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A Novel Automatic Target Recognition Approach For Multispectral Data

机译:一种用于多光谱数据的新型自动目标识别方法

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Automating the detection and identification of significant threats using multispectral (MS) imagery is a critical issue in remote sensing. Unlike previous multispectral target recognition approaches, we utilize a three-stage process that not only takes into account the spectral content, but also the spatial information. The first stage applies a matched filter to the calibrated MS data. Here, the matched filter is tuned to the spectral components of a given target and produces an image intensity map of where the best matches occur. The second stage represents a novel detection algorithm, known as the focus of attention (FOA) stage. The FOA performs an initial screening of the data based on intensity and size checks on the matched filter output. Next, using the target's pure components, the third stage performs constrained liner unmixing on MS pixels within the FOA detected regions. Knowledge sources derived from this process are combined using a sequential probability ratio test (SPRT). The SPRT can fuse contaminated, uncertain and disparate information from multiple sources. We demonstrate our approach on identifying a specific target using actual data collected in ideal conditions and also use approximately 35 square kilometers of urban clutter as false alarm data.
机译:自动化使用多光谱(MS)图像的重大威胁的检测和识别是遥感中的一个关键问题。与以前的多光谱目标识别方法不同,我们利用了一个三阶段的过程,不仅考虑了光谱内容,还可以考虑到空间信息。第一阶段将匹配的滤波器应用于校准的MS数据。这里,将匹配的滤波器调谐到给定目标的频谱分量,并产生最佳匹配的位置的图像强度图。第二阶段代表一种新的检测算法,称为关注的焦点(FOA)阶段。 FOA基于对匹配的滤波器输出的强度和大小检查来执行数据的初始筛选。接下来,使用目标的纯组分,第三阶段在FOA检测区域内的MS像素上执行受约束的衬垫解混。使用顺序概率比测试(SPRT)组合从该过程中得出的知识源。 SPRT可以从多个来源污染的污染,不确定和不同的信息。我们展示了我们在使用理想条件下收集的实际数据识别特定目标的方法,也使用大约35平方公里的城市杂波作为假警报数据。

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