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Progressive Feature Polishing Network for Salient Object Detection

机译:用于显著目标检测的渐进式特征抛光网络

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Feature matters for salient object detection. Existing methods mainly focus on designing a sophisticated structure to incorporate multi-level features and filter out cluttered features. We present Progressive Feature Polishing Network (PFPN), a simple yet effective framework to progressively polish the multi-level features to be more accurate and representative. By employing multiple Feature Polishing Modules (FPMs) in a recurrent manner, our approach is able to detect salient objects with fine details without any post-processing. A FPM parallelly updates the features of each level by directly incorporating all higher level context information. Moreover, it can keep the dimensions and hierarchical structures of the feature maps, which makes it flexible to be integrated with any CNN-based models. Empirical experiments show that our results are monotonically getting better with increasing number of FPMs. Without bells and whistles, PFPN outperforms the state-of-the-art methods significantly on five benchmark datasets under various evaluation metrics. Our code is available at: https://github.com/chenquan-cq/PFPN.
机译:特征对显著目标检测很重要。现有的方法主要集中在设计复杂的结构,以结合多层次的特征和过滤掉杂乱的特征。我们提出了渐进式特征抛光网络(PFPN),这是一个简单而有效的框架,可以逐步抛光多层次特征,使其更准确、更具代表性。通过反复使用多个特征抛光模块(FPM),我们的方法能够在不进行任何后处理的情况下检测出细节清晰的突出物体。FPM通过直接合并所有更高级别的上下文信息,并行地更新每个级别的特性。此外,它可以保持特征图的维度和层次结构,这使得它可以灵活地与任何基于CNN的模型集成。实证实验表明,随着FPM数量的增加,我们的结果单调地变得更好。在各种评估指标下,在五个基准数据集上,PFPN的性能显著优于最先进的方法。我们的代码可从以下网址获取:https://github.com/chenquan-cq/PFPN.

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