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Study on classification based on image fusion with curvelet transform

机译:基于Curvelet变换的图像融合分类研究

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摘要

Curvelet transform for image fusion can represent directional edges better than wavelet-based method, and can preserve spectral information more effectively as well. The abilities of capturing texture characteristics of high-resolution images and keeping color information of multispectral (MS) images make the fused images suitable to be classified for higher classification accuracy. To test the effect of curvelet transform on images classification, this paper uses a tunable HIS-Brovey method and curvelet-based method to fuse panchromatic (PAN) and MS IKONOS images respectively at first; then classifies the original MS image and the two fused images, the same training sites of samples are selected during the classification processing; and finally evaluates the classified images. The results show that original MS image, the HIS-Brovey-based fused image and curvelet-based fused image have the overall classification accuracies of 79.80%, 82.83% and 86.87% respectively, among which the curvelet-based classified image obtains the highest accuracy, which indicates that curvelet-based image fusion is more suitable for classification compared with the tunable HIS-Brovey-based fusion method.
机译:图像融合的Curvelet变换可以代表比基于小波的方法更好的方向边缘,并且可以更有效地保护光谱信息。捕获高分辨率图像纹理特征的能力和维持多光谱(MS)图像的彩色信息使得适合于较高的分类精度的融合图像。为了测试Curvelet变换对图像分类的影响,本文首先使用可调谐的他 - 虚拟方法和Curvelet的方法来保险为熔断器(PAN)和MS Ikonos图像;然后在分类处理期间分类原始MS图像和两个融合图像,选择相同的样本训练网站;最后评估分类的图像。结果表明,原始的MS图像,基于他的融合图像和曲线的融合图像的整体分类精度分别为79.80%,82.83%和86.87%,其中基于曲线的分类图像获得最高精度与可调谐的基于HIS-BROVEY的融合方法相比,这表明基于曲线的图像融合更适合分类。

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