视觉监控元数据管理

P. Chmelar, J. Zendulka
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引用次数: 2

摘要

本文研究了一种视觉监控元数据管理的解决方案。来自许多摄像机的数据使用计算机视觉单元进行注释,以生成表示运动物体状态的元数据。假设数据经常是不确定的,有噪声的,并且一些状态缺失。该解决方案由以下三层组成:(一)数据清洗层-改善质量的数据通过平滑和填写缺失的状态在短序列称为轨道代表一个复合状态的移动对象时空的子空间中紧随其后的是一个摄像头,(b)数据集成层——分配一个全球身份追踪代表同一个对象,(c)持久层——管理元数据在数据库中,以便它可以用于在线识别和离线查询、分析和挖掘。(A)采用卡尔曼滤波技术,(b)采用基于运动物体状态及其视觉属性的分类方法。(c)也提出了一种物体模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual Surveillance Metadata Management
The paper deals with a solution for visual surveillance metadata management. Data coming from many cameras is annotated using computer vision units to produce metadata representing moving objects in their states. It is assumed that the data is often uncertain, noisy and some states are missing. The solution consists of the following three layers: (a) data cleaning layer - improves quality of the data by smoothing it and by filling in missing states in short sequences referred to as tracks that represent a composite state of a moving object in a spatiotemporal subspace followed by one camera, (b) Data integration layer - assigns a global identity to tracks that represent the same object, (c) Persistence layer - manages the metadata in a database so that it can be used for online identification and offline querying, analyzing and mining. A Kalman filter technique is used to solve (a) and a classification based on the moving object's state and its visual properties is used in (b). An object model for layer (c) is presented too.
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