Intrinsic Image Popularity Assessment
Keyan Ding, Kede Ma, Shiqi Wang
Code Available — Be the first to reproduce this paper.
ReproduceCode
- github.com/dingkeyan93/intrinsic-image-popularityOfficialIn paperpytorch★ 0
Abstract
The goal of research in automatic image popularity assessment (IPA) is to develop computational models that can accurately predict the potential of a social image to go viral on the Internet. Here, we aim to single out the contribution of visual content to image popularity, i.e., intrinsic image popularity. Specifically, we first describe a probabilistic method to generate massive popularity-discriminable image pairs, based on which the first large-scale image database for intrinsic IPA (I^2PA) is established. We then develop computational models for I^2PA based on deep neural networks, optimizing for ranking consistency with millions of popularity-discriminable image pairs. Experiments on Instagram and other social platforms demonstrate that the optimized model performs favorably against existing methods, exhibits reasonable generalizability on different databases, and even surpasses human-level performance on Instagram. In addition, we conduct a psychophysical experiment to analyze various aspects of human behavior in I^2PA.