Search results for "neural decoding"

showing 4 items of 4 documents

Time-resolved classification of dog brain signals reveals early processing of faces, species and emotion

2020

Dogs process faces and emotional expressions much like humans, but the time windows important for face processing in dogs are largely unknown. By combining our non-invasive electroencephalography (EEG) protocol on dogs with machine-learning algorithms, we show category-specific dog brain responses to pictures of human and dog facial expressions, objects, and phase-scrambled faces. We trained a support vector machine classifier with spatiotemporal EEG data to discriminate between responses to pairs of images. The classification accuracy was highest for humans or dogs vs. scrambled images, with most informative time intervals of 100–140 ms and 240–280 ms. We also detected a response sensitive…

MaleEmotionslcsh:MedicinehavaitseminenperceptionFAMILIAR413 Veterinary scienceBehavioural methodsMachine Learningsocial behaviourEXPRESSIONSAnimal physiologyEVOKED-POTENTIALSEEGNeural decodingvertaileva psykologialcsh:Sciencesocial evolutionVisual CortexSocial evolutionelectroencephalography – EEGElectroencephalographyAnimal behaviourPublisher Correctionneural decodinganimal physiologySocial behaviourFemalesosiaalinen käyttäytyminenihminen-eläinsuhdeFacial RecognitionERPElectroencephalography - EEGanimal behaviourevoluutioemotionEVENT-RELATED POTENTIALSkoiraeläinten käyttäytyminenArticleDogsSpatio-Temporal AnalysistunteetAnimalsEmotionlcsh:RATTENTIONDISCRIMINATIONPROJECTIONSPerceptionlcsh:QPhotic Stimulationbehavioural methodsRESPONSESScientific Reports
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Dorsal Column Nuclei Neural Signal Features Permit Robust Machine-Learning of Natural Tactile- and Proprioception-Dominated Stimuli

2020

Neural prostheses enable users to effect movement through a variety of actuators by translating brain signals into movement control signals. However, to achieve more natural limb movements from these devices, the restoration of somatosensory feedback is required. We used feature-learnability, a machine-learning approach, to assess signal features for their capacity to enhance decoding performance of neural signals evoked by natural tactile and proprioceptive somatosensory stimuli, recorded from the surface of the dorsal column nuclei (DCN) in urethane-anesthetized rats. The highest performing individual feature, spike amplitude, classified somatosensory DCN signals with 70% accuracy. The hi…

Computer scienceCognitive NeuroscienceNeuroscience (miscellaneous)Somatosensory systemSignalgracilelcsh:RC321-57103 medical and health sciencesCellular and Molecular Neuroscience0302 clinical medicineDevelopmental Neurosciencemedicinesupervised back-propagation artificial neural networklcsh:Neurosciences. Biological psychiatry. NeuropsychiatryOriginal Research030304 developmental biologyBrain–computer interfacecuneate0303 health sciencesProprioceptionNeural Prosthesisfeature learnabilitymedicine.anatomical_structureFeature (computer vision)Dorsal column nucleiNeuroscienceneural prosthesisbrain-machine interface030217 neurology & neurosurgeryNeuroscienceNeural decodingFrontiers in Systems Neuroscience
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Identifying musical pieces from fMRI data using encoding and decoding models.

2018

AbstractEncoding models can reveal and decode neural representations in the visual and semantic domains. However, a thorough understanding of how distributed information in auditory cortices and temporal evolution of music contribute to model performance is still lacking in the musical domain. We measured fMRI responses during naturalistic music listening and constructed a two-stage approach that first mapped musical features in auditory cortices and then decoded novel musical pieces. We then probed the influence of stimuli duration (number of time points) and spatial extent (number of voxels) on decoding accuracy. Our approach revealed a linear increase in accuracy with duration and a poin…

AdultMaleComputer scienceSpeech recognitionModels Neurologicalmusiikkilcsh:MedicineMusicalStimulus (physiology)Auditory cortexneural encodingkuunteleminen050105 experimental psychologyArticleKey (music)03 medical and health sciencesYoung Adult0302 clinical medicineSpatio-Temporal AnalysisEncoding (memory)Humans0501 psychology and cognitive scienceslcsh:ScienceAuditory CortexMultidisciplinaryPoint (typography)lcsh:R05 social sciencesneurotieteetMagnetic Resonance Imagingneural decodingHealthy VolunteerscortexaivokuorikoneoppiminenAcoustic StimulationDuration (music)lcsh:QFemale030217 neurology & neurosurgeryDecoding methodsMusicScientific reports
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Decoding Musical Training from Dynamic Processing of Musical Features in the Brain

2018

AbstractPattern recognition on neural activations from naturalistic music listening has been successful at predicting neural responses of listeners from musical features, and vice versa. Inter-subject differences in the decoding accuracies have arisen partly from musical training that has widely recognized structural and functional effects on the brain. We propose and evaluate a decoding approach aimed at predicting the musicianship class of an individual listener from dynamic neural processing of musical features. Whole brain functional magnetic resonance imaging (fMRI) data was acquired from musicians and nonmusicians during listening of three musical pieces from different genres. Six mus…

AdultMaleoppiminenSpeech recognitionlcsh:MedicineMusical050105 experimental psychologykuunteleminenArticle03 medical and health sciencesYoung Adult0302 clinical medicinemusiikintutkimusalgoritmitmedicineFeature (machine learning)Journal ArticleharjoitteluHumans0501 psychology and cognitive sciencesActive listeningTonalitylcsh:Sciencelearning algorithmsBrain MappingMultidisciplinarymedicine.diagnostic_testMusic psychology05 social scienceslcsh:RBrainMagnetic Resonance Imagingneural decodingAcoustic StimulationPattern recognition (psychology)Auditory Perceptionlcsh:QFemaleFunctional magnetic resonance imagingPsychologyaivotTimbre030217 neurology & neurosurgeryMusic
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