协同多摄像头监控与自动人员检测

T. Ahmedali, James J. Clark
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引用次数: 21

摘要

本文介绍了分布式协作智能监控摄像机网络的基础,该网络采用低成本嵌入式微处理器摄像机模块实现。每个摄像头使用Winnow算法训练一个人检测分类器,用于无监督的在线学习。训练样本被自动提取和标记,然后分类器被用来定位人的实例。为了提高检测性能,多个具有重叠视场的摄像机协作来确认结果。我们提出了一种新颖的无监督校准技术,允许每个相机模块表示其与其他模块的空间关系。在运行期间,摄像机应用学习到的空间相关性来确认彼此的检测。该技术隐式地处理无法确认的非重叠区域。它的计算效率非常适合我们硬件上的实时处理。
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Collaborative Multi-Camera Surveillance with Automated Person Detection
This paper presents the groundwork for a distributed network of collaborating, intelligent surveillance cameras, implemented with low-cost embedded microprocessor camera modules. Each camera trains a person detection classifier using the Winnow algorithm for unsupervised, online learning. Training examples are automatically extracted and labelled, and the classifier is then used to locate person instances. To improve detection performance, multiple cameras with overlapping fields of view collaborate to confirm results. We present a novel, unsupervised calibration technique that allows each camera module to represent its spatial relationship with the rest. During runtime, cameras apply the learned spatial correlations to confirm each other’s detections. This technique implicitly handles non-overlapping regions that cannot be confirmed. Its computational efficiency is well-suited to real-time processing on our hardware.
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