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S3CRF: Sparse Spatial-Spectral Conditional Random Field Target Detection Framework for Airborne Hyperspectral Data

机译:S3CRF:空气传播高光谱数据稀疏空间光谱条件随机场目标检测框架

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摘要

Airborne hyperspectral data have both high spectral and spatial resolutions. Although the finer spatial resolution allows more abundant spatial characteristics to be exhibited, the spectral variability problem remains. However, few of the current spatial-spectral target detection methods can fully exploit the spatial information while solving the spectral variability problem. In this paper, a sparse spatial-spectral conditional random field (CRF) target detection framework for airborne hyperspectral data, namely (SCRF)-C-3, is proposed to address these problems, in which the unary and pairwise potential functions are designed accordingly. To model the spatial information in a larger neighborhood while solving the spectral variability problem, an object-oriented strategy is introduced to modify the residual map obtained by sparse representation. For the pairwise potential function, the adaptive local eight-neighborhood structure is constructed considering the neighboring spatial correlations. Furthermore, global spatial-contextual information is captured through the inference of (SCRF)-C-3. Finally, the a posteriori probability of each pixel belonging to the target is utilized for the target detection. The experiments undertaken in this study confirmed that the proposed method can effectively suppress the background while achieving a competitive quantitative and qualitative target detection performance.
机译:空中高光谱数据具有高光谱和空间分辨率。虽然更精细的空间分辨率允许展出更丰富的空间特征,但仍然存在频谱可变性问题。然而,很少有当前的空间光谱目标检测方法可以在解决光谱可变性问题的同时充分利用空间信息。在本文中,提出了一种用于机载高光谱数据的稀疏空间光谱条件随机场(CRF)目标检测框架,即(SCRF)-C-3,以解决这些问题,其中联合和成对潜在功能是相应的。为了在求解光谱可变性问题的同时模拟较大邻域中的空间信息,引入了面向对象的策略以修改通过稀疏表示获得的残差映射。对于成对势函数,考虑相邻的空间相关性构造自适应局部八个邻域结构。此外,通过推断(SCRF)-C-3的推断捕获全局空间上下文信息。最后,利用了属于目标的每个像素的后验概率进行目标检测。本研究中进行的实验证实,该方法可以有效地抑制背景,同时实现竞争的定量和定性目标检测性能。

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