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首页> 外文期刊>International journal on engineering applications >Adaptive Image Fusion Scheme Based on Contourlet Transform and Machine Learning
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Adaptive Image Fusion Scheme Based on Contourlet Transform and Machine Learning

机译:基于Contourlet变换和机器学习的自适应图像融合方案

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摘要

Adaptive image fusion scheme based on the combination of contourlet transform, Kernel Principal Component Analysis (K-PCA), Support Vector Machine (SVM) and Mutual Information (Ml) is proposed. Contourlet is well suited to image fusion scheme because of its properties, such as localization, midtiresolution, directionality and anisotropy. K-PCA operates on low frequency sub band to extract feature and SVM is applied to high frequency sub bands to obtain a composite image with extended information. Moreover, Mutual Information (MI) is used to adjust the contribution of each source image in the final fused image. Performance evaluation is carried out by using recently developed metric, Image Quality Index (IQI). The proposed scheme outperforms previous approaches both subjectively and quantitatively, and this is evident from the experimental results and findings.
机译:提出了基于Contourlet变换的组合,内核主成分分析(K-PCA),支持向量机(SVM)和相互信息(ML)的自适应图像融合方案。 Contourlet非常适合于图像融合方案,因为其性质,例如定位,中风,方向性和各向异性。 K-PCA在低频子带上操作以提取特征,并且将SVM应用于高频子带,以获得具有扩展信息的合成图像。 此外,互信息(MI)用于调整最终融合图像中的每个源图像的贡献。 通过使用最近开发的公制,图像质量指数(IQI)进行性能评估。 所提出的方案优于主观和定量的先前接近,这是从实验结果和调查结果中明显的。

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