On the Distribution of Salient Objects in Web Images and its Influence on Salient Object Detection
Boris Schauerte, Rainer Stiefelhagen

TL;DR
This paper investigates the influence of photographer's center bias on salient object detection, demonstrating that integrating a Gaussian center bias improves detection performance and helps understand the effectiveness of existing models.
Contribution
The study empirically shows the strong correlation between salient object centroids and Gaussian models, integrating this bias into detection algorithms and introducing a debiased method.
Findings
Gaussian center bias correlates strongly with salient object centroids.
Incorporating Gaussian bias improves detection metrics.
Debiasing reduces the influence of photographer's bias in detection algorithms.
Abstract
It has become apparent that a Gaussian center bias can serve as an important prior for visual saliency detection, which has been demonstrated for predicting human eye fixations and salient object detection. Tseng et al. have shown that the photographer's tendency to place interesting objects in the center is a likely cause for the center bias of eye fixations. We investigate the influence of the photographer's center bias on salient object detection, extending our previous work. We show that the centroid locations of salient objects in photographs of Achanta and Liu's data set in fact correlate strongly with a Gaussian model. This is an important insight, because it provides an empirical motivation and justification for the integration of such a center bias in salient object detection algorithms and helps to understand why Gaussian models are so effective. To assess the influence of the…
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