Abstract

In recent years 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 center bias on salient object detection, we integrate an explicit Gaussian center bias model into two state-of-the-art salient object detection algorithms. This way, first, we quantify the influence of the Gaussian center bias on pixel- and segment-based salient object detection. Second, we improve the performance in terms of F 1 score, F β score, area under the recall-precision curve, area under the receiver operating characteristic curve, and hit-rate on the well-known data set by Achanta and Liu. Third, by debiasing Cheng et al.’s region contrast model, we exemplarily demonstrate that implicit center biases are partially responsible for the outstanding performance of state-of-the-art algorithms. Last but not least, we introduce a non-biased salient object detection method, which is of interest for applications in which the image data is not likely to have a photographer’s center bias (e.g., image data of surveillance cameras or autonomous robots).

Highlights

  • Among other influences such as task-specific factors, human attention is attracted to salient stimuli

  • By modifying Cheng et al.’s region contrast model [14], first, we obtained a non-biased salient object detection algorithm that is based on region contrast and, second, we exemplarily demonstrate that implicit center biases can already be found in well-performing, state-of-the-art salient object detection algorithms and substantially influence the performance

  • The presented results are the results that we achieve with the center bias weight that results in the highest F1 score

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Summary

Introduction

Among other influences such as task-specific factors, human attention is attracted to salient stimuli. We go beyond following the rule of third and show that the distribution of the objects’ centroids correlates strongly positively with a 2-dimensional Gaussian distribution This means nothing less than that we provide a strong empirical justification for integrating Gaussian center bias models into salient object detection algorithms. Please feel free to check the supplemental material for additional information such as, e.g., further evaluation results

Related Work
Center Bias Model
The Center
The Angles are Distributed Uniformly
The Radii follow a Half-Gaussian Distribution
Quantifying the Influence on Salient Object Detection
Center Biased Saliency Models
Evaluation Procedure
Quantitative Evaluation Results and Discussion
Method
Conclusion
Full Text
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