基于边缘保留的自适应低阶群稀疏模型,用于消除 SRTM 中的混合噪声

IF 2.8 3区 地球科学 Q2 GEOGRAPHY, PHYSICAL Earth Surface Processes and Landforms Pub Date : 2024-09-04 DOI:10.1002/esp.5976
Xiao Fan, Hongming Zhang, Qinke Yang, Baoyuan Liu, Chenyu Ge, Zhuang Yan, Yuwei Sun, Jincheng Ni, Linlin Yuan, Xiaoxing Huang
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引用次数: 0

摘要

航天飞机雷达地形图任务(SRTM)是地形表面形态的数字表示,包含丰富的地形信息,广泛用于环境分析。然而,SRTM 受到混合噪声的不利影响,混合噪声通常包括随机噪声和条纹噪声。混合噪声导致地形信息大量丢失,降低了相关研究的有效性。为了消除 SRTM 数据中的混合噪声,我们提出了一种基于边缘保存的自适应低秩群稀疏模型(ALGS_EP)来消除数据集中的混合噪声。该方法依赖于考虑地形梯度特征的低秩群稀疏模型。它可以计算地形因子,使噪声消除模型适应地形变化。此外,它还整合了高程数据的边缘结构,并应用双梯度约束来保留高程数据的结构细节。所提出的模型建立在交替方向乘法框架之上,通过引入可变权重,在迭代过程中根据高程数据的梯度进行调整,从而增强了传统的加权核范式最小化算法。此外,在计算迭代次数时,它还纳入了带状噪声和残余数据块之间的相关性,确保迭代求解方法能收敛到最优解。我们使用 ALGS_EP 处理全球 SRTM 1 数据,并发布了更高质量、更高精度的高程数据集。我们对噪声消除前后的高程数据噪声进行了统计分析。模拟和实证结果表明,该模型具有很强的鲁棒性,在目测和定量评估方面都比现有方法更有效。与原始数据相比,噪声消除率高达 97.6%。因此,这项研究对使用数字高程模型作为重要数据层的应用非常有价值。
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An adaptive low-rank group sparse model based on edge-preserving for eliminating mixed noise in SRTM

The Shuttle Radar Topography Mission (SRTM) is a digital representation of the terrain surface morphology that contains rich terrain information and is widely used in environmental analyses. However, SRTM is adversely affected by mixed noise, which typically include random and stripe noise. Mixed noise results in the significant loss of topographic information, which reduce the validity of related research. To eliminate mixed noise in SRTM data, we propose an adaptive low-rank group sparse model based on edge preservation (ALGS_EP) to remove mixed noise from datasets. The method relies on a low-rank group sparse model that considers the gradient features of the terrain. It calculates a terrain factor to adapt the noise elimination model to terrain changes. Additionally, it integrates with the edge structure of elevation data and applies a double-gradient constraint to preserve the structural details of the elevation data. The proposed model, built upon the alternating direction multiplier method framework, enhances the traditional weighted kernel paradigm minimization algorithm by introducing variable weights that adjust according to the gradient of elevation data during iterations. Additionally, it incorporates the correlation between strip noise and residual data blocks when computing the iteration count, ensuring an iterative solution approach that converges to the optimal solution. We used ALGS_EP to process global SRTM 1 data and published a higher-quality and higher-precision elevation dataset. The elevation data noise before and after noise elimination were statistically analyzed. Simulated and empirical results show that the model is highly robust and more effective than existing methods in both visual and quantitative evaluations. The noise elimination rate was 97.6%, compared to the original data. Therefore, this research was valuable for applications that use digital elevation model as an important data layer.

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来源期刊
Earth Surface Processes and Landforms
Earth Surface Processes and Landforms 地学-地球科学综合
CiteScore
6.40
自引率
12.10%
发文量
215
审稿时长
4 months
期刊介绍: Earth Surface Processes and Landforms is an interdisciplinary international journal concerned with: the interactions between surface processes and landforms and landscapes; that lead to physical, chemical and biological changes; and which in turn create; current landscapes and the geological record of past landscapes. Its focus is core to both physical geographical and geological communities, and also the wider geosciences
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