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AUGMENTED ROBUST PCA FOR FOREGROUND-BACKGROUND SEPARATION ON NOISY, MOVING CAMERA VIDEO

机译:用于嘈杂的前景背景分离的增强强大的PCA,移动相机视频

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This work presents a novel approach for robust PCA with total variation regularization for foreground-background separation and denoising on noisy, moving camera video. Our proposed algorithm registers the raw (possibly corrupted) frames of a video and then jointly processes the registered frames to produce a decomposition of the scene into a low-rank background component that captures the static components of the scene, a smooth foreground component that captures the dynamic components of the scene, and a sparse component that isolates corruptions. Unlike existing methods, our proposed algorithm produces a panoramic low-rank component that spans the entire field of view, automatically stitching together corrupted data from partially overlapping scenes. The low-rank portion of our robust PCA model is based on a recently discovered optimal low-rank matrix estimator (OptShrink) that requires no parameter tuning. We demonstrate the performance of our algorithm on both static and moving camera videos corrupted by noise and outliers.
机译:这项工作提出了一种新颖的PCA方法,具有前景背景分离和噪声的噪声,移动摄像机视频的总变化正规化。我们所提出的算法寄存了视频的原始(可能损坏的)帧,然后联合处理注册帧以产生场景的分解到捕获场景的静态组件的低级背景组件,是捕获的平滑前景组件场景的动态组件,以及隔离损坏的稀疏组件。与现有方法不同,我们的建议算法产生了跨越整个视野的全景低级组件,从部分重叠的场景自动拼接损坏的数据。我们的强大PCA模型的低级部分基于最近发现的最佳低级矩阵估计(OptShrink),其不需要参数调整。我们展示了我们对噪声和异常值损坏的静态和移动摄像机视频的算法的性能。

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