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Value Iteration Networks on Multiple Levels of Abstraction

19

Citations

21

References

2019

Year

Abstract

Learning-based methods are promising to plan robot motion without performing extensive search, which is needed by many non-learning approaches. Recently, Value Iteration Networks (VINs) received much interest since-in contrast to standard CNN-based architectures-they learn goal-directed behaviors which generalize well to unseen domains. However, VINs are restricted to small and low-dimensional domains, limiting their applicability to real-world planning problems.

References

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