| Literature DB >> 24904121 |
Chen-Ping Yu1, Dimitris Samaras1, Gregory J Zelinsky2.
Abstract
We introduce the proto-object model of visual clutter perception. This unsupervised model segments an image into superpixels, then merges neighboring superpixels that share a common color cluster to obtain proto-objects-defined here as spatially extended regions of coherent features. Clutter is estimated by simply counting the number of proto-objects. We tested this model using 90 images of realistic scenes that were ranked by observers from least to most cluttered. Comparing this behaviorally obtained ranking to a ranking based on the model clutter estimates, we found a significant correlation between the two (Spearman's ρ = 0.814, p < 0.001). We also found that the proto-object model was highly robust to changes in its parameters and was generalizable to unseen images. We compared the proto-object model to six other models of clutter perception and demonstrated that it outperformed each, in some cases dramatically. Importantly, we also showed that the proto-object model was a better predictor of clutter perception than an actual count of the number of objects in the scenes, suggesting that the set size of a scene may be better described by proto-objects than objects. We conclude that the success of the proto-object model is due in part to its use of an intermediate level of visual representation-one between features and objects-and that this is evidence for the potential importance of a proto-object representation in many common visual percepts and tasks.Entities:
Keywords: color clustering; image segmentation; midlevel visual representation; proto-objects; superpixel merging; visual clutter
Mesh:
Year: 2014 PMID: 24904121 PMCID: PMC4528410 DOI: 10.1167/14.7.4
Source DB: PubMed Journal: J Vis ISSN: 1534-7362 Impact factor: 2.240