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Algorithm of small moving target detection based on infrared and visual image fusion

机译:基于红外和视觉图像融合的小移动目标检测算法

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Aimed at the imaging principle and characteristic of infrared and visual equipment and their application demands, an effective algorithm is proposed for small moving target detection based on fused infrared and visual image. The algorithm suppresses background clutter by morphologic Top-hat transform, and the results are enhanced by tree-structure wavelet transform with the use of improved fusion rule based on "absolute value" matching degree. Filter processing can enhance targets as well as suppress partial clutter and false targets effectively. Use difference operation among three consecutive frame images to accomplish target segmentation. Improve SNR by N frames energy accumulation. Combine continuity and regularity of small moving target to eliminate false targets, noise point and background remnant. All that helps detect the small targets. Finally, compare the pre-processing performance among traditional filter approaches and this proposed algorithm for image pre-processing. Thus, for this type of method, detection and tracking results prove the validity the proposed algorithm. At the same time, two parameters, RMSE (relative mean square error) and BSF (background suppression factor), are given to evaluate the filtering performance of this paper approach. Four indexes, Mutual Information (MI), Associated Entropy (AE), SNR, RMSE, are used to evaluate the fusion quality. Experimental results show that the multilevel and multifunctional algorithm proposed is better than other methods in image pre-processing, image fusion and small moving target detection.
机译:针对红外和视觉设备的成像原理和特征及其应用需求,提出了一种基于熔融红外和视觉图像的小型移动目标检测的有效算法。该算法通过形态学的顶帽变换抑制了背景杂波,并且通过使用基于“绝对值”匹配程度的改进的融合规则,通过使用改进的融合规则来增强结果。过滤器处理可以增强目标以及有效地抑制部分杂波和假目标。三个连续帧图像之间使用差异操作来完成目标分段。通过N帧能量积累改善SNR。结合小型移动目标的连续性和规律性来消除假目标,噪声点和背景残余。所有有助于检测小目标的所有内容。最后,比较传统滤波器方法之间的预处理性能和这种建议的图像预处理算法。因此,对于这种类型的方法,检测和跟踪结果证明了所提出的算法的有效性。同时,给出了两个参数,RMSE(相对均方误差)和BSF(背景抑制因子),以评估本文方法的过滤性能。四个索引,互信息(MI),相关熵(AE),SNR,RMSE,用于评估融合质量。实验结果表明,提出的多级和多功能算法优于图像预处理,图像融合和小移动目标检测中的其他方法。

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