Publication | Closed Access
Methods for first-order kernel estimation: simple-cell receptive fields from responses to natural scenes
14
Citations
27
References
2003
Year
EngineeringMachine LearningNatural Scene StimuliSocial SciencesEarly VisionImage AnalysisSensory NeuroscienceData SciencePattern RecognitionSignal ReconstructionRegularization (Mathematics)Vision RecognitionNatural ScenesMachine VisionInverse ProblemsVisual ProcessingComputer VisionSimple-cell Receptive FieldsReproducing Kernel MethodReverse Correlation EstimateNeuroscienceFirst-order Kernel EstimationSimple CellsKernel Method
Recent studies have recovered receptive-field maps of simple cells in visual cortex from their responses to natural scene stimuli. Natural scenes have many theoretical and practical advantages over traditional, artificial stimuli; however, the receptive-field estimation methods are more complex than for white-noise stimuli. Here, we describe and justify several of these methods—spectral correction of the reverse correlation estimate, direct least-squares solution, iterative least-squares algorithms and regularized least-squares solutions. We investigate the pros and cons of the different methods, and evaluate them in a head-to-head comparison for simulated simple-cell data. This shows that, at least for quasilinear simulated simple cells, a regularized solution (‘reginv’) is most efficient, requiring fewer stimulus presentations for high-resolution reconstruction of the first-order kernel. We also investigate several practical issues that determine the success of this kind of experiment—the effects of neuronal nonlinearities, response variability and the choice of stimulus regime.
| Year | Citations | |
|---|---|---|
Page 1
Page 1