Special Section Guest Editorial: Sparsity Driven High Dimensional Remote Sensing Image Processing and Analysis

Xin Huang, Paolo Gamba, Bormin Huang
2016 Journal of Applied Remote Sensing  
We are witnessing a tremendous increase in the amount of Earth observation (EO) data, which opens a new era of high-dimensional remotely sensed data application. A diversity of sensors is capable of providing high spectral and spatial resolution imagery with multiple viewing angles, multiple sensors, and dense time series, forming a high-dimensional data space in spatiotemporal and spectral domains. At the same time, a number of state-of-the-art image processing techniques, e.g., multiple
more » ... e extraction and kernel trick, tend to generate a high-dimensional feature space to improve the accuracy of image interpretation. In this context, in pace with the rapid developments in remote sensors and image analysis techniques, high-dimensional data processing is becoming a common and challenging issue. In recent years, signal sparsity has become a powerful and promising statistical modeling tool for high-dimensional image processing and analysis. The sparsity prior is well suited for remote sensing applications, since the puzzling obstacles, such as limited reference data, complicated sensor malfunctions, and poor atmospheric conditions, can be naturally modeled as sparse recovery process with promising solutions. However, there exists a great imbalance between the current status and the great potential for sparsity-based high-dimensional remote sensing image processing. Hence, there is an urgent demand to comprehensively reveal the role of sparsity in remote sensing scenes and develop effective sparsity driven processing techniques for such informative and advanced datasets. In line with these comments, the ten papers in this special section deal with different research lines. There are four papers about sparse coding (SC) based remote sensing image interpretation. "Sparse coding-based correlation model for land-use scene classification in high-resolution remote-sensing images" by K. Qi et al. designs SC-based correlograms to discriminate landuse classes with a lower reconstruction error than the widely used k-means approach. "l 1.2 -norm regularized nonnegative low-rank and sparse affinity graph for remote sensing image segmentation" by S. Tian et al. includes l 1.2 -norm regularization into the low-rank representation paradigm, to capture the intrinsic spatial manifold structure of the high-spatialresolution remote sensing data. Additionally, it exploits the advantage of low rank and sparse representation to improve the performance of graph nonnegative factorization segmentation. "Temperature and emissivity separation via sparse representation with thermal airborne hyperspectral" by C. Li et al. imposes sparse regularization on the temperature and emissivity separation process by using the dictionary from Johns Hopkins University's spectral library as a prior, implementing a robust retrieval technique for noisy signal conditions. Finally, "Geometric correction method for linear array pushbroom infrared imagery using compressive sampling" by J. Chen et al. leverages the equivalent bias angles to approximate the influence of the errors in the imaging process and adopts a compressive sensing method, with sparse coding as a core factor, to recover the equivalent bias angle signals. From a different perspective, four papers focus on the endogenous sparsity property of the remote sensing data, neatly investigated to improve the application performance. In "Identifying
doi:10.1117/1.jrs.10.042001 fatcat:n2s7tfqdozdtfndamcyndhzcwu