Dirty data
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Dirty data Sammlung Schürmann by

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Published by Ludwig Forum für Internationale Kunst in Aachen .
Written in English



  • Germany,
  • Herzogenrath


  • Schürmann, Wilhelm, 1946- -- Art collections -- Exhibitions.,
  • Schürmann, Gaby -- Art collections -- Exhibitions.,
  • Art, Modern -- 20th century -- Exhibitions.,
  • Art -- Private collections -- Germany -- Herzogenrath -- Exhibitions.

Book details:

Edition Notes

Catalog of an exhibition held at the Ludwig Forum für Internationale Kunst, Aachen, 18th July-16th Aug. 1992.

Statement[Konzeption, Gestaltung und Organisation, Wilhelm Schürmann ; Textautoren, Julia Scher ... [et al.]].
ContributionsSchürmann, Wilhelm, 1946-, Scher, Julia., Ludwig Forum für Internationale Kunst.
LC ClassificationsN6488.5.S38 D57 1992
The Physical Object
Pagination1 v. (unpaged) :
ID Numbers
Open LibraryOL1158001M
LC Control Number94135452

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