Compressive Sensing for Background Subtraction

TitleCompressive Sensing for Background Subtraction
Publication TypeConference Paper
AuthorsV. Cevher, A. C. Sankaranarayanan, M. F. Duarte, D. Reddy, R. G. Baraniuk, and R. Chellappa
Abstract

Compressive sensing (CS) is an emerging field that provides a framework for image recovery using sub-Nyquist sampling rates. The CS theory shows that a signal can be reconstructed from a small set of random projections, provided that the signal is sparse in some basis, e.g., wavelets. In this paper, we describe a method to directly recover background subtracted images using CS and discuss its applications in some communication constrained multi-camera computer vision problems. We show how to apply the CS theory to recover object silhouettes (binary background subtracted images) when the objects of interest occupy a small portion of the camera view, i.e., when they are sparse in the spatial domain. We cast the background subtraction as a sparse approximation problem and provide different solutions based on convex optimization and total variation. In our method, as opposed to learning the background, we learn and adapt a low dimensional compressed representation of it, which is sufficient to determine spatial innovations; object silhouettes are then estimated directly using the compressive samples without any auxiliary image reconstruction. We also discuss simultaneous appearance recovery of the objects using compressive measurements. In this case, we show that it may be necessary to reconstruct one auxiliary image. To demonstrate the performance of the proposed algorithm, we provide results on data captured using a compressive single-pixel camera. We also illustrate that our approach is suitable for image coding in communication constrained problems by using data captured by multiple conventional cameras to provide 2D tracking and 3D shape reconstruction results with compressive measurements.

Acknowledgements

We would like to thank Kevin Kelly and Ting Sun for collecting and providing experimental data, and Nathan Goodman for providing us with a preprint of [13]. VC, MFD and RGB were supported by the grants NSF CCF-0431150, ONR N00014-07-1-0936,AFOSR FA9550-07-1-0301,AROW911NF-07-1-0502,AROMURI W311NF-07-1-0185, and the Texas Instruments Leadership University Program. AS, DR and RC were partially supported by Task Order 89, Army Research Laboratory Contract DAAD19-01-C-0065monitored by Alion Science and Technology.

Year of Publication2008
MonthOct.
Conference NameProceedings of the European Conference on Computer Vision (ECCV)
Conference LocationMarseille/France
Pagination155-168
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