Global and Local Attention-Based Free-Form Image Inpainting

Sensors 2020  ·  S. M. Nadim Uddin, Yong Ju Jung ·

Deep-learning-based image inpainting methods have shown significant promise in both rectangular and irregular holes. However, the inpainting of irregular holes presents numerous challenges owing to uncertainties in their shapes and locations. When depending solely on convolutional neural network (CNN) or adversarial supervision, plausible inpainting results cannot be guaranteed because irregular holes need attention-based guidance for retrieving information for content generation. In this paper, we propose two new attention mechanisms, namely a mask pruning-based global attention module and a global and local attention module to obtain global dependency information and the local similarity information among the features for refined results. The proposed method is evaluated using state-of-the-art methods, and the experimental results show that our method outperforms the existing methods in both quantitative and qualitative measures.

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Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Image Inpainting Places365 GGLA L1 error 1.20 # 1

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