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Dim Small Targets Detection Based on Dualband Infrared Image Fusion

机译:基于双频红外图像融合的弱小目标检测

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To infrared images, the contrast of target and background is low, dim small targets have no concrete shapes and their textures cannot be reliable predicted. The paper puts forward a novel algorithm to fuse mid-wave and long-wave infrared images and detect targets. Firstly, the source images are decomposed by wavelet transformation. In usual, targets in infrared images are man-made, and their fractal dimension is different comparing with natural background. In wavelet transformation domain high-frequency part, we calculate local fractal dimension and set up fusion rule to merge corresponding sub-images of two matching source images. In low-frequency, we extract local maximum gray level to fuse them. Then reconstruct image by wavelet inverse transformation and obtain fused result image. In fusion results, the contrast between targets and background has obvious changes. And targets can be detected using contrast thresholding. The experimental results show that the method using fractal dimension to fuse dualband infrared images, and then detect targets is superior to use mid-wave or longwave infrared images detect targets alone.
机译:对于红外图像,目标与背景的对比度较低,昏暗的小目标没有具体的形状,并且其纹理无法可靠地预测。提出了一种融合中波和长波红外图像并检测目标的新算法。首先,通过小波变换对源图像进行分解。通常,红外图像中的目标是人造的,其分形维数与自然背景相比有所不同。在小波变换域高频部分,我们计算局部分形维数,并建立融合规则,以融合两个匹配源图像的对应子图像。在低频情况下,我们提取局部最大灰度以融合它们。然后通过小波逆变换重建图像,得到融合结果图像。在融合结果中,目标与背景之间的对比度发生了明显的变化。并且可以使用对比度阈值检测目标。实验结果表明,使用分形维数融合双波段红外图像,然后再检测目标的方法优于仅使用中波或长波红外图像检测目标的方法。

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    《》|2006年|3003-3007|共5页
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    Sun; Yu-Qiu; Tian; Jin-Wen; Liu; Jian;

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