Paper
17 September 2013 L1-methods for low-power surveillance
Matthew S. Keegan, Kang-Yu Ni, Shankar Rao
Author Affiliations +
Abstract
In this paper we introduce two novel methods for application of `1-minimization. In the first method, sparse and low-rank decomposition and compressive sensing-based retrieval are combined and applied to a low power surveillance model. The method exploits the ability of sparse and low-rank decompositions to extract significant and stationary features and the ability of compressive sensing approaches to reduce the number of measurements necessary. In the second method, a contiguity prior is added to compressive sensing methods on images and a numerical approach is proposed to solve this novel problem. Results are displayed in which the contiguity constrained method is applied to the low power surveillance model.
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Matthew S. Keegan, Kang-Yu Ni, and Shankar Rao "L1-methods for low-power surveillance", Proc. SPIE 8877, Unconventional Imaging and Wavefront Sensing 2013, 88770D (17 September 2013); https://doi.org/10.1117/12.2024253
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KEYWORDS
Surveillance

Cameras

Video surveillance

Video

Compressed sensing

Data modeling

Convex optimization

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