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Flying Small Target Detection for Anti-UAV Based on a Gaussian Mixture Model in a Compressive Sensing Domain

机译:基于压缩传感域的高斯混合模型飞行抗UAV的小目标检测

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摘要

Addressing the problems of visual surveillance for anti-UAV, a new flying small target detection method is proposed based on Gaussian mixture background modeling in a compressive sensing domain and low-rank and sparse matrix decomposition of local image. First of all, images captured by stationary visual sensors are broken into patches and the candidate patches which perhaps contain targets are identified by using a Gaussian mixture background model in a compressive sensing domain. Subsequently, the candidate patches within a finite time period are separated into background images and target images by low-rank and sparse matrix decomposition. Finally, flying small target detection is achieved over separated target images by threshold segmentation. The experiment results using visible and infrared image sequences of flying UAV demonstrate that the proposed methods have effective detection performance and outperform the baseline methods in precision and recall evaluation.
机译:解决了防厕的视觉监控问题,基于在压缩传感结构域中的高斯混合背景建模和局部图像的低级和稀疏矩阵分解的高斯混合背景建模的新飞行小目标检测方法。首先,通过静止视觉传感器捕获的图像被损坏成贴片,并且通过在压缩感测结构域中使用高斯混合背景模型来识别包含目标的候选斑块。随后,有限时间段内的候选贴片通过低秩和稀疏矩阵分解分离成背景图像和目标图像。最后,通过阈值分割在分离的目标图像上实现飞行小目标检测。使用飞行无人机的可见光和红外图像序列的实验结果表明,所提出的方法具有有效的检测性能,并优于基线方法的精度和召回评估。

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