Abstract

We study the task of interactive semantic labeling of a segmentation hierarchy. To this end we propose a framework interleaving two components: an automatic labeling step, based on a Conditional Random Field whose dependencies are defined by the inclusion tree of the segmentation hierarchy, and an interaction step that integrates incremental input from a human user. Evaluated on two distinct datasets, the proposed interactive approach efficiently integrates human interventions and illustrates the advantages of structured prediction in an interactive framework

Reference

Zankl, G., Haxhimusa, Y., & Ion, A. (2012). Interactive Labeling of Image Segmentation Hierarchies. In Lecture Notes in Computer Science (pp. 11–20). Springer. https://doi.org/10.1007/978-3-642-32717-9_2