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首页> 外文期刊>Journal of Robotic Systems >Detection of bodies in maritime rescue operations using unmanned aerial vehicles with multispectral cameras
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Detection of bodies in maritime rescue operations using unmanned aerial vehicles with multispectral cameras

机译:使用带多光谱摄像机的无人机在海上救援行动中检测尸体

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摘要

In this study, we use unmanned aerial vehicles equipped with multispectral cameras to search for bodies in maritime rescue operations. A series of flights were performed in open-water scenarios in the northwest of Spain, using a certified aquatic rescue dummy in dangerous areas and real people when the weather conditions allowed it. The multispectral images were aligned and used to train a convolutional neural network for body detection. An exhaustive evaluation was performed to assess the best combination of spectral channels for this task. Three approaches based on a MobileNet topology were evaluated, using (a) the full image, (b) a sliding window, and (c) a precise localization method. The first method classifies an input image as containing a body or not, the second uses a sliding window to yield a class for each subimage, and the third uses transposed convolutions returning a binary output in which the body pixels are marked. In all cases, the MobileNet architecture was modified by adding custom layers and preprocessing the input to align the multispectral camera channels. Evaluation shows that the proposed methods yield reliable results, obtaining the best classification performance when combining green, red-edge, and near-infrared channels. We conclude that the precise localization approach is the most suitable method, obtaining a similar accuracy as the sliding window but achieving a spatial localization close to 1 m. The presented system is about to be implemented for real maritime rescue operations carried out by Babcock Mission Critical Services Spain.
机译:在这项研究中,我们使用配备了多光谱摄像机的无人机来搜索海上救援行动中的尸体。在西班牙西北部的开阔水域中,在天气条件允许的情况下,在危险区域和真实人员中使用了经过认证的水上救生假人进行了一系列飞行。将多光谱图像对齐并用于训练卷积神经网络以进行身体检测。进行了详尽的评估,以评估此任务的最佳频谱通道组合。使用(a)完整图像,(b)滑动窗口和(c)精确定位方法评估了三种基于MobileNet拓扑的方法。第一种方法将输入图像分类为是否包含主体,第二种方法使用滑动窗口为每个子图像生成一个类,第三种方法使用转置卷积返回二进制输出,其中标记了主体像素。在所有情况下,都通过添加自定义图层并预处理输入以对齐多光谱相机通道来修改MobileNet体系结构。评估表明,所提出的方法产生了可靠的结果,在组合绿色,红色边缘和近红外通道时获得了最佳的分类性能。我们得出结论,精确定位方法是最合适的方法,获得与滑动窗口相似的精度,但实现接近1 m的空间定位。所提出的系统即将用于由西班牙巴布科克关键任务服务公司进行的实际海上救援行动。

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