一种基于差异特征驱动的红外与可见光视频拟态融合方法
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中北大学 信息与通信工程学院 太原030051

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TP391

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Fusion method of infrared and visible video mimicry based on difference feature driving
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NorthUniversity of China,College of Information and Communication Engineering,Taiyuan030051,China

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    摘要:

    针对固定融合算法无法适应动态场景下视频帧间差异特征变化造成融合效果差的问题,提出了一种基于差异特征驱动的红外与可见光视频拟态融合方法。首先,分别提取了红外与可见光视频序列的三种差异特征;其次,利用改进的融合有效度公式计算不同融合算法对三种差异特征的融合有效度;最后,利用熵权法对融合有效度进行加权合成,进而得到多融合算法的决策评分,确定视频不同序列段上的最优融合算法。实验结果表明,本文方法相较于在不同序列段选取的最优融合算法RP和MOD,在整段视频序列上融合效果更好,综合客观评价指标上比上述固定算法分别提升了59.925%、2.7608%,为红外与可见光视频融合提供了新思路。

    Abstract:

    Aiming at the problem that the fixed fusion algorithm can not adapt to the difference between video frames in dynamic scene, which results in poor fusion effect and even failure of fusion, a fusion method of infrared and visible video mimicry based on differential feature driver is proposed. Firstly, three different features of infrared and visible video sequences are extracted respectively. Secondly, the fusion validity of different fusion algorithms is calculated by using the improved fusion validity formula, the fusion validity is weighted by entropy weight method, and then the decision score of the fusion algorithm is obtained, and the optimal fusion algorithm on different video sequences is determined. The experimental results show that the proposed method is better than the optimal fusion algorithms RP and MOD in the whole video sequence, compared with the fixed algorithm mentioned above, the comprehensive objective evaluation index is improved by 59.9249% and 2.7608% , which provides a new idea for infrared and visible light video fusion.

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李向燕,王肖霞,杨风暴.一种基于差异特征驱动的红外与可见光视频拟态融合方法[J].电子测量技术,2021,44(22):114-120

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  • 在线发布日期: 2024-07-04
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