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Adaptive hyperspectral small-target detection

机译:自适应高光谱小目标检测

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Abstract: A novel adaptive multilevel classification and detection method that takes into account both spectral and spatial characteristics of the data is proposed. Principal clusters are defined first, and those include background clusters and the predefined target clusters. The classification is done using minimum distance statistical classifier. Here, the main concern is to minimize misclassification rate, by allowing a number of pixels for which the classification confidence is low to remain unclassified at this level. The candidate clusters that are used in the analysis for the unclassified pixels are defined next. The candidate clusters are determined from both the spatial and spectral neighborhoods, using the labels of already classified pixels. Using defined candidate clusters, the mixing model analysis is performed. The linear least squares method to determine the fractions of particular candidate clusters in the corresponding pixel is applied. The results of the mixing model analysis are checked, and if the results of the analysis are satisfactory, the next step is performed. If the results of the analysis are not satisfactory, the candidate clusters list is renewed. After the loop processing has been completed for all pixels in the image, the target detection is performed. That process is based on comparing the estimated quantity of the pixels target endmember and the predefined thresholds. At the end, the detected targets are clustered, and their parameters are estimated. The proposed method was successfully applied to both synthetic and AVIRIS hyperspectral images of the Naval Air Station Fallon. !20
机译:摘要:提出了一种新的自适应多级分类和检测方法,考虑了数据的光谱和空间特征。首先定义主群集群,包括背景簇和预定义的目标集群。使用最小距离统计分类器完成分类。这里,主要问题是通过允许分类信心较低的许多像素来最小化错误分类率,以便在该水平下保持未分类。接下来定义了在分类分析的分析中使用的候选群集。候选集群由空间和光谱邻域确定使用已经分类的像素的标签。使用定义的候选群集,执行混合模型分析。施加用于确定相应像素中特定候选簇的分数的线性最小二乘法。检查混合模型分析的结果,如果分析结果令人满意,则执行下一步。如果分析结果不令人满意,则续集候选集群列表。在为图像中的所有像素完成循环处理之后,执行目标检测。该过程基于比较像素目标endMember的估计量和预定义阈值。最后,检测到的目标是聚集的,并且估计其参数。该提出的方法已成功应用于海军航空站法国的合成和Aviris高光谱图像。 !20

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