Enabling New Interactions with a Library's Digital Collections: Automatic Gender Recognition in Historical Postcards via Deep Learning
Author
Schuerkamp, Ryan
Metadata
Show full item recordAbstract
The Walter Havighurst Special Collections from University Archives & Preservation at Miami
University’s King Library has a growing collection of over 600,000 historical postcards, with
approximately 30,000 digitized, primarily from the Midwest during 1890-1919. This collection
supports various lines of inquiry from users, such as analyzing the evolution of gender portrayal
in popular media in the United States. However, manually separating the collection into
postcards of males and females would take thousands of hours, which prevents the library from
supporting sociological analyses at scale. Using an open postcard dataset, we trained deep
neural networks to automatically detect people and classify them as male or female. We showed
that this approach can accurately detect and classify females and confidently detect and label
males for the library's collection of historical postcards. By employing deep neural networks, the
library can enhance its metadata within hours and support new sophisticated research inquiries
at scale.