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首页> 外文期刊>IEEE Transactions on Vehicular Technology >Adaptive Switching Spatial-Temporal Fusion Detection for Remote Flying Drones
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Adaptive Switching Spatial-Temporal Fusion Detection for Remote Flying Drones

机译:用于遥控飞行无人机的自适应切换空间 - 时间融合检测

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摘要

The drone has been applied in various areas due to its small size, high mobility and low price. However, illegal uses of drones have posed huge threats to both public safety and personal privacy. There is an urgent demand for technologies that can timely detect and counter the drones. In this paper, we propose an adaptive switching spatial-temporal fusion detection method for remote flying drones in the airspace using electrical-optical cameras, which can enhance the contrast between the target and background as well as suppressing the noises and clutters simultaneously. For each incoming video frame, a dark-attentive interframe difference method and a row-column separate black-hat method are proposed to generate temporal feature maps (TFM) and spatial feature maps (SFM), respectively, in parallel. Inspired by the phenomenon that the features in TFMs and SFMs both go strong at the regions of the intended target while they do not at other regions where noises and clutters locate, we design an adaptive switching spatial-temporal fusion mechanism to fuse the SFMs and TFMs, generating adaptive switching spatial-temporal feature maps (ASSTFM). Finally, an adaptive local threshold mechanism is used in ASSTFMs to segment the targets from backgrounds. In order to validate the effectiveness of our method, we conduct both offline experiments and field tests. The experiment results manifest that our method is superior to the other seven baseline methods and works more stably for different backgrounds and various types of drones.
机译:由于其体积小,移动性和低价格低,因此无人机已应用于各个领域。但是,无人机的非法用途对公共安全和个人隐私构成了巨大威胁。对能够及时检测和抵消无人机的技术存在迫切需求。在本文中,我们提出了一种使用电光摄像机在空域中远程飞行无人机的自适应切换空间融合检测方法,可以增强目标和背景之间的对比,以及同时抑制噪声和折叠。对于每个传入的视频帧,建议分别并行地生成时间特征映射(TFM)和空间特征映射(SFM)的暗学帧间差分方法和行列列分别的黑帽方法。灵感来自于TFMS和SFMS的特征在预期目标区域的特征,而在预期目标的区域中,它们不在其他区域位于噪声和窗体定位的其他地区,我们设计了一种自适应切换空间 - 时间融合机制,融合了SFM和TFMS ,生成自适应切换空间 - 时间特征映射(ASTFM)。最后,在ASTFM中使用自适应局部阈值机制,以将目标从背景中段分割。为了验证我们方法的有效性,我们进行离线实验和现场测试。实验结果表明,我们的方法优于其他七种基线方法,对于不同的背景和各种类型的无人机,更稳定地工作。

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