De-noised and contrast enhanced KH-9 HEXAGON mapping and panoramic camera images for urban research

IF 5.7 Q1 ENVIRONMENTAL SCIENCES
Amir Reza Shahtahmassebi , Minshi Liu , Longwei Li , JieXia Wu , Mingwei Zhao , Xi Chen , Ling Jiang , Danni Huang , Feng Hu , Minmin Huang , Kai Deng , Xiaoli Huang , Golnaz Shahtahmassebi , Asim Biswas , Nathan Moore , Peter M. Atkinson
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引用次数: 0

Abstract

In 2002 and 2020–2022, KH-9 HEXAGON mapping camera system (MCS) and panoramic camera system (PCS) images were made available to the public, respectively. Although great efforts have been made by the scientific community to develop applications that utilize KH-9 HEXAGON images, little attention has been paid to de-noising and contrast enhancement of these images particularly over urban landscapes. This paper focuses on developing a de-noising and contrast enhancement pipeline for KH-9 HEXAGON MCS and PCS over urban regions. The proposed approach employs first a wavelet transform trained using a suite of ‘degree of over-smoothing’ metrics (DOSM) for image de-noising. These metrics are sensitive to structure, texture, edges and local homogeneity of image objects. Then the de-noised image is subjected to the multi-resolution Top-hat to optimize the contrast. This method incorporates a range of shapes and neighborhoods at multiple scales. The method was applied to a KH-9 HEXAGON MCS image (acquired in 1975) and PCS image (acquired in 1974) representing a complex urban landscape, to support comprehensive evaluation under a range of settings. Performance was assessed against three state-of-the-art benchmark approaches: residual learning (deep learning), blind deconvolution and spatial filtering. To evaluate the performance of the proposed pipeline against the benchmarks, we employed the saturation image edge difference standard-deviation, co-occurrence metrics and the semivariogram. Additionally, the potential applications of pre-processed results were demonstrated using change detection, identification reference points and stereo images. The proposed method not only improved the quality of the KH-9 image across the different urban landscape types, but also preserved the original spatial characteristics of the image in comparison with the benchmark methods. At a time when understanding the nature of our changing planet is paramount, the proposed pipeline should be of great benefit to investigators wishing to use KH program images to extend their historical or time-series analyses further back in time.

去噪和对比度增强的KH-9 HEXAGON地图和全景相机图像用于城市研究
2002年和2020-2022年,KH-9 HEXAGON测绘相机系统(MCS)和全景相机系统(PCS)的图像分别向公众开放。尽管科学界已经做出了巨大的努力来开发利用KH-9 HEXAGON图像的应用,但很少关注这些图像的去噪和对比度增强,尤其是在城市景观中。本文重点开发了KH-9 HEXAGON MCS和PCS在城市地区的去噪和对比度增强管道。所提出的方法首先使用使用一套“过平滑度”度量(DOSM)训练的小波变换来进行图像去噪。这些度量对图像对象的结构、纹理、边缘和局部均匀性很敏感。然后对去噪后的图像进行多分辨率Top-hat处理,以优化对比度。这种方法在多个尺度上结合了一系列形状和邻域。该方法被应用于代表复杂城市景观的KH-9 HEXAGON MCS图像(1975年获得)和PCS图像(1974年获得),以支持在一系列环境下的综合评估。根据三种最先进的基准方法评估性能:残差学习(深度学习)、盲去卷积和空间滤波。为了根据基准评估所提出的流水线的性能,我们使用了饱和度图像边缘差标准差、共现度量和半方差图。此外,使用变化检测、识别参考点和立体图像展示了预处理结果的潜在应用。与基准方法相比,该方法不仅提高了KH-9图像在不同城市景观类型中的质量,而且保留了图像的原始空间特征。在了解我们不断变化的星球的性质至关重要的时候,拟议的管道应该对希望使用KH程序图像来进一步扩展其历史或时间序列分析的研究人员大有裨益。
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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CiteScore
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