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A robust metric for the evaluation of visual saliency models

机译:评估视觉显着性模型的可靠指标

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Finding a robust metric for evaluating the visual saliency algorithms has been the subject of research for decades. Motivated by the shuffled AUC metric in this paper, we propose a robust AUC metric that uses the statistical analysis of the fixations data to better judge the goodness of the different saliency algorithms. To calculate the robust AUC metric, we use the first eigenvector obtained from the statistical analysis to define the area from which non-fixations are selected thus mitigating the effect of the center bias. Our results show that the proposed metric results in similar performance when compared with the shuffled AUC metric, but given that the proposed metric is derived from the statistics for the data set, we believe that it is more robust.
机译:几十年来,寻找一种用于评估视觉显着性算法的可靠指标一直是研究的主题。受本文改组的AUC度量的启发,我们提出了一种鲁棒的AUC度量,该度量使用注视数据的统计分析来更好地判断不同显着性算法的优缺点。为了计算鲁棒的AUC度量,我们使用从统计分析中获得的第一个特征向量来定义从中选择不固定的区域,从而减轻中心偏差的影响。我们的结果表明,与经过改组的AUC度量相比,提出的度量具有相似的性能,但是鉴于提出的度量是从数据集的统计信息中得出的,因此我们认为它的鲁棒性更高。

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