Single Image Reflection Removal Exploiting Misaligned Training Data and Network Enhancements

Removing undesirable reflections from a single image captured through a glass window is of practical importance to visual computing systems. Although state-of-the-art methods can obtain decent results in certain situations, performance declines significantly when tackling more general real-world cases. These failures stem from the intrinsic difficulty of single image reflection removal -- the fundamental ill-posedness of the problem, and the insufficiency of densely-labeled training data needed for resolving this ambiguity within learning-based neural network pipelines. In this paper, we address these issues by exploiting targeted network enhancements and the novel use of misaligned data. For the former, we augment a baseline network architecture by embedding context encoding modules that are capable of leveraging high-level contextual clues to reduce indeterminacy within areas containing strong reflections. For the latter, we introduce an alignment-invariant loss function that facilitates exploiting misaligned real-world training data that is much easier to collect. Experimental results collectively show that our method outperforms the state-of-the-art with aligned data, and that significant improvements are possible when using additional misaligned data.

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Datasets


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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Reflection Removal Real20 ERRNet PSNR 22.89 # 4
SSIM 0.803 # 4
Reflection Removal SIR^2(Objects) ERRNet PSNR 24.87 # 2
SSIM 0.896 # 2
Reflection Removal SIR^2(Postcard) ERRNet PSNR 22.04 # 4
SSIM 0.876 # 3
Reflection Removal SIR^2(Wild) ERRNet PSNR 24.25 # 4
SSIM 0.853 # 4

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