Bai Xiangzhi
Image Processing Center, Beijing University of Aeronautics and Astronautics, Beijing, China.
Appl Opt. 2013 Jun 1;52(16):3777-89. doi: 10.1364/AO.52.003777.
Image decomposition and reconstruction is an important way for image analysis. To be effective for image decomposition and reconstruction, a method using extracted features through top-hat transform-based morphological contrast operator (MCOTH) is proposed in this paper. First, the morphological contrast operator constructed using the top-hat transforms is discussed. Then, extracting the bright and dark image features in the result of MCOTH is given. Based on the extracted bright and dark image features, the original images are decomposed into multiscale complete decompositions using multiscale structuring elements. After processing the decomposed images following different application purposes, the final result image can be reconstructed from the processed decomposition images. To verify the effectiveness of the proposed image analysis method through image decomposition and reconstruction, the application of image enhancement and fusion are discussed. The experimental results show that because the proposed image decomposition and reconstruction method reasonably decomposes the original image into complete decomposition with useful image features at different scales, the useful image features could be easily used for different applications. After the useful image features are processed, the final result image could be reconstructed. Moreover, different types of images are used in the experiments of image enhancement and fusion, and the results are effective. Therefore, the proposed image decomposition and reconstruction method in this paper are effective methods for image analysis and could be widely used in different applications.
图像分解与重建是图像分析的重要途径。为了有效地进行图像分解与重建,本文提出了一种基于顶帽变换的形态学对比度算子(MCOTH)提取特征的方法。首先,讨论了利用顶帽变换构建的形态学对比度算子。然后,给出了在MCOTH结果中提取亮暗图像特征的方法。基于提取的亮暗图像特征,使用多尺度结构元素将原始图像分解为多尺度完全分解。根据不同的应用目的对分解后的图像进行处理后,可以从处理后的分解图像中重建最终的结果图像。为了通过图像分解与重建验证所提图像分析方法的有效性,讨论了图像增强和融合的应用。实验结果表明,由于所提图像分解与重建方法将原始图像合理地分解为具有不同尺度有用图像特征的完全分解,这些有用图像特征可轻松用于不同应用。对有用图像特征进行处理后,可以重建最终的结果图像。此外,在图像增强和融合实验中使用了不同类型的图像,结果是有效的。因此,本文所提图像分解与重建方法是有效的图像分析方法,可广泛应用于不同领域。