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Generalizing Interactive Backpropagating Refinement for Dense Prediction

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As deep neural networks become the state-of-the-art approach in the field of computer vision for dense prediction tasks, many methods have been developed for automatic estimation of the target outputs given the visual inputs. Although the estimation accuracy of the proposed automatic methods continues to improve, interactive refinement is oftentimes necessary for further correction. Recently, feature backpropagating refinement scheme (f-BRS) has been proposed for the task of interactive segmentation, which enables efficient optimization of a small set of auxiliary variables inserted into the pretrained network to produce object segmentation that better aligns with user inputs. However, the proposed auxiliary variables only contain channel-wise scale and bias, limiting the optimization to global refinement only. In this work, in order to generalize backpropagating refinement for a wide range of dense prediction tasks, we introduce a set of G-BRS (Generalized Backpropagating Refinement Scheme) layers that enable both global and localized refinement for the following tasks: interactive segmentation, semantic segmentation, image matting and monocular depth estimation. Experiments on SBD, Cityscapes, Mapillary Vista, Composition-1k and NYU-Depth-V2 show that our method can successfully generalize and significantly improve performance of existing pretrained state-of-the-art models with only a few clicks.

Fanqing Lin, Brian Price, Tony Martinez• 2021

Related benchmarks

TaskDatasetResultRank
Interactive SegmentationSemantic Boundaries Dataset (SBD) (test)--
12
Interactive Depth EstimationNYU Depth V2
AUC96.3
2
Interactive Image MattingComposition-1k
AUC0.0108
2
Interactive Semantic SegmentationSBD
AUC85.9
2
Interactive Semantic SegmentationCityscapes
AUC0.882
2
Interactive Semantic SegmentationMapillary Vista
AUC0.675
2
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