An overview of proposed map Transformer module. The input semantic map... | Download Scientific Diagram
![A hybrid inductive learning-based and deductive reasoning-based 3-D path planning method in complex environments | Autonomous Robots A hybrid inductive learning-based and deductive reasoning-based 3-D path planning method in complex environments | Autonomous Robots](https://media.springernature.com/lw685/springer-static/image/art%3A10.1007%2Fs10514-022-10042-z/MediaObjects/10514_2022_10042_Fig3_HTML.png)
A hybrid inductive learning-based and deductive reasoning-based 3-D path planning method in complex environments | Autonomous Robots
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Model‐Based Programming of Fault‐Aware Systems - Williams - 2003 - AI Magazine - Wiley Online Library
![Formal verification of obstacle avoidance and navigation of ground robots - Stefan Mitsch, Khalil Ghorbal, David Vogelbacher, André Platzer, 2017 Formal verification of obstacle avoidance and navigation of ground robots - Stefan Mitsch, Khalil Ghorbal, David Vogelbacher, André Platzer, 2017](https://journals.sagepub.com/cms/10.1177/0278364917733549/asset/images/large/10.1177_0278364917733549-fig3.jpeg)
Formal verification of obstacle avoidance and navigation of ground robots - Stefan Mitsch, Khalil Ghorbal, David Vogelbacher, André Platzer, 2017
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A hybrid inductive learning-based and deductive reasoning-based 3-D path planning method in complex environments | Autonomous Robots
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Robotics | Free Full-Text | I Let Go Now! Towards a Voice-User Interface for Handovers between Robots and Users with Full and Impaired Sight
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A hybrid inductive learning-based and deductive reasoning-based 3-D path planning method in complex environments | Autonomous Robots
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Knowledge-integrated machine learning for materials: lessons from gameplaying and robotics | Nature Reviews Materials
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RDDRL: a recurrent deduction deep reinforcement learning model for multimodal vision-robot navigation | Applied Intelligence
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A hybrid inductive learning-based and deductive reasoning-based 3-D path planning method in complex environments | Autonomous Robots
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Robotics | Free Full-Text | Towards an Explanation Generation System for Robots: Analysis and Recommendations
We show an overall diagram of our proposed approach, MaAST. Given RGB... | Download Scientific Diagram
![Application of an adapted FMEA framework for robot-inclusivity of built environments | Scientific Reports Application of an adapted FMEA framework for robot-inclusivity of built environments | Scientific Reports](https://media.springernature.com/m685/springer-static/image/art%3A10.1038%2Fs41598-022-06902-4/MediaObjects/41598_2022_6902_Fig4_HTML.png)
Application of an adapted FMEA framework for robot-inclusivity of built environments | Scientific Reports
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