Topology-Aware Skeleton Detection via Lighthouse-Guided Structured Inference
Daoyong Fu, Xiang Zhang, Zhaohuan Zhan, Fan Yang, Ke Yang

TL;DR
This paper introduces Lighthouse-Skel, a topology-aware skeleton detection method that enhances structural continuity and accuracy in natural images by using lighthouse-guided structured inference.
Contribution
It proposes a dual-branch framework for joint skeleton confidence and structural anchor learning, and a lighthouse-guided topology completion strategy for improved skeleton continuity.
Findings
Achieves competitive detection accuracy on four datasets.
Significantly improves skeleton connectivity and structural integrity.
Effectively reconnects discontinuous skeleton segments.
Abstract
In natural images, object skeletons are used to represent geometric shapes. However, even slight variations in pose or movement can cause noticeable changes in skeleton structure, increasing the difficulty of detecting the skeleton and often resulting in discontinuous skeletons. Existing methods primarily focus on point-level skeleton point detection and overlook the importance of structural continuity in recovering complete skeletons. To address this issue, we propose Lighthouse-Skel, a topology-aware skeleton detection method via lighthouse-guided structured inference. Specifically, we introduce a dual-branch collaborative detection framework that jointly learns skeleton confidence field and structural anchors, including endpoints and junction points. The spatial distributions learned by the point branch guide the network to focus on topologically vulnerable regions, which improves…
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