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Detection of Anomalies Produced by Buried Archaeological Structures Using Nonlinear Principal Component Analysis Applied to Airborne Hyperspectral Image

机译:非线性主成分分析在机载高光谱图像中探测埋藏考古结构异常

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In this paper, airborne hyperspectral data have been exploited by means of Nonlinear Principal Component Analysis (NLPCA) to test their effectiveness as a tool for archaeological prospection, evaluating their potential for detecting anomalies related to buried archaeological structures. In the literature, the NLPCA was used to decorrelate the information related to a hyperspectral image. The resulting nonlinear principal components (NLPCs) contain information related to different land cover types and biophysical properties, such as vegetation coverage or soil wetness. From this point of view, NLPCA applied to airborne hyperspectral data was exploited to test their effectiveness and capability in highlighting the anomalies related to buried archaeological structures. Each component obtained from the NLPCA has been interpreted in order to assess any tonal anomalies. As a matter of a fact, since every analyzed component exhibited anomalies different in terms of size and intensity, the Separability Index (SI) was applied for measuring the tonal difference of the anomalies with respect to the surrounding area. SI has been evaluated for determining the potential of anomalies detection in each component. The airborne Multispectral Infrared and Visible Imaging Spectrometer (MIVIS) images, collected over the archaeological Park of Selinunte, were analyzed for this purpose. In this area, the presence of remains, not yet excavated, was reported by archaeologists. A previous analysis of this image, carried out to highlight the buried structures, appear to match the archaeological prospection. The results obtained by the present work demonstrate that the use of the NLPCA technique, compared to previous approaches emphasizes the ability of airborne hyperspectral images to identify buried structures. In particular, the adopted data processing flow chart (i.e., NLPCA and SI techniques, data resampling criteria and anomaly evaluations criteria) applied to MIVIS airborne hyperspectr- l data, collected over Selinunte Archaeological Park, highlighted the ability of the NLPCA technique in emphasizing the anomalies related to the presence of buried structure.
机译:在本文中,已通过非线性主成分分析(NLPCA)利用机载高光谱数据来测试其作为考古勘探工具的有效性,评估其检测与埋藏考古结构相关的异常的潜力。在文献中,使用NLPCA来解相关与高光谱图像有关的信息。生成的非线性主成分(NLPC)包含与不同土地覆盖类型和生物物理特性(例如植被覆盖或土壤湿度)有关的信息。从这个角度出发,利用NLPCA应用于机载高光谱数据来测试其有效性和能力,以突出显示与埋藏考古结构有关的异常。解释了从NLPCA获得的每个组件,以便评估任何音调异常。事实上,由于每个被分析的组件在大小和强度方面都表现出不同的异常,因此将可分离性指数(SI)用于测量异常相对于周围区域的色调差异。已对SI进行了评估,以确定每个组件中异常检测的可能性。为此,分析了在塞利南德考古公园采集的机载多光谱红外和可见光谱仪(MIVIS)图像。在该地区,考古学家报告了尚未发掘的遗骸。对该图像的先前分析是为了突出埋藏的结构而进行的,似乎与考古学前景相符。通过当前工作获得的结果表明,与以前的方法相比,使用NLPCA技术强调了机载高光谱图像识别掩埋结构的能力。特别是,通过Selinunte考古公园收集的MIVIS机载高光谱数据所采用的数据处理流程图(即NLPCA和SI技术,数据重采样标准和异常评估标准)强调了NLPCA技术在强调与埋藏结构的存在有关的异常。

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