Javascript must be enabled to continue!
Interactions of encoding and decoding problems to understand motor control
View through CrossRef
Abstract
Learning a map from movement to neural data (Encoding Problem) and vice versa (Decoding Problem) are crucial to understanding motor control. A principled encoding model that understands underlying neural dynamics can help better solve the decoding problem. Here, we develop a new generative encoding model leveraging deep learning that autonomously captures neural dynamics. After training, the model can synthesize spike trains given any observed kinematics, under the guidance of the learned neural dynamics. When neural data from other sessions or subjects are limited, synthesized spike trains can improve cross-session and cross-subject decoding performance of a Brain Computer Interface decoder. For cross-subject, even with ample data for both subjects, neural dynamics learned from a previous subject can transfer useful knowledge that improves the best achievable decoding performance for the new subject. The approach is general and fully data-driven, and hence could apply to neuroscience encoding and decoding problems beyond motor control.
Title: Interactions of encoding and decoding problems to understand motor control
Description:
Abstract
Learning a map from movement to neural data (Encoding Problem) and vice versa (Decoding Problem) are crucial to understanding motor control.
A principled encoding model that understands underlying neural dynamics can help better solve the decoding problem.
Here, we develop a new generative encoding model leveraging deep learning that autonomously captures neural dynamics.
After training, the model can synthesize spike trains given any observed kinematics, under the guidance of the learned neural dynamics.
When neural data from other sessions or subjects are limited, synthesized spike trains can improve cross-session and cross-subject decoding performance of a Brain Computer Interface decoder.
For cross-subject, even with ample data for both subjects, neural dynamics learned from a previous subject can transfer useful knowledge that improves the best achievable decoding performance for the new subject.
The approach is general and fully data-driven, and hence could apply to neuroscience encoding and decoding problems beyond motor control.
Related Results
Improving Decodability of Polar Codes by Adding Noise
Improving Decodability of Polar Codes by Adding Noise
This paper presents an online perturbed and directed neural-evolutionary (Online-PDNE) decoding algorithm for polar codes, in which the perturbation noise and online directed neuro...
Sistem Kontrol Torsi pada Motor DC
Sistem Kontrol Torsi pada Motor DC
AbstrakPenggunaan motor DC di dunia industri sangat penting. Kecepatan dan torsi motor DC sangat mempengaruhi kualitas dan kuantitas produk yang dihasilkan. Untuk itu, diperlukan s...
Optimized Generalized LDPC Convolutional Codes
Optimized Generalized LDPC Convolutional Codes
In this paper, some optimized encoding and decoding schemes are proposed for the generalized LDPC convolutional codes (GLDPC–CCs). In terms of the encoding scheme, a flexible dopin...
Modelització i control d'accionaments elèctrics.
Modelització i control d'accionaments elèctrics.
L'actual situació energètica demanda cada cop més d'aplicacions que redueixin el consum energètic. A nivell d'energia elèctrica, i de la conversió d'aquesta a energia mecànica, els...
Overview of Algorithms for Encoding and Decoding Payment Systems
Overview of Algorithms for Encoding and Decoding Payment Systems
Algorithms for encoding and decoding information play a critical role in the optimization of modern systems, enabling efficient data representation, transmission, storage, and retr...
Towards Experimental Approaches to Advance Discovery of Clinically Meaningful Sensory-Motor Biomarkers
Towards Experimental Approaches to Advance Discovery of Clinically Meaningful Sensory-Motor Biomarkers
Atypical motor function is a highly prevalent clinical feature of autism spectrum disorder (ASD). Differences in motor function both persist across the lifespan and scale linearly...
Asymmetric directed functional connectivity within the frontoparietal motor network during motor imagery and execution
Asymmetric directed functional connectivity within the frontoparietal motor network during motor imagery and execution
AbstractBoth imagery and execution of motor controls consist of interactions within a neuronal network, including frontal motor-related regions and posterior parietal regions. To r...
Contribucion al control de motores de reluctancia autoconmutados
Contribucion al control de motores de reluctancia autoconmutados
En esta tesis se hacen contribuciones al control de los motores de reluctancia autoconmutados (switched reluctance motors) de potencias comprendidas entre 0.25 y 10 kW. <br/>...

