Abstract—Population coding is a coding scheme which is ubiq-uitous in neural systems, and is also of more general use in coding stimuli, for example in vision problems. A population of responses to a stimulus can be used to represent not only the value of some variable in the environment, but a full probability distribution for that variable. The information is held in a distributed and encoded form, which may in some situations be more robust to noise and failures than conventional representations. Gabor filters are a pop-ular choice for detecting edges in the visual field for several reasons. They are easily tuned for a variety of edge widths and orientations, and are considered a close model of the edge filters in the human visual system...
This thesis presents a study of how edges are detected and encoded by the human visual system. The s...
Neurons respond selectively to stimuli, and thereby define a code that associates stimuli with popul...
In this work we derive a novel framework rendering measured distributions into approximated distribu...
Population coding is a coding scheme which is ubiquitous in neural systems, and is also of more gene...
This dissertation presents a novel, biologi ally inspired approa h to edge dete tion and per eptual ...
<p>(a) Model of V1 encoding of gratings in filtered noise. Left panel: simulated V1 responses to a g...
Modeling the statistics of natural images is a common problem in computer vision and computational n...
AbstractSpatial pooling is often considered synonymous with averaging (or other statistical combinat...
AbstractA common computation in visual cortex is the divisive normalization of responses by a pooled...
zemelOu.arizona.edu We study the problem of statistically correct inference in networks whose basic ...
In recent years a wide range of statistical models have been applied to vision related problems and ...
In the analysis of natural images, Gaussian scale mixtures (GSM) have been used to account for the s...
The relative merits of different population coding schemes have mostly been analyzed in the framewor...
In the vertebrate nervous system, sensory stimuli are typically encoded through the concerted activi...
Gabor filters have been applied sucessfully to a broad range of multidimensional signal processing a...
This thesis presents a study of how edges are detected and encoded by the human visual system. The s...
Neurons respond selectively to stimuli, and thereby define a code that associates stimuli with popul...
In this work we derive a novel framework rendering measured distributions into approximated distribu...
Population coding is a coding scheme which is ubiquitous in neural systems, and is also of more gene...
This dissertation presents a novel, biologi ally inspired approa h to edge dete tion and per eptual ...
<p>(a) Model of V1 encoding of gratings in filtered noise. Left panel: simulated V1 responses to a g...
Modeling the statistics of natural images is a common problem in computer vision and computational n...
AbstractSpatial pooling is often considered synonymous with averaging (or other statistical combinat...
AbstractA common computation in visual cortex is the divisive normalization of responses by a pooled...
zemelOu.arizona.edu We study the problem of statistically correct inference in networks whose basic ...
In recent years a wide range of statistical models have been applied to vision related problems and ...
In the analysis of natural images, Gaussian scale mixtures (GSM) have been used to account for the s...
The relative merits of different population coding schemes have mostly been analyzed in the framewor...
In the vertebrate nervous system, sensory stimuli are typically encoded through the concerted activi...
Gabor filters have been applied sucessfully to a broad range of multidimensional signal processing a...
This thesis presents a study of how edges are detected and encoded by the human visual system. The s...
Neurons respond selectively to stimuli, and thereby define a code that associates stimuli with popul...
In this work we derive a novel framework rendering measured distributions into approximated distribu...