Background subtraction for moving cameras based on trajectory-controlled segmentation and label inference

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Abstract

We propose a background subtraction method for moving cameras based on trajectory classification, image segmentation and label inference. In the trajectory classification process, PCA-based outlier detection strategy is used to remove the outliers in the foreground trajectories. Combining optical flow trajectory with watershed algorithm, we propose a trajectory-controlled watershed segmentation algorithm which effectively improves the edge-preserving performance and prevents the over-smooth problem. Finally, label inference based on Markov Random field is conducted for labeling the unlabeled pixels. Experimental results on the motionseg database demonstrate the promising performance of the proposed approach compared with other competing methods.

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Yin, X., Wang, B., Li, W., Liu, Y., & Zhang, M. (2015). Background subtraction for moving cameras based on trajectory-controlled segmentation and label inference. KSII Transactions on Internet and Information Systems, 9(10), 4092–4107. https://doi.org/10.3837/tiis.2015.10.018

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