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Papers/PP-Matting: High-Accuracy Natural Image Matting

PP-Matting: High-Accuracy Natural Image Matting

Guowei Chen, Yi Liu, Jian Wang, Juncai Peng, Yuying Hao, Lutao Chu, Shiyu Tang, Zewu Wu, Zeyu Chen, Zhiliang Yu, Yuning Du, Qingqing Dang, Xiaoguang Hu, dianhai yu

2022-04-20Vocal Bursts Intensity PredictionImage MattingSemantic Segmentation
PaperPDFCode(official)

Abstract

Natural image matting is a fundamental and challenging computer vision task. It has many applications in image editing and composition. Recently, deep learning-based approaches have achieved great improvements in image matting. However, most of them require a user-supplied trimap as an auxiliary input, which limits the matting applications in the real world. Although some trimap-free approaches have been proposed, the matting quality is still unsatisfactory compared to trimap-based ones. Without the trimap guidance, the matting models suffer from foreground-background ambiguity easily, and also generate blurry details in the transition area. In this work, we propose PP-Matting, a trimap-free architecture that can achieve high-accuracy natural image matting. Our method applies a high-resolution detail branch (HRDB) that extracts fine-grained details of the foreground with keeping feature resolution unchanged. Also, we propose a semantic context branch (SCB) that adopts a semantic segmentation subtask. It prevents the detail prediction from local ambiguity caused by semantic context missing. In addition, we conduct extensive experiments on two well-known benchmarks: Composition-1k and Distinctions-646. The results demonstrate the superiority of PP-Matting over previous methods. Furthermore, we provide a qualitative evaluation of our method on human matting which shows its outstanding performance in the practical application. The code and pre-trained models will be available at PaddleSeg: https://github.com/PaddlePaddle/PaddleSeg.

Results

TaskDatasetMetricValueModel
Image MattingDistinctions-646Conn40.56PP-Matting
Image MattingDistinctions-646Grad43.91PP-Matting
Image MattingDistinctions-646MSE0.009PP-Matting
Image MattingDistinctions-646SAD40.69PP-Matting
Image MattingComposition-1KConn45.4PP-Matting
Image MattingComposition-1KGrad22.69PP-Matting
Image MattingComposition-1KMSE5PP-Matting
Image MattingComposition-1KSAD46.22PP-Matting

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