CornerFormer: Boosting Corner Representation for Fine-Grained Structured Reconstruction

04/14/2023
by   Hongbo Tian, et al.
0

Structured reconstruction is a non-trivial dense prediction problem, which extracts structural information (, building corners and edges) from a raster image, then reconstructs it to a 2D planar graph accordingly. Compared with common segmentation or detection problems, it significantly relays on the capability that leveraging holistic geometric information for structural reasoning. Current transformer-based approaches tackle this challenging problem in a two-stage manner, which detect corners in the first model and classify the proposed edges (corner-pairs) in the second model. However, they separate two-stage into different models and only share the backbone encoder. Unlike the existing modeling strategies, we present an enhanced corner representation method: 1) It fuses knowledge between the corner detection and edge prediction by sharing feature in different granularity; 2) Corner candidates are proposed in four heatmap channels w.r.t its direction. Both qualitative and quantitative evaluations demonstrate that our proposed method can better reconstruct fine-grained structures, such as adjacent corners and tiny edges. Consequently, it outperforms the state-of-the-art model by +1.9%@F-1 on Corner and +3.0%@F-1 on Edge.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset