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A pooling-based feature pyramid network for salient object detection

机译:基于汇集的特征金字塔网络,用于突出对象检测

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How to effectively utilize and fuse deep features has become a critical point for salient object detection. Most existing methods usually adopt the convolutional features based on U-shape structures and fuse multi-scale convolutional features without fully considering the different characteristics between high-level features and low-level features. Furthermore, existing salient object detection methods rarely consider the role of pooling in convolutional neural networks. Moreover, there is still much room to improve the detection performance for ob-jects in complex scenes. To address the problems mentioned above, we propose a pooling-based feature pyramid (PFP) network to boost salient object detection performance in this paper. First, we design two U-shaped feature pyramid modules to capture rich semantic information from high-level features and to obtain clear saliency boundaries from low-level features respectively. Second, a pyramid pooling refinement module is designed to utilize the pooling to capture more semantic information. Third, a universal channel-wise attention (UCA) mod-ule is designed to select effective high-level features of multi-scale and multi-receptive -field for rich semantic in-formation, even in complex scenes. Finally, we fuse the selected high-level features and low-level features together, followed by an edge preservation loss to obtain accurate boundary location. Extensive experiments are conducted on five datasets and the experimental results indicate that our proposed method has the ability to get better salient object detection performance compared to the state-of-the-art methods.(c) 2021 Elsevier B.V. All rights reserved.
机译:如何有效利用和融合深度特征已成为突出物体检测的关键点。大多数现有方法通常根据U形结构和熔丝多尺度卷积功能采用卷积特征,而无需完全考虑高级功能和低电平特征之间的不同特性。此外,现有的突出物体检测方法很少考虑汇集在卷积神经网络中的作用。此外,还有很多空间可以在复杂的场景中提高对Ob-jects的检测性能。为了解决上述问题,我们提出了一种基于汇集的特征金字塔(PFP)网络,以提高本文的突出物体检测性能。首先,我们设计两个U形特征金字塔模块,可以从高级功能捕获丰富的语义信息,并分别从低级功能获得明显的显着范围。其次,金字塔汇集精炼模块旨在利用池来捕获更多语义信息。第三,旨在关注(UCA)Mod-ule的旨在为丰富的语义形式选择多尺度和多接收 - 地区的有效高级特征,即使在复杂的场景中也是如此。最后,我们将所选择的高级功能和低级功能融合在一起,然后是边缘保存丢失,以获得准确的边界位置。广泛的实验在五个数据集中进行,实验结果表明,与最先进的方法相比,我们的提出方法具有更好的突出物体检测性能的能力。(c)2021 Elsevier B.v.保留所有权利。

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