Division of Engineering, The University of Texas, San Antonio, TX 78249-0669, USA.
IEEE Trans Image Process. 2001;10(3):367-82. doi: 10.1109/83.908502.
This paper presents a new class of the "frequency domain"-based signal/image enhancement algorithms including magnitude reduction, log-magnitude reduction, iterative magnitude and a log-reduction zonal magnitude technique. These algorithms are described and applied for detection and visualization of objects within an image. The new technique is based on the so-called sequency ordered orthogonal transforms, which include the well-known Fourier, Hartley, cosine, and Hadamard transforms, as well as new enhancement parametric operators. A wide range of image characteristics can be obtained from a single transform, by varying the parameters of the operators. We also introduce a quantifying method to measure signal/image enhancement called EME. This helps choose the best parameters and transform for each enhancement. A number of experimental results are presented to illustrate the performance of the proposed algorithms.
本文提出了一类新的基于“频域”的信号/图像增强算法,包括幅度减小、对数幅度减小、迭代幅度和对数减少带状幅度技术。描述并应用这些算法用于检测和可视化图像中的对象。新技术基于所谓的序列有序正交变换,包括著名的傅里叶、哈特利、余弦和 Hadamard 变换,以及新的增强参数算子。通过改变算子的参数,可以从单个变换中获得广泛的图像特征。我们还引入了一种称为 EME 的量化方法来衡量信号/图像增强,这有助于为每个增强选择最佳参数和变换。给出了一些实验结果以说明所提出算法的性能。