1 research outputs found
Finite State Machines for Semantic Scene Parsing and Segmentation
We introduce in this work a novel stochastic inference process, for scene
annotation and object class segmentation, based on finite state machines
(FSMs). The design principle of our framework is generative and based on
building, for a given scene, finite state machines that encode annotation
lattices, and inference consists in finding and scoring the best configurations
in these lattices. Different novel operations are defined using our FSM
framework including reordering, segmentation, visual transduction, and label
dependency modeling. All these operations are combined together in order to
achieve annotation as well as object class segmentation