A major archetype of artificial intelligence is developing algorithms facilitating temporal efficiency and accuracy while boosting the generalization performance. Even with the latest developments in machine learning, a key limitation has been the inefficient feature extraction from the initial data, which is essential in performance optimization. Here, we introduce a feature extraction method inspired by energy–entropy relations of sensory cortical networks in the brain. Dubbed the brain-inspired cortex, the algorithm provides convergence to orthogonal features from streaming signals with superior computational efficiency while processing data in a compressed form. We demonstrate the performance of the new algorithm using artificially crea...
Feature extraction is essential for classifying different motor imagery (MI) tasks in a brain-comput...
Pattern recognition and machine learning fields have revolutionized countless industries and applica...
This thesis aims to analyze neural data in an overall effort by the Charles Stark Draper Laboratory...
Abstract—These days, many traditional end-user applications are said to “run fast enough ” on existi...
International audienceBrain imaging provides a wealth of information that computers can explore at a...
Although brain circuits presumably carry out useful perceptual algorithms, few instances of derived ...
Pattern recognition has been studied extensively, and many algorithms have been established. It gene...
International audienceThe use of brain images as markers for diseases or behavioral differences is c...
Our brains enable us to interact with the outside world. Although the question of the underlying mec...
Computational neuroscience provides a way to bridge from the anatomical and neurophysiological prope...
All rights reserved. We review two new approaches for studying cortical representations of sensory s...
The encoding of information in the primate inferior temporal visual cortex, hippocampus, orbitofront...
Electrocorticography (ECoG) records brain activity from the cortical surface. ECoG data analyses has...
Abstract. The fundamental goal of computational neuroscience is to discover anatomical features that...
Mitchell et al. [9] demonstrated that support vector machines (SVM) are effective to classify the co...
Feature extraction is essential for classifying different motor imagery (MI) tasks in a brain-comput...
Pattern recognition and machine learning fields have revolutionized countless industries and applica...
This thesis aims to analyze neural data in an overall effort by the Charles Stark Draper Laboratory...
Abstract—These days, many traditional end-user applications are said to “run fast enough ” on existi...
International audienceBrain imaging provides a wealth of information that computers can explore at a...
Although brain circuits presumably carry out useful perceptual algorithms, few instances of derived ...
Pattern recognition has been studied extensively, and many algorithms have been established. It gene...
International audienceThe use of brain images as markers for diseases or behavioral differences is c...
Our brains enable us to interact with the outside world. Although the question of the underlying mec...
Computational neuroscience provides a way to bridge from the anatomical and neurophysiological prope...
All rights reserved. We review two new approaches for studying cortical representations of sensory s...
The encoding of information in the primate inferior temporal visual cortex, hippocampus, orbitofront...
Electrocorticography (ECoG) records brain activity from the cortical surface. ECoG data analyses has...
Abstract. The fundamental goal of computational neuroscience is to discover anatomical features that...
Mitchell et al. [9] demonstrated that support vector machines (SVM) are effective to classify the co...
Feature extraction is essential for classifying different motor imagery (MI) tasks in a brain-comput...
Pattern recognition and machine learning fields have revolutionized countless industries and applica...
This thesis aims to analyze neural data in an overall effort by the Charles Stark Draper Laboratory...