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Saliency prediction based on object recognition and gaze analysis

机译:基于对象识别和凝视分析的显着性预测

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Predicting the human visual attention in an image is called saliency prediction and is an active research area in the field of neuroscience and computer vision. Early works on saliency prediction was performed by using low-level features. In recent years, convolutional neural networks have been adapted for saliency prediction and achieved the state-of-the-art performance. However, the eye-gaze depends on the personality of each viewer and conventional methods did not take into account such individual properties of the viewer. Therefore, this paper proposes a novel saliency prediction method considering the influence of eye-gaze. Assuming that personality can be expressed as the degree of attention to an object, our proposed method considers the personality by learning which objects are likely to be perceived by each viewer and weighting the universal saliency map with the generated mask based on the object detection results. The experimental results show that the proposed universal saliency map achieves higher accuracy than conventional methods on the public dataset, and the proposed weighted saliency map can reflect the variation of the eye-gaze influences among viewers.
机译:预测图像中的人类视觉注意被称为显着性预测,是神经科学领域的活跃研究区域和计算机视觉。通过使用低级功能进行显着性预测的早期作品。近年来,卷积神经网络已经适用于显着性预测,并实现了最先进的性能。然而,眼睛凝视取决于每个观察者的个性,并且传统方法没有考虑观看者的这种个性化性质。因此,本文提出了一种考虑眼睛凝视影响的新型显着性预测方法。假设人格可以表达为对象的关注程度,我们的提出方法通过学习每个观看者可能被每个观看者感知到的对象并基于对象检测结果来加权普遍显着性图。实验结果表明,该拟议的普遍显着性图可以比公共数据集上的传统方法实现更高的准确性,并且所提出的加权显着性图可以反映观众之间的眼睛凝视影响的变化。

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