articleJun 1, 2010Closed access

Deconvolutional networks

Courant Institute of Mathematical Sciences · New York University

Indexed incrossref

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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Authors

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Topics & keywords

Keywords
  • Computer science
  • Artificial intelligence
  • Feature (linguistics)
  • Enhanced Data Rates for GSM Evolution
  • Representation (politics)
  • Hierarchy
  • Pattern recognition (psychology)
  • Constraint (computer-aided design)
UN Sustainable Development Goals
  • Sustainable cities and communities
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