Open AccessBook
Vision: Coding and Efficiency
Colin Blakemore,K. Adler,M. Pointon +2 more
- 25 Jan 1991
644
TL;DR: In this article, the authors present a fascinating insight to all the major topics in visual science research and discuss how this vast subject can be unified from the viewpoint that describes the way in which visual systems efficiently encode and represent the outside world.
read more
Abstract: Professor Colin Blakemore presents a fascinating insight to all the major topics in visual science research. Experts from around the world show how this vast subject can be unified from the viewpoint that describes the way in which visual systems efficiently encode and represent the outside world. The approach, which is both rigorous and general, was championed by H. B. Barlow in the fifties and has recently acquired a new significance in the light of exciting developments in computer science and artificial intelligence and vision. The book is essential reading for advanced undergraduates, postgraduates and researchers in the field of vision research and neuroscience.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
A theory of cortical responses
TL;DR: The aims of this article are to encompass many apparently unrelated anatomical, physiological and psychophysical attributes of the brain within a single theoretical perspective and to provide a principled way to understand many aspects of cortical organization and responses.
Guided Search 2.0 A revised model of visual search
Jeremy M. Wolfe,Jeremy M. Wolfe +1 more
TL;DR: This paper reviews the visual search literature and presents a model of human search behavior, a revision of the guided search 2.0 model in which virtually all aspects of the model have been made more explicit and/or revised in light of new data.
The "independent components" of natural scenes are edge filters.
TL;DR: It is shown that a new unsupervised learning algorithm based on information maximization, a nonlinear "infomax" network, when applied to an ensemble of natural scenes produces sets of visual filters that are localized and oriented.
2.5K
Functional Connectivity: The Principal-Component Analysis of Large (PET) Data Sets
TL;DR: The results suggest that the variance in neurophysiological measurements, introduced experimentally, was accounted for by two independent principal components and highlighted an intentional brain system seen in previous studies of verbal fluency.
2K
Signals, signal conditions, and the direction of evolution
TL;DR: Sensory systems, signals, signaling behavior, and habitat choice are evolutionarily coupled and should coevolve in predictable directions, determined by environmental biophysics, neurobiology, and the genetics of the suites of traits.
Related Papers (5)
David M. Green,John A. Swets +1 more
- 01 Jan 1966
Anne Treisman,Garry A. Gelade +1 more
Norma Graham
- 21 Sep 1989
Denis G. Pelli,Lan Zhang +1 more