Spatial Frequency Filter Design for Interferometric Image Classification Without Image Reconstruction

Daniel Chen, Stavros Vakalis, Vaughn E. Holmes, J. Nanzer
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引用次数: 3

Abstract

We investigate the use of spatial frequency filtering to detect specific features and classify images without reconstructing a full image. Based on interferometric Fourier-domain imaging, filtering the spatial frequency information amounts to a data reduction at the input to the system, leading to lower computational complexity, less hardware requirements, and the ability to classify images without the need for full image reconstruction. The proposed application is the detection of man-made structures from interferometric microwave imagery of the ground. In the spatial frequency domain, man-made structures such as buildings and roads display discrete, high spatial-frequency signals, while natural scenes have a smoother spatial frequency profile. We present ring-shaped spatial frequency designs that can detect these features without full image reconstruction. Furthermore, the filters can potentially be implemented with a small set of antennas, leading to low-cost, fast classification imaging.
无图像重构干涉图像分类的空间频率滤波器设计
我们研究了使用空间频率滤波来检测特定特征并对图像进行分类,而无需重建完整的图像。基于干涉傅里叶域成像,过滤空间频率信息相当于在系统输入处减少数据,从而降低计算复杂度,减少硬件要求,并且能够在不需要完整图像重建的情况下对图像进行分类。提出的应用是从地面的干涉微波图像中检测人造结构。在空间频域,人造结构如建筑物和道路显示离散的高空间频率信号,而自然场景具有更平滑的空间频率轮廓。我们提出环形空间频率设计,可以检测这些特征,而无需完整的图像重建。此外,滤波器可以用一组小天线来实现,从而实现低成本、快速的分类成像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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