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On the impact of PCA dimension reduction for hyperspectral detection of difficult targets

机译:关于PCA降维对困难目标的高光谱检测的影响

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Due to constraints both at the sensor and on the ground, dimension reduction is a common preprocessing step performed on many hyperspectral imaging datasets. However, this transformation is not necessarily done with the ultimate data exploitation task in mind-for example, target detection or ground cover classification. Indeed, theoretically speaking it is possible that a lossy operation such as dimension reduction might have a negative impact on detection performance. This notion is investigated experimentally using real-world hyperspectral imaging data. The popular principal components transform [aka. principal components analysis (PCA)] is used to explore the impact that dimension reduction has on adaptive detection of difficult targets in both the reflective and emissive regimes. Using seven state-of-the-art algorithms, it is shown that in many cases PCA can have a minimal impact on the detection statistic value for a target that is spectrally similar to the background against which it is sought.
机译:由于传感器和地面的限制,减小尺寸是对许多高光谱成像数据集执行的常见预处理步骤。但是,这种转换不一定要考虑到最终的数据开发任务,例如目标检测或地面覆盖分类。实际上,从理论上讲,诸如降维之类的有损操作可能会对检测性能产生负面影响。使用现实世界的高光谱成像数据对这一概念进行了实验研究。流行的主成分变换[aka。主成分分析(PCA)]用于探索降维对反射和发射体制中困难目标的自适应检测的影响。使用七种最新算法,结果表明,在许多情况下,PCA对目标的检测统计值的影响最小,该目标在光谱上与寻求背景的背景相似。

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