International audienceAlthough distinct categories are reliably decoded from fMRI brain responses, it has proved more difficult to distinguish visually similar inputs, such as different faces. Here, we apply a recently developed deep learning system to reconstruct face images from human fMRI. We trained a variational auto-encoder (VAE) neural network using a GAN (Generative Adversarial Network) unsupervised procedure over a large data set of celebrity faces. The auto-encoder latent space provides a meaningful, topologically organized 1024-dimensional description of each image. We then presented several thousand faces to human subjects, and learned a simple linear mapping between the multi-voxel fMRI activation patterns and the 1024 latent d...
Brain decoding, to decode a stimulus given to or a mental state of human participants from measurabl...
Generative Adversarial Networks (GAN) are emerging as an exciting training paradigm which promises a...
Forensic facial reconstruction currently relies on subjective manual methods to reconstruct a recogn...
Here, we present a novel approach to solve the problem of reconstructing perceived stimuli from brai...
Becoming a face expert takes years of learning and development. Many research programs are devoted t...
International audienceDecoding and reconstructing images from brain imaging data is a research area ...
We explore a method for reconstructing visual stimuli from brain activity. Using large databases of ...
Abstract In neural decoding research, one of the most intriguing topics is the reconstruction of per...
Background: Deep neural networks have revolutionised machine learning, with unparalleled performance...
<div><p>The perceptual representation of individual faces is often explained with reference to a nor...
Deep learning is now a predominant technique for most machine learning problems, especially in compu...
Arguably, face poses form the most telling cues for nonverbal communication. Considering even str...
International audienceReconstructing perceived natural images from fMRI signals is one of the most e...
Based on a special type of denoising autoencoder (DAE) and image reconstruction, we present a novel ...
A great challenge to the field of visual neuroscience is to understand how faces are encoded and rep...
Brain decoding, to decode a stimulus given to or a mental state of human participants from measurabl...
Generative Adversarial Networks (GAN) are emerging as an exciting training paradigm which promises a...
Forensic facial reconstruction currently relies on subjective manual methods to reconstruct a recogn...
Here, we present a novel approach to solve the problem of reconstructing perceived stimuli from brai...
Becoming a face expert takes years of learning and development. Many research programs are devoted t...
International audienceDecoding and reconstructing images from brain imaging data is a research area ...
We explore a method for reconstructing visual stimuli from brain activity. Using large databases of ...
Abstract In neural decoding research, one of the most intriguing topics is the reconstruction of per...
Background: Deep neural networks have revolutionised machine learning, with unparalleled performance...
<div><p>The perceptual representation of individual faces is often explained with reference to a nor...
Deep learning is now a predominant technique for most machine learning problems, especially in compu...
Arguably, face poses form the most telling cues for nonverbal communication. Considering even str...
International audienceReconstructing perceived natural images from fMRI signals is one of the most e...
Based on a special type of denoising autoencoder (DAE) and image reconstruction, we present a novel ...
A great challenge to the field of visual neuroscience is to understand how faces are encoded and rep...
Brain decoding, to decode a stimulus given to or a mental state of human participants from measurabl...
Generative Adversarial Networks (GAN) are emerging as an exciting training paradigm which promises a...
Forensic facial reconstruction currently relies on subjective manual methods to reconstruct a recogn...