非静态背景下运动检测的融合背景估计方法

Eduardo Monari, Charlotte Pasqual
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引用次数: 31

摘要

在基于视频的监控和安全应用中,运动物体的检测是一项基本任务。许多检测系统使用背景估计方法来模拟观测环境。在户外监视中,移动背景(摇曳的树木、杂波)和光照变化(天气变化、反射等)是背景建模的主要挑战,开发一个满足所有这些要求的单一模型通常是不可能的。本文提出了一种用于非静态背景下运动检测的背景估计技术,克服了这一问题。我们介绍了一个具有长期模型和短期模型的增强背景估计体系结构。结果表明,两种互补方法的检测融合,提高了检测结果的质量和可靠性。
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Fusion of background estimation approaches for motion detection in non-static backgrounds
Detection of moving objects is a fundamental task in video based surveillance and security applications. Many detection systems use background estimation methods to model the observed environment. In outdoor surveillance, moving backgrounds (waving trees, clutter) and illumination changes (weather changes, reflections, etc.) are the major challenges for background modelling and the development of a single model that fulfils all these requirements is usually not possible. In this paper we present a background estimation technique for motion detection in non-static backgrounds that overcomes this problem. We introduce an enhanced background estimation architecture with a long-term model and a short-term model. Our system showed that fusion of the detections of these two complementary approaches, improves the quality and reliability of the detection results.
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