Deconvolutional networks

Matthew D. Zeiler(Courant Institute of Mathematical Sciences), Dilip Krishnan(New York University), Graham W. Taylor(Courant Institute of Mathematical Sciences), Rob Fergus(Courant Institute of Mathematical Sciences)
Unknown
June 1, 2010
Cited by 1,711

Abstract

Building robust low and mid-level image representations, beyond edge primitives, is a long-standing goal in vision. Many existing feature detectors spatially pool edge information which destroys cues such as edge intersections, parallelism and symmetry. We present a learning framework where features that capture these mid-level cues spontaneously emerge from image data. Our approach is based on the convolutional decomposition of images under a spar-sity constraint and is totally unsupervised. By building a hierarchy of such decompositions we can learn rich feature sets that are a robust image representation for both the analysis and synthesis of images.


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