Foreground object localization using a flooding algorithm based on inter-frame change and colour

I. Grinias, G. Tziritas
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引用次数: 2

Abstract

A Bayesian, fully automatic moving object localization method is proposed, using inter-frame differences and background/foreground colour as discrimination cues. Change detection pixel classification to one of the labels "changed" or "unchanged" is obtained by mixture analysis, while histograms are used for statistical description of colours. High confidence, change detection based, statistical criteria are used to compute a map of initial labelled pixels. Finally, a region growing algorithm, which is named priority multi-label flooding algorithm, assigns pixels to labels using Bayesian dissimilarity criteria. Localization results on well-known benchmark image sequences as well as on webcam and compressed videos are presented.
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使用基于帧间变化和颜色的泛洪算法进行前景目标定位
提出了一种利用帧间差异和背景/前景颜色作为识别线索的贝叶斯全自动运动目标定位方法。通过混合分析得到变化检测像素分类到“改变”或“不变”的标签之一,使用直方图对颜色进行统计描述。高置信度,基于变化检测,统计标准用于计算初始标记像素的地图。最后,提出了一种区域增长算法,即优先多标签泛洪算法,利用贝叶斯不相似度准则为标签分配像素。给出了在知名基准图像序列、网络摄像头和压缩视频上的定位结果。
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