Sparse coding and Gaussian modeling of coefficients average for background subtraction

Ciprian David, V. Gui
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引用次数: 8

Abstract

A sparse coding based approach for background subtraction is proposed in this paper. The background model is composed from a K-SVD dictionary and a set of mean coefficients associated to each image location. Due to the use of sparse coding, our approach has a regional character. The recovered value of a pixel is obtained by reconstructing the surrounding image patch. In order to avoid problems introduced by difficult situations like dynamic backgrounds, an additional Gaussian model on the average of the coefficients set is used. A foreground confidence image results from this modeling. Two threshold will output the final background-foreground binary map. A first threshold on the confidence image selects possible foreground candidates. For these candidates we consider the reconstruction error, represented by the absolute difference between the reconstructed frame and the estimated background. A second threshold on these candidates offers the final discrimination. Our approach is tested against state-of-the-art methods. It is proved to perform better both in terms of visual comparison and quantitative measures.
稀疏编码和高斯平均系数建模的背景减法
提出了一种基于稀疏编码的背景减法方法。背景模型由K-SVD字典和与每个图像位置相关的一组平均系数组成。由于使用了稀疏编码,我们的方法具有地域性。通过对周围图像patch进行重构,得到像素的恢复值。为了避免动态背景等困难情况带来的问题,在系数集的平均值上附加了一个高斯模型。通过这种建模得到前景置信度图像。两个阈值将输出最终的背景-前景二值图。置信度图像上的第一个阈值选择可能的前景候选者。对于这些候选图像,我们考虑重构误差,即重构帧与估计背景之间的绝对差值。对这些候选人的第二个门槛是最后的区别。我们的方法经过了最先进方法的检验。结果表明,该方法在视觉比较和定量测量方面都有较好的效果。
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