The Potentials of Google Vision API-based Networks to Study Natively Digital Images

In this article, we present the potentials of Google Vision API-based networks for studying online images, covering three important modalities as part of a critical visual methodology: the content of the image itself, its specific ‘audiencing’ through web references (or image metadata), and the site...

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Bibliographic Details
Main Authors: Janna Joceli Omena, Pilipets Elena, Beatrice Gobbo, Chao Jason
Format: Article
Language:English
Published: Pontificia Universidad Católica de Chile 2021-09-01
Series:Diseña
Subjects:
Online Access:https://ojs.des.uc.cl/index.php/Disena/article/view/27271
Description
Summary:In this article, we present the potentials of Google Vision API-based networks for studying online images, covering three important modalities as part of a critical visual methodology: the content of the image itself, its specific ‘audiencing’ through web references (or image metadata), and the sites of image circulation. First, we conceptually and technically define different networks built upon computer vision features: image-label, image-web entities, and image-domain. Second, we present a research protocol diagram that illustrates how to build networks of images and respective descriptions or sites of circulation. Third, we discuss the potentialities of computer vision networks as a research device, stressing their data-relational (trans)formations and interpretative specifics. Three different case studies will be introduced as examples. In conclusion, we argue that such a visual methodology requires critical technical practices accounting for the multiple layers of technical mediation involved.
ISSN:0718-8447
2452-4298