Instagram has become a great venue for amateur and professional photographers alike to showcase their work. It has, in other words, democratized photography. Generally, photographers take thousands of photos in a session, from which they pick a few to showcase their work on Instagram. Photographers trying to build a reputation on Instagram have to strike a balance between maximizing their followers' engagement with their photos, while also maintaining their artistic style. We used transfer learning to adapt Xception, which is a model for object recognition trained on the ImageNet dataset, to the task of engagement prediction and utilized Gram matrices generated from VGG19, another object recognition model trained on ImageNet, for the task of style similarity measurement on photos posted on Instagram. Our models can be trained on individual Instagram accounts to create personalized engagement prediction and style similarity models. Once trained on their accounts, users can have new photos sorted based on predicted engagement and style similarity to their previous work, thus enabling them to upload photos that not only have the potential to maximize engagement from their followers but also maintain their style of photography. We trained and validated our models on several Instagram accounts, showing it to be adept at both tasks, also outperforming several baseline models and human annotators.
CITATION STYLE
Wang, L., Liu, R., & Vosoughi, S. (2020). Salienteye: Maximizing engagement while maintaining artistic style on instagram using deep neural networks. In ICMR 2020 - Proceedings of the 2020 International Conference on Multimedia Retrieval (pp. 331–335). Association for Computing Machinery, Inc. https://doi.org/10.1145/3372278.3390736
Mendeley helps you to discover research relevant for your work.