关于图像与非图像数据融合的观点

D. Hall
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引用次数: 7

摘要

越来越多的多传感器系统正在被开发用于收集、处理和传播图像和非图像数据。应用包括国土安全、设施监控和军事态势评估。传统上,图像和非图像数据的融合是在人工参与的情况下进行的。通常将图像数据作为“基础”数据源,将非图像数据简单地覆盖在图像数据上,或者相反,将非图像数据视为基础数据,并使用图像数据来确认被观测实体的身份。本文讨论了多传感器融合问题,并认为新技术正在出现,这些新技术允许从“原始”数据级到特征级、决策级和知识级的多级推理中融合图像和非图像数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Perspectives on the fusion of image and non-image data
Increasingly, multi-sensor systems are being developed to collect, process, and disseminate image and non-image data. Applications include homeland security, monitoring of facilities, and military situation assessment. Fusion of image and non-image data has traditionally been performed with extensive human-in-the-loop involvement. Typically the image data are used as the "fundamental" data source with non-image data simply overlaid on the image data, or conversely the non-image data are treated as fundamental, and the image data are used to confirm the identity of observed entities. This paper discusses the problem of multi-sensor fusion and argues that new techniques are emerging that allows fusion of image and non-image data at multiple levels of inference from the "raw" data level, to the feature level, decision-level, and knowledge level.
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