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Motion and appearance based background subtraction for freely moving cameras

机译:基于运动和外观的背景减法自由移动摄像机

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摘要

With increasing popularity of smart phone cameras and wearable cameras, it is imperative to develop robust vision systems in analyzing videos captured by these freely moving cameras. In this paper, we propose a novel motion and appearance based algorithm for foreground/background segmentation of these videos. Unlike existing methods, it does not require any prior information nor does it restrict camera motion or scene geometry. The proposed algorithm first estimates a dense motion field between two consecutive frames, and obtains a motion-based foreground probability estimate for each pixel by comparing the motion field with its low-rank approximation. In parallel, color features are extracted by sliding a fixed-size neighborhood window over the entire image. Using the motion-based probability estimates, highly probable foreground and background color features are identified and used to learn foreground and background appearance models. These models then generate appearance-based probability estimate for each pixel. To overcome the inaccuracies in appearance modeling and background motion approximation, we incorporate an innovative Mega-pixel denoising process that uses color segmentation to smooth out the probability estimates. Finally, the denoised probability estimates are combined with the image gradient map to produce the output foreground mask under the Graph-Cut optimization framework. To cope with non-stationary dynamic scenes, the foreground and background appearance models are continuously updated with highly probable foreground and background color features. Extensive evaluations on publicly available test sequences show that the proposed technique outperforms six state-of-the-art algorithms.
机译:随着智能手机相机和可穿戴摄像机的普及,必须在分析由这些自由移动摄像机捕获的视频中开发强大的视觉系统。在本文中,我们提出了一种新的运动和外观基于前景/背景分割的运动算法。与现有方法不同,它不需要任何先前的信息,也不需要限制相机运动或场景几何形状。所提出的算法首先估计两个连续帧之间的密集运动场,并通过将运动场与其低秩近似进行比较来获得每个像素的基于运动的前景概率估计。并行地,通过在整个图像上滑动固定尺寸的邻域窗口来提取颜色特征。使用基于运动的概率估计,识别出高度可能的前景和背景颜色特征,并用于学习前景和背景外观模型。然后,这些模型生成每个像素的基于外观的概率估计。为了克服外观建模和背景运动近似的不准确性,我们纳入了一种创新的巨型像素去噪过程,它使用颜色分割来平滑概率估计。最后,去噪概率估计与图像梯度图组合以在图形切割优化框架下产生输出前景掩模。为了应对非静止动态场景,前景和背景外观模型不断更新,具有高可能的前景和背景颜色特征。对公开的测试序列的广泛评估表明,所提出的技术优于六种最先进的算法。

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