Learning color and locality cues for moving object detection and segmentation

Feng Liu, Michael Gleicher
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引用次数: 54

Abstract

This paper presents an algorithm for automatically detecting and segmenting a moving object from a monocular video. Detecting and segmenting a moving object from a video with limited object motion is challenging. Since existing automatic algorithms rely on motion to detect the moving object, they cannot work well when the object motion is sparse and insufficient. In this paper, we present an unsupervised algorithm to learn object color and locality cues from the sparse motion information. We first detect key frames with reliable motion cues and then estimate moving sub-objects based on these motion cues using a Markov Random Field (MRF) framework. From these sub-objects, we learn an appearance model as a color Gaussian Mixture Model. To avoid the false classification of background pixels with similar color to the moving objects, the locations of these sub-objects are propagated to neighboring frames as locality cues. Finally, robust moving object segmentation is achieved by combining these learned color and locality cues with motion cues in a MRF framework. Experiments on videos with a variety of object and camera motion demonstrate the effectiveness of this algorithm.
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学习运动物体检测和分割的颜色和位置线索
本文提出了一种从单目视频中自动检测和分割运动目标的算法。检测和分割移动的物体从有限的物体运动的视频是具有挑战性的。由于现有的自动算法依赖于运动来检测运动物体,在物体运动稀疏且运动不足的情况下无法很好地工作。本文提出了一种从稀疏运动信息中学习物体颜色和位置线索的无监督算法。我们首先使用可靠的运动线索检测关键帧,然后使用马尔可夫随机场(MRF)框架基于这些运动线索估计运动子目标。从这些子对象中,我们学习了一个外观模型作为颜色高斯混合模型。为了避免与运动物体颜色相似的背景像素的错误分类,这些子物体的位置作为局部线索传播到相邻帧。最后,将这些学习到的颜色和位置线索与运动线索结合在MRF框架中,实现了鲁棒的运动目标分割。对各种物体和摄像机运动的视频进行实验,证明了该算法的有效性。
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