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Classification performance of random-projection-based dimensionality reduction of hyperspectral imagery

机译:基于随机投影的高光谱图像降维分类性能

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High-dimensional data such as hyperspectral imagery is traditionally acquired in full dimensionality before being reduced in dimension prior to processing. Conventional dimensionality reduction on-board remote devices is often prohibitive due to limited computational resources; on the other hand, integrating random projections directly into signal acquisition offers alternative dimensionality reduction without sender-side computational cost. Effective receiver-side reconstruction from such random projections has been demonstrated previously using compressive-projection principal component analysis (CPPCA). While this prior work has focused on squared-error quality measures, the present work reports experimental results illustrating preservation of statistical class separation and anomaly-detection performance for CPPCA reconstruction following random-projection-based dimensionality reduction.
机译:传统上,高维数据(例如高光谱图像)是在获取完整维之前进行处理的,然后再进行降维处理。由于有限的计算资源,机载远程设备的常规降维通常是禁止的。另一方面,将随机投影直接集成到信号采集中可以降低尺寸,而无需发送方的计算成本。先前已经使用压缩投影主成分分析(CPPCA)证明了从此类随机投影进行有效的接收器侧重建。尽管此先前的工作集中在平方误差质量度量上,但本工作报告的实验结果说明了在基于随机投影的降维之后,CPPCA重构的统计类别分离和异常检测性能得以保留。

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