Comparing representations of complex stimuli in neural network layers to human brain representations or behavioral judgments can guide model development. However, even qualitatively distinct neural network models often predict similar representational geometries of typical stimulus sets. We propose a Bayesian experimental design approach to synthesizing stimulus sets for adjudicating among representational models efficiently. We apply our method to discriminate among candidate neural network models of behavioral face dissimilarity judgments. Our results indicate that a neural network trained to invert a 3D-face-model graphics renderer is more human-aligned than the same architecture trained on identification, classification, or autoencoding...
Daniel J. Navarro and Michael D. Leehttp://csjarchive.cogsci.rpi.edu/Proceedings/2002/CogSci02.pd
Representational similarity analysis (RSA) tests models of brain computation by investigating how ne...
We review computational models of shape and depth perception and relate them to visual psychophysics...
AbstractStudies of the primate visual system have begun to test a wide range of complex computationa...
UnrestrictedWhat is the nature of the representation of faces and objects that results in the striki...
Deep neural networks (DNNs) can resolve real-world categorization tasks with apparent human-level pe...
SummaryUnderstanding the neural mechanisms underlying object recognition is one of the fundamental c...
We contribute to the study of the quality of learned representations. In many domains, an important ...
The activity of neural populations in the brains of humans and animals can exhibit vastly different ...
<div><p>The perceptual representation of individual faces is often explained with reference to a nor...
Inherent correlations between visual and semantic features in real-world scenes make it difficult to...
How do we understand the complex patterns of neural responses that underlie scene understanding? Stu...
Neuroscience has recently made much progress, expanding the complexity of both neural-activity measu...
Studies of the primate visual system have begun to test a wide range of complex computational object...
A key challenge for cognitive neuroscience is deciphering the representational schemes of the brain....
Daniel J. Navarro and Michael D. Leehttp://csjarchive.cogsci.rpi.edu/Proceedings/2002/CogSci02.pd
Representational similarity analysis (RSA) tests models of brain computation by investigating how ne...
We review computational models of shape and depth perception and relate them to visual psychophysics...
AbstractStudies of the primate visual system have begun to test a wide range of complex computationa...
UnrestrictedWhat is the nature of the representation of faces and objects that results in the striki...
Deep neural networks (DNNs) can resolve real-world categorization tasks with apparent human-level pe...
SummaryUnderstanding the neural mechanisms underlying object recognition is one of the fundamental c...
We contribute to the study of the quality of learned representations. In many domains, an important ...
The activity of neural populations in the brains of humans and animals can exhibit vastly different ...
<div><p>The perceptual representation of individual faces is often explained with reference to a nor...
Inherent correlations between visual and semantic features in real-world scenes make it difficult to...
How do we understand the complex patterns of neural responses that underlie scene understanding? Stu...
Neuroscience has recently made much progress, expanding the complexity of both neural-activity measu...
Studies of the primate visual system have begun to test a wide range of complex computational object...
A key challenge for cognitive neuroscience is deciphering the representational schemes of the brain....
Daniel J. Navarro and Michael D. Leehttp://csjarchive.cogsci.rpi.edu/Proceedings/2002/CogSci02.pd
Representational similarity analysis (RSA) tests models of brain computation by investigating how ne...
We review computational models of shape and depth perception and relate them to visual psychophysics...