Prior-Induced Information Alignment for Image Matting
Yuhao Liu, Jiake Xie, Yu Qiao, Yong Tang and, Xin Yang

TL;DR
This paper introduces PIIAMatting, a novel deep learning network that improves image matting by modeling pixel-wise responses and layer-wise feature correlations, leading to finer detail recovery.
Contribution
The paper proposes a new network with dynamic Gaussian modulation and information alignment modules to enhance detail preservation in image matting.
Findings
Outperforms state-of-the-art methods on multiple datasets.
Effectively models pixel-wise response maps and feature correlations.
Achieves superior qualitative and quantitative results.
Abstract
Image matting is an ill-posed problem that aims to estimate the opacity of foreground pixels in an image. However, most existing deep learning-based methods still suffer from the coarse-grained details. In general, these algorithms are incapable of felicitously distinguishing the degree of exploration between deterministic domains (certain FG and BG pixels) and undetermined domains (uncertain in-between pixels), or inevitably lose information in the continuous sampling process, leading to a sub-optimal result. In this paper, we propose a novel network named Prior-Induced Information Alignment Matting Network (PIIAMatting), which can efficiently model the distinction of pixel-wise response maps and the correlation of layer-wise feature maps. It mainly consists of a Dynamic Gaussian Modulation mechanism (DGM) and an Information Alignment strategy (IA). Specifically, the DGM can…
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