Landmark-Based Approaches For Goal Recognition.
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Goal Recognition Filter using Landmarks;
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Goal Completion Heuristic;
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Landmark Uniqueness Heuristic;
These approaches have been published in ECAI-16, AAAI-17, and AIJ.
- Option (1): Single tar.bz2 file containing domain, problem (initial state), set of goals, observations, correct goal, threshold value.
Parameters needed: <-filter | -goalcompletion | -uniqueness> <tar.bz2 file> <threshold_value>
java -jar goalrecognizer1.2.jar -filter experiments/blocks-test/blocks-test.tar.bz2 0
- Option (2): Separate files, e.g., domain, problem (initial state), set of goals, observations, correct goal, threshold value.
Parameters needed: <-filter | -goalcompletion | -uniqueness> <domain.pddl> <problem.pddl> <goals.dat> <observations.dat> <correct_goal.dat> <threshold_value>
java -jar goalrecognizer1.2.jar -goalcompletion experiments/blocks-test/domain.pddl experiments/blocks-test/template.pddl experiments/blocks-test/hyps.dat experiments/blocks-test/obs.dat experiments/blocks-test/real_hyp.dat 0.1
Our approaches also deal with observations as facts. To use the recognizers in such mode, please use the branch called obsfacts:
At the following link we have some examples of how we use observations as facts:
There is also an executable file called goalrecognizer-obsfacts.jar.
Our goal recognizer uses the following libs (which are included in lib):
- jgrapht-jdk1.6.jar (A free Java Graph Library);
- planning-landmarks2.3.jar (A Landmark Extraction Algorithm based on Ordered Landmarks in Planning);
- planning-utils2.2.jar (PDDL Parser and Planning data structure from JavaFF);