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Determination of optimal top-down gains for specific searching tasks

机译:确定特定搜索任务的最佳自上而下的收益

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Finding optimal top-down feature gains plays a key role in modeling task-driven visual attention mechanisms. Some studies suggest that the ratio of the mean salience of the target to the distractors can be used to determine the weights for the feature maps during the searching process, but this works well only if the salience distribution in the feature map is uniform, which is seldom seen in natural scenes. Here, we derive a new optimal feature gain modulation strategy to maximize the relative salience of the target, in which the top-down weight on a feature map depends on its stimulation intensity ratio (SIR) between the target and the distractors. The stimulation intensity is determined by two factors, i.e., cumulative summation of salience (CSS) and the mean activity coefficient (MAC). Testing on synthetic scenes shows that our model may provide accurate assessment of the contribution of the feature maps in computing the saliency map for a given task.
机译:寻找最佳的自上而下的功能增益在建模任务驱动的视觉注意机制中起着关键作用。一些研究表明,在搜索过程中,可以使用目标与干扰物的平均显着性之比来确定特征图的权重,但这仅在特征图中的显着性分布均匀时才有效。在自然场景中很少见到。在这里,我们推导了一种新的最佳特征增益调制策略,以最大化目标的相对显着性,其中特征图上的自上而下的权重取决于目标与干扰物之间的刺激强度比(SIR)。刺激强度由两个因素确定,即显着性的累积总和(CSS)和平均活动系数(MAC)。在综合场景上进行的测试表明,我们的模型可以为计算给定任务的显着性图提供对特征图的贡献的准确评估。

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