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Activity and function recognition for moving and static objects in urban environments from wide-area persistent surveillance inputs

机译:从广域持续监控输入中识别出城市环境中移动和静态物体的活动和功能

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In this paper, we describe results from experimental analysis of a model designed to recognize activities and functions of moving and static objects from low-resolution wide-area video inputs. Our model is based on representing the activities and functions using three variables: (ⅰ) time; (ⅱ) space; and (ⅲ) structures. The activity and function recognition is achieved by imposing lexical, syntactic, and semantic constraints on the lower-level event sequences. In the reported research, we have evaluated the utility and sensitivity of several algorithms derived from natural language processing and pattern recognition domains. We achieved high recognition accuracy for a wide range of activity and function types in the experiments using Electro-Optical (EO) imagery collected by Wide Area Airborne Surveillance (WAAS) platform.
机译:在本文中,我们描述了一个模型的实验分析结果,该模型旨在识别来自低分辨率广域视频输入的移动和静态对象的活动和功能。我们的模型基于使用三个变量来表示活动和功能:(:)时间; (ⅱ)空间;和(ⅲ)结构。通过在较低级别的事件序列上施加词汇,句法和语义约束来实现活动和功能识别。在已报告的研究中,我们评估了从自然语言处理和模式识别领域衍生的几种算法的实用性和敏感性。在广域空中监视(WAAS)平台收集的电光(EO)图像的实验中,我们对各种活动和功能类型均实现了高识别精度。

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