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Air-to-ground multimodal object detection algorithm based on feature association learning

机译:基于特征关联学习的空地多模态目标检测算法

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Detecting objects on unmanned aerial vehicles is a hard task, due to the long visual distance and the subsequent small size and lack of view. Besides, the traditional ground observation manners based on visible light camera are sensitive to brightness. This article aims to improve the target detection accuracy in various weather conditions, by using both visible light camera and infrared camera simultaneously. In this article, an association network of multimodal feature maps on the same scene is used to design an object detection algorithm, which is the so-called feature association learning method. In addition, this article collects a new cross-modal detection data set and proposes a cross-modal object detection algorithm based on visible light and infrared observations. The experimental results show that the algorithm improves the detection accuracy of small objects in the air-to-ground view. The multimodal joint detection network can overcome the influence of illumination in different weather conditions, which provides a new detection means and ideas for the space-based unmanned platform to the small object detection task.
机译:由于目视距离长,尺寸小且缺乏视野,因此在无人飞行器上检测物体是一项艰巨的任务。此外,基于可见光相机的传统地面观测方式对亮度敏感。本文旨在通过同时使用可见光摄像机和红外摄像机来提高在各种天气条件下的目标检测精度。在本文中,使用同一场景上的多模式特征图的关联网络来设计目标检测算法,这就是所谓的特征关联学习方法。此外,本文收集了一个新的交叉模式检测数据集,并提出了一种基于可见光和红外观测的交叉模式对象检测算法。实验结果表明,该算法提高了空对地小物体的检测精度。该多模式联合检测网络能够克服光照在不同天气条件下的影响,为空基无人平台对小物体的检测任务提供了新的检测手段和思路。

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