About this Research Topic
This Research Topic aims to address these challenges by exploring innovative applications of neural network models in autonomous robotics. It seeks to highlight research that expands neural networks' role in enhancing robotic autonomy, decision-making, and adaptability. Contributions may include studies on energy-efficient neural network models for robotic systems, strategies to enhance robotic resilience in dynamic, real-world settings, or novel neural network architectures designed specifically for robotics, capable of processing diverse, multi-modal sensory inputs. The goal is to advance the field by presenting varied perspectives and methodologies that tackle current limitations and establish new benchmarks for future research.
This Research Topic will cover a range of topics within Neural Network Models in Autonomous Robotics, including but not limited to:
• Advanced learning algorithms for autonomous robotic systems.
• Energy efficiency and sustainability in neural network design for robotics.
• Neural network robustness for robots in unstructured environments.
• Innovative neural network architectures for autonomous robotics.
• Integration of multi-modal sensory data in robotic systems.
• Enhancing human-robot collaboration through neural network advancements.
Additionally, we welcome research exploring the integration of quantum neural network models in autonomous robotics, leveraging the principles of quantum mechanics to enhance robotic intelligence and efficiency.
Keywords: Neural Network Models, Autonomous Robotics, Energy Efficiency, Multi-modal Sensory Data, Human-Robot Collaboration
Important Note: All contributions to this Research Topic must be within the scope of the section and journal to which they are submitted, as defined in their mission statements. Frontiers reserves the right to guide an out-of-scope manuscript to a more suitable section or journal at any stage of peer review.