for the UAV. Experimental results on images from different situations for safe landing detection show that the proposed system outperforms the existing systems. Furthermore, experimental results on relative success rates for different emergency conditions of UAVs show that the proposed intelligent system is effective and useful compared to the existing UAV safe landing systems. (C) 2019 Elsevier Ltd. All rights reserved.
机译:随着对使用无人飞行器(UAV)监视自然灾害,保护领土,在城市地区进行喷洒,保持警惕等需求的增加,检测安全着陆区已成为引起人们兴趣的新领域。本文提出了一种智能系统,当由于技术原因需要紧急降落时,该系统可用于探测区域以驾驶无人机。提出的系统探索了一个事实,即图像中的安全区域具有平坦的表面,该表面使用Gabor变换提取。这导致不同方向的图像。然后,所提出的系统对不同的面向Gabor的图像执行直方图操作,以选择对各个面向Gabor的图像贡献最高峰的像素,如候选像素(CP)。接下来,为了将候选像素分组为一个区域,我们探索了马尔可夫链码(MCC),该算法估计像素与相邻像素一起被分类为候选像素的可能性。此过程导致候选区域(CR)检测。对于各个Gabor方向的每个图像(包括CR),建议的系统找到具有最高面积的候选区域,并将其视为参考。然后,我们使用卡方距离度量来估计参考CR与相应Gabor定向图像中的相应CR之间的相似程度。此外,所提出的系统选择与参考CR具有最高相似性的CR与该参考融合,从而为无人机建立安全着陆区。针对来自不同情况的图像进行安全着陆检测的实验结果表明,所提出的系统优于现有系统。此外,针对无人机不同紧急情况的相对成功率的实验结果表明,与现有的无人机安全着陆系统相比,所提出的智能系统是有效和有用的。 (C)2019 Elsevier Ltd.保留所有权利。

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