Schauerte Boris, Stiefelhagen Rainer
Institute for Anthropomatics and Robotics, Karlsruhe Institute of Technology, Karlsruhe, Baden-Württemberg, Germany.
PLoS One. 2015 Jul 22;10(7):e0130316. doi: 10.1371/journal.pone.0130316. eCollection 2015.
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 F1 score, Fβ 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).
近年来,高斯中心偏差已成为视觉显著性检测的重要先验,这已在预测人眼注视和显著目标检测方面得到证实。曾等人表明,摄影师将有趣物体置于中心的倾向可能是人眼注视中心偏差的原因。我们扩展了之前的工作,研究摄影师的中心偏差对显著目标检测的影响。我们表明,阿昌塔和刘的数据集中照片中显著物体的质心位置实际上与高斯模型高度相关。这是一个重要的见解,因为它为在显著目标检测算法中整合这种中心偏差提供了实证动机和依据,并有助于理解高斯模型为何如此有效。为了评估中心偏差对显著目标检测的影响,我们将一个明确的高斯中心偏差模型集成到两种先进的显著目标检测算法中。通过这种方式,首先,我们量化高斯中心偏差对基于像素和基于片段的显著目标检测的影响。其次,我们在阿昌塔和刘的著名数据集上,在F1分数、Fβ分数、召回率-精确率曲线下面积、接收者操作特征曲线下面积和命中率方面提高了性能。第三,通过对程等人的区域对比度模型进行去偏,我们示例性地证明了隐式中心偏差部分导致了先进算法的出色性能。最后但同样重要的是,我们引入了一种无偏差的显著目标检测方法,这对于图像数据不太可能存在摄影师中心偏差的应用(例如监控摄像头或自主机器人的图像数据)很有意义。