图像抠图的注意引导层次结构聚合

Y. Qiao, Yuhao Liu, Xin Yang, D. Zhou, Mingliang Xu, Qiang Zhang, Xiaopeng Wei
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引用次数: 109

摘要

现有的基于深度学习的抠图算法主要依靠高级语义特征来改善alpha抠图的整体结构。然而,我们认为从cnn中提取的高级语义对alpha感知的贡献是不平等的,我们应该将高级语义信息与低级外观线索协调起来,以改进前景细节。在本文中,我们提出了一个端到端的分层注意抠图网络(HAttMatting),它可以在不需要额外输入的情况下从单个RGB图像中预测出更好的alpha抠图结构。具体来说,我们采用空间和渠道的注意力,以一种新颖的方式整合外观线索和金字塔特征。这种混合注意机制可以从精细的边界和自适应语义中感知alpha mattes。我们还引入了融合结构相似度(SSIM)、均方误差(MSE)和对抗损失的混合损失函数,以指导网络进一步改善整体前景结构。此外,我们构建了一个由59,600张训练图像和1000张测试图像(共646张不同前景alpha mattes)组成的大规模图像抠图数据集,进一步提高了我们的分层结构聚合模型的鲁棒性。大量的实验表明,所提出的HAttMatting可以捕获复杂的前景结构,并以单个RGB图像作为输入实现最先进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attention-Guided Hierarchical Structure Aggregation for Image Matting
Existing deep learning based matting algorithms primarily resort to high-level semantic features to improve the overall structure of alpha mattes. However, we argue that advanced semantics extracted from CNNs contribute unequally for alpha perception and we are supposed to reconcile advanced semantic information with low-level appearance cues to refine the foreground details. In this paper, we propose an end-to-end Hierarchical Attention Matting Network (HAttMatting), which can predict the better structure of alpha mattes from single RGB images without additional input. Specifically, we employ spatial and channel-wise attention to integrate appearance cues and pyramidal features in a novel fashion. This blended attention mechanism can perceive alpha mattes from refined boundaries and adaptive semantics. We also introduce a hybrid loss function fusing Structural SIMilarity (SSIM), Mean Square Error (MSE) and Adversarial loss to guide the network to further improve the overall foreground structure. Besides, we construct a large-scale image matting dataset comprised of 59,600 training images and 1000 test images (total 646 distinct foreground alpha mattes), which can further improve the robustness of our hierarchical structure aggregation model. Extensive experiments demonstrate that the proposed HAttMatting can capture sophisticated foreground structure and achieve state-of-the-art performance with single RGB images as input.
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