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On the effects of spatial and spectral resolution on spatial-spectral target detection in SHARE 2012 and Bobcat 2013 hyperspectral imagery

机译:关于空间和光谱分辨率对SHARE 2012和Bobcat 2013高光谱图像中空间光谱目标检测的影响

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Previous work with the Bobcat 2013 data set1 showed that spatial-spectral feature extraction on visible to near infrared (VNIR) hyperspectral imagery (HSI) led to better target detection and discrimination than spectral-only techniques; however, the aforementioned study could not consider the possible benefits of the shortwave-infrared (SWIR) portion of the spectrum due to data limitations. In addition, the spatial resolution of the Bobcat 2013 imagery was fixed at 8cm without exploring lower spatial resolutions. In this work, we evaluate the tradeoffs in spatial and spectral resolution and spectral coverage between for a common set of targets in terms of their effects on spatial-spectral target detection performance. We show that for our spatial-spectral target detection scheme and data sets, the adaptive cosine estimator (ACE) applied to S-DAISY and pseudo Zernike moment (PZM) spatial-spectral features can distinguish between targets better than ACE applied only to the spectral imagery. In particular, S-DAISY operating on bands uniformly selected from the SWIR portion of ProSpecTIR-VS sensor imagery in conjunction with bands closely corresponding to the Airborne Real-time Cueing Hyperspectral Reconnaissance (ARCHER) sensor's VNIR bands (80 total) led to the best overall average perfomance in both target detection and discrimination.
机译:Bobcat 2013数据集1的先前工作表明,从可见光到近红外(VNIR)高光谱图像(HSI)的空间光谱特征提取比纯光谱技术能更好地进行目标检测和辨别。但是,由于数据限制,上述研究未能考虑频谱的短波红外(SWIR)部分可能带来的好处。此外,山猫2013年图像的空间分辨率固定为8厘米,而没有探索较低的空间分辨率。在这项工作中,我们评估了一组通用目标对空间光谱目标检测性能的影响,在空间和光谱分辨率以及光谱覆盖范围之间进行了权衡。我们表明,对于我们的空间光谱目标检测方案和数据集,应用于S-DAISY的自适应余弦估计器(ACE)和伪Zernike矩(PZM)空间光谱特征可以比仅应用于光谱的ACE更好地区分目标图像。尤其是,在ProProTIR-VS传感器图像的SWIR部分中统一选择的频带上运行的S-DAISY,以及与机载实时提示高光谱侦察(ARCHER)传感器的VNIR频带(共80个)紧密对应的频带,导致了最佳效果目标检测和识别的总体平均性能。

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