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A neural network learns when it should not be trusted | MIT News | Massachusetts Institute of Technology
Study urges caution when comparing neural networks to the brain | MIT News | Massachusetts Institute of Technology
Embracing Change: Continual Learning in Deep Neural Networks: Trends in Cognitive Sciences
Potentials and Limitations of Deep Neural Networks for Cognitive Robots
A neurophysiologically interpretable deep neural network predicts complex movement components from brain activity | Scientific Reports
Linking Brain Structure, Activity, and Cognitive Function through Computation | eNeuro
Cognitive Robotics Course
Informing deep neural networks by multiscale principles of neuromodulatory systems - ScienceDirect
Robotics | Free Full-Text | FumeBot: A Deep Convolutional Neural Network Controlled Robot
A typical CNN framework for robotics. Raw sensor information (depth... | Download Scientific Diagram
Sensors | Free Full-Text | Accelerating 3D Convolutional Neural Network with Channel Bottleneck Module for EEG-Based Emotion Recognition
Neural nets learn to program neural nets with with fast weights (1991)
Chemistry-Encoded Convolutional Neural Networks for Predicting Gaseous Adsorption in Porous Materials | The Journal of Physical Chemistry C
Abstract Concept Learning in Cognitive Robots | SpringerLink
PDF) Automated Lip-Reading Robotic System Based on Convolutional Neural Network and Long Short-Term Memory
Real-Time Human Pose Estimation on a Smart Walker using Convolutional Neural Networks | DeepAI
Recent Cognitive Robotics Articles
Frontiers | Internet of Robotic Things Intelligent Connectivity and Platforms
Robotics | Free Full-Text | Deep Learning-Based Object Classification and Position Estimation Pipeline for Potential Use in Robotized Pick-and-Place Operations
Frontiers | Convolutional Neural Network-Based Human Movement Recognition Algorithm in Sports Analysis
Multilevel development of cognitive abilities in an artificial neural network | PNAS