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Visualization of hyper spectral imagery

机译:超光谱图像的可视化

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We developed four new techniques to visualize hyper spectral image data for man-in-the-loop target detection. The methods respectively: (1) display the subsequent bands as a movie ("movie"), (2) map the data onto three channels and display these as a colour image ("colour"), (3) display the correlation between the pixel signatures and a known target signature ("match") and (4) display the output of a standard anomaly detector ("anomaly"). The movie technique requires no assumptions about the target signature and involves no information loss. The colour technique produces a single image that can be displayed in real-time. A disadvantage of this technique is loss of information. A display of the match between a target signature and pixels and can be interpreted easily and fast, but this technique relies on precise knowledge of the target signature. The anomaly detector signifies pixels with signatures that deviate from the (local) background. We performed a target detection experiment with human observers to determine their relative performance with the four techniques,. The results show that the "match" presentation yields the best performance, followed by "movie" and "anomaly", while performance with the "colour" presentation was the poorest. Each scheme has its advantages and disadvantages and is more or less suited for real-time and post-hoc processing. The rationale is that the final interpretation is best done by a human observer. In contrast to automatic target recognition systems, the interpretation of hyper spectral imagery by the human visual system is robust to noise and image transformations and requires a minimal number of assumptions (about signature of target and background, target shape etc.) When more knowledge about target and background is available this may be used to help the observer interpreting the data (aided target detection).
机译:我们开发了四种新技术,可视化用于循环目标检测的超频图像数据。方法像素签名和已知的目标签名(“匹配”)和(4)显示标准异常检测器(“异常”)的输出。电影技术不需要对目标签名的假设,并且不涉及信息丢失。颜色技术产生可在实时显示的单个图像。这种技术的缺点是信息丢失。目标签名和像素之间的匹配显示,并且可以轻松且快速地解释,但这种技术依赖于对目标签名的精确知识。异常检测器表示具有偏离(本地)背景的签名的像素。我们对人类观察者进行了目标检测实验,以确定其具有四种技术的相对性能,。结果表明,“匹配”演示文稿产生了最佳性能,其次是“电影”和“异常”,而“颜色”演示的性能是最贫穷的。每个方案都具有其优缺点,或多或少适用于实时和后期处理。理由是,最终的解释是由人类观察者做到的。与自动目标识别系统相比,人类视觉系统的超频图像的解释是对噪声和图像转换的强大,并且需要最少数量的假设(关于目标和背景,目标形状等)的最小数量目标和背景可用,这可用于帮助观察者解释数据(辅助目标检测)。

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