Skip to main content Start main content

Algorithms and Archives: A Computer Vision Analysis of Photography During China's Cultural Revolution

CHC

3
  • Date

    13 Nov 2024

  • Organiser

    CHC

  • Time

    15:30 - 17:20

  • Venue

    N103, PolyU Campus & Online via ZOOM Map  

Speaker

Dr. Qiuzi Guo

Remarks

The talk will be conducted in English.

poster 1

Summary

Computer vision methods offer new ways of seeing and analyzing photographs. This talk will present a theoretical and methodological approach to analyzing photo archives using computer vision techniques. Through the aggregation of algorithmic annotations across the entire photo archive, the study investigates the potential of computer vision to reveal patterns, narratives, and biases in the visual representation of various aspects of the Cultural Revolution, such as political propaganda, social life, and cultural practices. By combining close viewing with distant viewing, the research aims to shed new light on the role of photography in shaping the visual culture of the Cultural Revolution and contributing to our understanding of how photographs were used as tools for communication and documentation.

Keynote Speaker

Dr. Qiuzi Guo

Dr. Qiuzi Guo

Dr. Qiuzi Guo is a Lecturer at the Hong Kong University of Science and Technology, where she offers courses on Art and Digital Culture. She is involved as a Digital Humanities Specialist with the Digital Humanities Initiative. Her research primarily focuses on the history of Chinese photography, digital humanities, and the digital adaptation of cultural heritage. Previously, Guo was affiliated with the Kunsthistorisches Institut in Florenz – Max-Planck-Institut as a Postdoctoral Fellow. She holds a Ph.D. in East Asian Art History from Heidelberg University.

Your browser is not the latest version. If you continue to browse our website, Some pages may not function properly.

You are recommended to upgrade to a newer version or switch to a different browser. A list of the web browsers that we support can be found here