Integrating Action-aware Features for Saliency Prediction via Weakly Supervised Learning

Jiaqi Feng, Shuai Li, Yunfeng Sui, Lingtong Meng, Ce Zhu
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Abstract

Deep learning has been widely studied for saliency prediction. Despite the great performance improvement introduced by deep saliency models, some high-level concepts that contribute to the saliency prediction, such as text, objects of gaze and action, locations of motion, and expected locations of people, have not been explicitly considered. This paper investigates the objects of action and motion, and proposes to use action-aware features to compensate deep saliency models. The action-aware features are generated via weakly supervised learning using an extra action classification network trained with existing image based action datasets. Then a feature fusion module is developed to integrate the action-aware features for saliency prediction. Experiments show that the proposed saliency model with the action-aware features achieves better performance on three public benchmark datasets. More experiments are further conducted to analyze the effectiveness of the action-aware features in saliency prediction. To the best of our knowledge, this study is the first attempt on explicitly integrating objects of action and motion concept into deep saliency models.
基于弱监督学习集成动作感知特征的显著性预测
深度学习在显著性预测方面得到了广泛的研究。尽管深度显著性模型带来了巨大的性能改进,但一些有助于显著性预测的高级概念,如文本、凝视和动作的对象、运动的位置和人的预期位置,尚未被明确考虑。本文研究了动作和运动的对象,并提出了使用动作感知特征来补偿深度显著性模型。动作感知特征是通过弱监督学习生成的,使用基于现有图像的动作数据集训练的额外动作分类网络。然后开发了特征融合模块,将动作感知特征集成到显著性预测中。实验表明,基于动作感知特征的显著性模型在三个公共基准数据集上取得了较好的性能。进一步的实验分析了动作感知特征在显著性预测中的有效性。据我们所知,这项研究是第一次尝试将动作对象和运动概念明确地整合到深度显著性模型中。
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