Automated registration of surveillance data for multi-camera fusion

Paolo Remagnino, Graeme A. Jones
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引用次数: 11

Abstract

The fusion of tracking and classification information in multi-camera surveillance environments will result in greater robustness, accuracy and temporal extent of interpretation of activity within the monitored scene. Crucial to such fusion is the recovery of the camera calibration which allows such information to be expressed in a common coordinate system. Rather than relying on the traditional time-consuming, labour-intensive and expert-dependent calibration procedures to recover the camera calibration, extensible plug-and-play surveillance components should employ simple learning calibration procedures by merely watching objects entering, passing through and leaving the monitored scene. In this work we present such a two stage calibration procedure. In the first stage, a linear model of the projected height of objects in the scene is used in conjunction with world knowledge about the average person height to recover the image-plane to local-ground-plane transformation of each camera. In the second stage, a Hough transform technique is used to recover the transformations between these local ground planes.
用于多摄像机融合的监控数据自动注册
在多摄像机监控环境中,跟踪和分类信息的融合将导致对被监控场景中活动的更强的鲁棒性、准确性和时间范围的解释。这种融合的关键是相机校准的恢复,它允许这些信息在一个共同的坐标系中表示。可扩展即插即用监控组件不应依靠传统的耗时、费力和依赖专家的校准程序来恢复摄像机校准,而应采用简单的学习校准程序,只需观察物体进入、经过和离开监控场景。在这项工作中,我们提出了这样一个两阶段的校准程序。在第一阶段,利用场景中物体投影高度的线性模型,结合世界上关于人的平均高度的知识来恢复每个相机的像平面到局部地平面的转换。在第二阶段,使用霍夫变换技术来恢复这些局部地平面之间的变换。
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