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用于目标检测的动态场景贝叶斯建模。

Bayesian modeling of dynamic scenes for object detection.

作者信息

Sheikh Yaser, Shah Mubarak

机构信息

School of Computer Science, University of Central Florida, Orlando 32816, USA.

出版信息

IEEE Trans Pattern Anal Mach Intell. 2005 Nov;27(11):1778-92. doi: 10.1109/TPAMI.2005.213.

DOI:10.1109/TPAMI.2005.213
PMID:16285376
Abstract

Accurate detection of moving objects is an important precursor to stable tracking or recognition. In this paper, we present an object detection scheme that has three innovations over existing approaches. First, the model of the intensities of image pixels as independent random variables is challenged and it is asserted that useful correlation exists in intensities of spatially proximal pixels. This correlation is exploited to sustain high levels of detection accuracy in the presence of dynamic backgrounds. By using a nonparametric density estimation method over a joint domain-range representation of image pixels, multimodal spatial uncertainties and complex dependencies between the domain (location) and range (color) are directly modeled. We propose a model of the background as a single probability density. Second, temporal persistence is proposed as a detection criterion. Unlike previous approaches to object detection which detect objects by building adaptive models of the background, the foreground is modeled to augment the detection of objects (without explicit tracking) since objects detected in the preceding frame contain substantial evidence for detection in the current frame. Finally, the background and foreground models are used competitively in a MAP-MRF decision framework, stressing spatial context as a condition of detecting interesting objects and the posterior function is maximized efficiently by finding the minimum cut of a capacitated graph. Experimental validation of the proposed method is performed and presented on a diverse set of dynamic scenes.

摘要

精确检测运动物体是稳定跟踪或识别的重要前提。在本文中,我们提出了一种目标检测方案,该方案相对于现有方法有三点创新。首先,对将图像像素强度视为独立随机变量的模型提出了质疑,并断言在空间上相邻像素的强度之间存在有用的相关性。利用这种相关性在动态背景下保持高水平的检测精度。通过在图像像素的联合域-范围表示上使用非参数密度估计方法,直接对多模态空间不确定性以及域(位置)和范围(颜色)之间的复杂依赖性进行建模。我们提出将背景建模为单个概率密度。其次,提出时间持续性作为检测标准。与以往通过构建背景自适应模型来检测物体的目标检测方法不同,对前景进行建模以增强物体检测(无需显式跟踪),因为在前一帧中检测到的物体包含了当前帧检测的大量证据。最后,背景和前景模型在MAP-MRF决策框架中竞争性使用,强调空间上下文作为检测感兴趣物体的条件,并通过找到容量图的最小割来有效地最大化后验函数。在所提出方法的实验验证是在各种动态场景上进行并展示的。

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