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Fixation Prediction based on Scene Contours

机译:基于场景轮廓的注视预测

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Previous works suggest that scene contours play important roles in guiding visual attention. In this study, a computational model is proposed to improve the performance in visual saliency prediction by integrating the low- and mid-level visual cues and evaluate the contribution of scene contours in guiding visual attention. Firstly, we define three kinds of Gestalt principles based on mid-level cues, including contour density, closure, and symmetry to characterize the potential salient regions. In addition, we employ the classical bottom-up methods to generate low-level saliency maps. Finally, the proposed method combines the low-level cues from natural images and the mid-level cues from the corresponding contours to improve the fixation prediction. Experimental results show that the contour-based midlevel cues can remarkably improve the performance of the bottomup models in fixation prediction.
机译:先前的工作表明,场景轮廓在引导视觉注意力方面起着重要的作用。在这项研究中,提出了一种计算模型,通过整合低级和中级视觉提示并评估场景轮廓在引导视觉注意力方面的作用来提高视觉显着性预测的性能。首先,我们基于中层线索定义了三种格式塔原理,包括轮廓密度,闭合性和对称性以表征潜在的显着区域。此外,我们采用经典的自下而上方法来生成低级显着性图。最后,提出的方法结合了自然图像的低层线索和相应轮廓的中层线索,以改善注视预测。实验结果表明,基于轮廓的中层提示可以显着提高自下而上模型在注视预测中的性能。

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