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Development of a field-portable imaging system for sceneclassification using multispectral data fusion algorithms

机译:使用多光谱数据融合算法开发用于场景分类的现场便携式成像系统

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Battelle scientists have assembled a reconfigurable multispectral imaging and classification system which can be taken into the field to support automated real-time target/background discrimination. The system may be used for a variety of applications including environmental remote sensing, industrial inspection and medical imaging. This paper discusses hard tactical target and runway detection applications performed with the multispectral system. The Battelle-developed system consists of a passive, multispectral imaging electro-optical (EO) sensor suite and a real-time digital data collection and data fusion image processor. The EO sensor suite, able to collect imagery in 12 distinct wavebands from the ultraviolet (UV) through the long wave infrared (LWIR), consists of five charge-coupled device (CCD) cameras and two thermal IR imagers integrated on a common portable platform. The data collection and processing system consists of video switchers, recorders and a real-time sensor fusion/classification hardware system which combines any three input wavebands to perform real-lime data fusion by applying “look-up tables”, derived from tailored neural network algorithms, to classify the imaged scene pixel by pixel. The result is then visualized in a video format on a full color, 9-inch, active matrix Liquid Crystal Display (LCD). A variety of classification algorithms including artificial neural networks and data clustering techniques were successfully optimized to perform pixel-level classification of imagery in complex scenes comprised of tactical targets, buildings, roads, aircraft runways, and vegetation. Algorithms implemented included unsupervised maximum likelihood, Linde Buzo Gray, and “fuzzy” clustering algorithms along with Multilayer Perceptron and Learning Vector Quantization (LVQ) neural networks. Supervised clustering of the data was also evaluated. To assess classification robustness, algorithms were tested on imagery recorded over broad periods of time throughout the day. Results were excellent, indicating that scene classification is achievable despite. Temporal signature variations. Waveband saliency analyses were performed to determine which spectral bands contained the bulk of the discriminating information for discerning objects in the scenes. Optimized classification algorithms are then used to populate the look-up tables in the sensor fusion board for real-time use in the field
机译:巴特尔(Battelle)科学家已经组装了可重构的多光谱成像和分类系统,可以将其应用到现场,以支持自动实时目标/背景识别。该系统可用于多种应用,包括环境遥感,工业检查和医学成像。本文讨论了用多光谱系统执行的硬战术目标和跑道检测应用。由Battelle开发的系统包括一个无源,多光谱成像电光(EO)传感器套件以及一个实时数字数据收集和数据融合图像处理器。 EO传感器套件能够通过长波红外(LWIR)收集来自紫外线(UV)的12个不​​同波段的图像,它由集成在同一便携式平台上的五个电荷耦合器件(CCD)摄像机和两个红外热像仪组成。数据收集和处理系统由视频切换器,记录器和实时传感器融合/分类硬件系统组成,该系统结合任何三个输入波段,通过应用从定制神经网络获得的“查找表”来执行实时石灰数据融合。算法,以逐个像素对成像场景进行分类。然后将结果以视频格式在9英寸彩色有源矩阵液晶显示器(LCD)上可视化。成功地优化了包括人工神经网络和数据聚类技术在内的各种分类算法,以在由战术目标,建筑物,道路,飞机跑道和植被组成的复杂场景中对图像进行像素级分类。实施的算法包括无监督的最大似然,Linde Buzo Gray和“模糊”聚类算法以及多层感知器和学习矢量量化(LVQ)神经网络。还评估了数据的监督聚类。为了评估分类的鲁棒性,对一天中长时间记录的图像上的算法进行了测试。结果非常好,表明尽管可以实现场景分类。时间签名变化。进行了波段显着性分析,以确定哪些光谱带包含用于识别场景中物体的大部分识别信息。然后使用优化的分类算法来填充传感器融合板中的查找表,以便在现场实时使用

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