用于检测关键交通基础设施资产附近异常情况的自适应图像处理和传感技术

M. Magee, M. Rigney
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引用次数: 0

摘要

这项工作提出了一种方法,用于检测交通基础设施资产的异常状况,并产生警报,以通过各种传感技术引起监测人员的注意。所开发的方法由四个部分组成,能够检测到与通常观察到的情况有很大差异的情况。这四部分的过程包括以下步骤:(1)在训练阶段学习运输资产的强度特征模型。(2)在前景目标分割阶段,基于像素特征对目标进行分割,这些像素特征与强度特征模型中体现的像素特征存在很大差异。(3)匹配某些形态、拓扑和/或几何约束的分割对象被标记为进一步(暂时)处理的候选对象。(4)然后识别具有意外时间持久性或几何特征的分割对象,并将其引起人类操作员的注意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive image processing and sensing technologies for detecting anomalous conditions near critical transportation infrastructure assets
This work presents a methodology for detecting anomalous conditions on transportation infrastructure assets and generating alarms to draw the attention of personnel monitoring them via various sensing technologies. The methodology developed, which consists of a four part process, is capable of detecting conditions that vary substantially from those that are normally observed. This four part process consists of the following steps: (1) an intensity characteristic model of the transportation asset is learned during a training phase. (2) During the foreground object segmentation phase, objects are segmented based on pixel characteristics that vary substantially from those embodied in the intensity characteristic model. (3) Segmented objects that match certain morphological, topological, and/or geometric constraints are flagged as being candidates for further (temporal) processing. (4) Segmented objects with unanticipated temporal persistence or geometric characteristics are then identified and brought to the attention of a human operator.
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