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Research on an Infrared Multi-Target Saliency Detection Algorithm under Sky Background Conditions

机译:天空背景条件下红外多目标显着性检测算法研究

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Aiming at solving the problem of incomplete saliency detection and unclear boundaries in infrared multi-target images with different target sizes and low signal-to-noise ratio under sky background conditions, this paper proposes a saliency detection method for multiple targets based on multi-saliency detection. The multiple target areas of the infrared image are mainly bright and the background areas are dark. Combining with the multi-scale top hat (Top-hat) transformation, the image is firstly corroded and expanded to extract the subtraction of light and shade parts and reconstruct the image to reduce the interference of sky blurred background noise. Then the image obtained by a multi-scale Top-hat transformation is transformed from the time domain to the frequency domain, and the spectral residuals and phase spectrum are extracted directly to obtain two kinds of image saliency maps by multi-scale Gauss filtering reconstruction, respectively. On the other hand, the quaternion features are extracted directly to transform the phase spectrum, and then the phase spectrum is reconstructed to obtain one kind of image saliency map by the Gauss filtering. Finally, the above three saliency maps are fused to complete the saliency detection of infrared images. The test results show that after the experimental analysis of infrared video photographs and the comparative analysis of Receiver Operating Characteristic (ROC) curve and Area Under the Curve (AUC) index, the infrared image saliency map generated by this method has clear target details and good background suppression effect, and the AUC index performance is good, reaching over 99%. It effectively improves the multi-target saliency detection effect of the infrared image under the sky background and is beneficial to subsequent detection and tracking of image targets.
机译:旨在解决具有不同目标尺寸的红外多目标图像中不完全的显着性检测和不明显边界的问题,以及在天空背景条件下的低信噪比,本文提出了基于多显着性的多个目标的显着性检测方法检测。红外图像的多个目标区域主要是明亮的,背景区域是黑暗的。与多尺寸顶帽(顶帽)变换相结合,首先腐蚀和扩展,以提取光和遮阳部件的减法,并重建图像以减少天空的干扰模糊背景噪声。然后通过多尺度顶帽变换获得的图像从时域转换为频域,并且通过多尺寸高斯滤波重建直接提取频谱残差和相位谱,以获得两种图像显着图,分别。另一方面,直接提取四元度特征以改变相谱,然后重建相频谱以通过高斯滤波获得一种图像显着图。最后,上述三张显着性图融合以完成红外图像的显着性检测。测试结果表明,在红外视频照片的实验分析和接收器操作特征(ROC)曲线和面积的比较分析之后(AUC)指数,通过该方法产生的红外图像显着图具有清晰的目标细节和良好背景技术抑制效果,AUC指数性能好,达到99%以上。它有效提高了天空背景下红外图像的多目标显着性检测效果,并且有利于图像目标的后续检测和跟踪。

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