{"id":1178,"date":"2012-06-07T18:37:19","date_gmt":"2012-06-07T18:37:19","guid":{"rendered":"http:\/\/eccv2012.unifi.it\/?page_id=1178"},"modified":"2012-06-07T18:37:19","modified_gmt":"2012-06-07T18:37:19","slug":"sparse-and-low-rank-representation-for-computer-vision-theory-algorithms-and-applications","status":"publish","type":"page","link":"http:\/\/eccv2012.unifi.it\/program\/tutorials\/sparse-and-low-rank-representation-for-computer-vision-theory-algorithms-and-applications\/","title":{"rendered":"Sparse and Low-Rank Representation for Computer Vision — Theory, Algorithms, and Applications"},"content":{"rendered":"

Organizers<\/strong>: \u00a0Yi Ma\u00a0(Microsoft Research Asia, China)<\/em>,\u00a0John Wright\u00a0(Columbia University, USA)<\/em>,\u00a0Allen Y. Yang\u00a0(UC Berkeley, USA)<\/em>
\nDuration<\/strong>: half day
\nAbstract<\/strong>: The recent vibrant study of sparse representation and compressive sensing has led to numerous groundbreaking results in signal processing and machine learning. In this tutorial, we will present a series of three talks to provide a high-level overview about its theory, algorithms, and broad applications to computer vision and pattern recognition. We will also point out ready-to-use MATLAB toolboxes available for participants to further acquire hands-on experience on these related topics.<\/p>\n

Outline<\/strong>:<\/p>\n