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首页> 外文期刊>Journal of the Chinese Institute of Engineers >Real time drone detection by moving camera using COROLA and CNN algorithm
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Real time drone detection by moving camera using COROLA and CNN algorithm

机译:使用Corola和CNN算法移动相机实时无人机检测

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摘要

Widespread and careless use of unmanned aerial vehicles, such as drones, often raises serious privacy and security issues. To some extent, timely and accurate detection of drones enables observers to counteract unwarranted intrusion and other forms of their misuse. This is not an easy task, however, drones, on one hand, being small in size, are difficult to spot in general. On the other hand, they fly at low altitudes and against a background containing several look-alike objects. In this work, a hybrid approach for the detection of drones by the moving spy drone camera is presented which combines Contiguous Outlier Representation via Online Low-rank Approximation (COROLA) and Convolutional Neural Network (CNN). The COROLA technique is used for detecting a small moving object present in a scene and the CNN algorithm is employed for accurate drone recognition in a wide array of complex backgrounds. This hybrid technique is robust and time-efficient as it obviates full processing of the entire image sequence. To demonstrate the effectiveness of our proposed approach, we have compared its performance with R-STIC (Regression on Spatial-Temporal Image Cube), a state-of-the-art detection method, under different real-life scenarios. The obtained results show that the proposed hybrid approach is better than R-STIC, in terms of computational efficiency, accuracy, and robustness.
机译:无人机等无人机的广泛和不小心使用往往会引发严重的隐私和安全问题。在某种程度上,对无人机的及时、准确的检测使观察员能够抵制不必要的入侵和其他形式的误用。然而,这不是一项容易的任务,一方面,无人机体积小,一般很难被发现。另一方面,它们在低空飞行,背景中有几个相似的物体。在这项工作中,提出了一种通过移动间谍无人机摄像头检测无人机的混合方法,该方法结合了在线低秩近似(COROLA)和卷积神经网络(CNN)的连续离群值表示。COROLA技术用于检测场景中存在的小运动对象,CNN算法用于在各种复杂背景中准确识别无人机。这种混合技术具有鲁棒性和时间效率,因为它避免了对整个图像序列的完整处理。为了证明我们提出的方法的有效性,我们将其与R-STIC(时空图像立方体上的回归)进行了性能比较,R-STIC是一种最先进的检测方法,在不同的现实场景下。结果表明,该混合方法在计算效率、精度和鲁棒性方面优于R-STIC方法。

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