Boosting Robustness of Image Matting with Context Assembling and Strong Data Augmentation

01/18/2022
by   Yutong Dai, et al.
0

Deep image matting methods have achieved increasingly better results on benchmarks (e.g., Composition-1k/alphamatting.com). However, the robustness, including robustness to trimaps and generalization to images from different domains, is still under-explored. Although some works propose to either refine the trimaps or adapt the algorithms to real-world images via extra data augmentation, none of them has taken both into consideration, not to mention the significant performance deterioration on benchmarks while using those data augmentation. To fill this gap, we propose an image matting method which achieves higher robustness (RMat) via multilevel context assembling and strong data augmentation targeting matting. Specifically, we first build a strong matting framework by modeling ample global information with transformer blocks in the encoder, and focusing on details in combination with convolution layers as well as a low-level feature assembling attention block in the decoder. Then, based on this strong baseline, we analyze current data augmentation and explore simple but effective strong data augmentation to boost the baseline model and contribute a more generalizable matting method. Compared with previous methods, the proposed method not only achieves state-of-the-art results on the Composition-1k benchmark (11 with smaller model size, but also shows more robust generalization results on other benchmarks, on real-world images, and also on varying coarse-to-fine trimaps with our extensive experiments.

READ FULL TEXT

page 1

page 3

page 13

page 14

page 15

page 16

page 17

page 18

research
12/08/2022

MixBoost: Improving the Robustness of Deep Neural Networks by Boosting Data Augmentation

As more and more artificial intelligence (AI) technologies move from the...
research
03/09/2021

Thumbnail: A Novel Data Augmentation for Convolutional Neural Network

In this paper, we propose a new data augmentation strategy named Thumbna...
research
08/13/2021

FlipDA: Effective and Robust Data Augmentation for Few-Shot Learning

Most previous methods for text data augmentation are limited to simple t...
research
06/05/2022

AugLoss: A Learning Methodology for Real-World Dataset Corruption

Deep Learning (DL) models achieve great successes in many domains. Howev...
research
04/11/2018

Attention Cropping: A Novel Data Augmentation Method for Real-world Plant Species Identification

This paper investigates the issue of realistic plant species identificat...
research
03/03/2023

Unproportional mosaicing

Data shift is a gap between data distribution used for training and data...
research
03/18/2021

TrivialAugment: Tuning-free Yet State-of-the-Art Data Augmentation

Automatic augmentation methods have recently become a crucial pillar for...

Please sign up or login with your details

Forgot password? Click here to reset