资源论文Dynamic Feature Fusion for Semantic Edge Detection

Dynamic Feature Fusion for Semantic Edge Detection

2019-10-08 | |  39 |   24 |   0

Abstract Features from multiple scales can greatly benefifit the semantic edge detection task if they are well fused. However, the prevalent semantic edge detection methods apply a fifixed weight fusion strategy where images with different semantics are forced to share the same weights, resulting in universal fusion weights for all images and locations regardless of their different semantics or local context. In this work, we propose a novel dynamic feature fusion strategy that assigns different fusion weights for different input images and locations adaptively. This is achieved by a proposed weight learner to infer proper fusion weights over multi-level features for each location of the feature map, conditioned on the specifific input. In this way, the heterogeneity in contributions made by different locations of feature maps and input images can be better considered and thus help produce more accurate and sharper edge predictions. We show that our model with the novel dynamic feature fusion is superior to fifixed weight fusion and also the na¨ıve location-invariant weight fusion methods, via comprehensive experiments on benchmarks Cityscapes and SBD. In particular, our method outperforms all existing well established methods and achieves new state-of-the-art

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