Identifying Professional Photographers Through Image Quality and Aesthetics in Flickr

Abstract

In our generation, there is an undoubted rise in the use of social media and specifically photo and video sharing platforms. These sites have proved their ability to yield rich data sets through the users’ interaction which can be used to perform a data-driven evaluation of capabilities. Nevertheless, this study reveals the lack of suitable data sets in photo and video sharing platforms and evaluation processes across them. In this way, our first contribution is the creation of one of the largest labelled data sets in Flickr with the multimodal data which has been open sourced as part of this contribution. It incorporates multimodal data, combining information from various sources such as user profiles, photo metadata, and crowdsourced features. Predicated on these data, we explored machine learning models and concluded that it is feasible to properly predict whether a user is a professional photographer or not based on self-reported occupation labels and several feature representations out of the user, photo and crowdsourced sets. We also examined the relationship between the aesthetics and technical quality of a picture and the social activity of that picture. Finally, we depicted which characteristics differentiate professional photographers from non-professionals. As far as we know, the results presented in this work represent an important novelty for identifying expertise in the domain of photography, which researchers from various domains can utilise for related applications.

@article{strukova2023identifying, title = {Identifying professional photographers through image quality and aesthetics in Flickr}, ISSN = {1468-0394}, url = {http://dx.doi.org/10.1111/exsy.13526}, DOI = {10.1111/exsy.13526}, journal = {Expert Systems}, publisher = {Wiley}, author = {Strukova, Sofia and Marco, Rubén Gaspar and Mármol, Félix Gómez and Ruipérez‐Valiente, José A.}, year = {2023}, month = dec }

Sofia Strukova
Sofia Strukova
PhD Student

My research interests include data science, machine learning, computational social science and learning analytics.