基于双密度双树小波的偏振分析

K. Harrity, Soundararajan Ezekiel, A. Bubalo, Erik Blasch, M. Alford
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引用次数: 4

摘要

近二十年来,离散小波变换(DWT)已成功地应用于许多领域。对于图像处理应用程序,DWT可以产生输入图像的非冗余表示,具有比其他小波方法更好的性能。此外,DWT提供了更好的图像表示的空间和光谱定位,能够揭示经典方法经常错过的较小变化、趋势和击穿点。然而,DWT也有其局限性和缺点,如缺乏移位不变性。也就是说,如果输入信号或图像移位,那么小波系数将加剧这种移位。DWT也缺乏表示方向情况的能力。双密度双树离散小波变换(D3TDWT)是DWT的一个相对较新的增强版本,具有两个缩放函数和四个不同的小波,其设计方式是一对小波与另一对小波偏移,因此第一对小波位于第二对之间。本文提出了一种D3TDWT偏振分析方法,对长波红外(LWIR)偏振图像进行分析,从背景杂波中识别人、车辆等目标。D3TDWT方法可广泛应用于变化检测、形状提取、目标识别、同步跟踪识别等领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Double-density dual-tree wavelet-based polarimetry analysis
For the past two decades, the Discrete Wavelet Transformation (DWT) has been successfully applied to many fields. For image processing applications, the DWT can produce non-redundant representations of an input image with greater performance than other wavelet methods. Further, the DWT provides a better spatial and spectral localization of image representation, capable of revealing smaller changes, trends, and breakdown points that classical methods often miss. However, the DWT has its own limitations and disadvantages such as lack of shift invariance. That is, if the input signal or image is shifted, then the wavelet coefficients will exacerbate that shift. The DWT also lacks the ability to represent directional cases. The Double Density Dual-Tree Discrete Wavelet Transformation (D3TDWT) is a relatively new and enhanced version of the DWT with two scaling functions and four distinct wavelets designed in such a way that one pair of wavelets is offset with another pair so that the first pair lies in between the second. In this paper, we propose a D3TDWT polarimetry analysis method to analyze Long Wave Infrared (LWIR) polarimetry imagery to discriminate objects such as people and vehicles from background clutter. The D3TDWT method can be applied to a wide range of applications such as change detection, shape extraction, target recognition, and simultaneous tracking and identification.
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