A Discrete Model for Color Naming | Semantic Scholar Skip to search formSkip to main content> Semantic Scholar's Logo Search Sign InCreate Free Account You are currently offline. Some features of the site may not work correctly. DOI:10.1155/2007/29125 Corpus ID: 6444647A Discrete Model for Color Naming @article{Menegaz2007ADM, title={A Discrete Model for Color Naming}, author={G. Menegaz and A. Troter and J. Sequeira and J. Bo{\"i}}, journal={EURASIP Journal on Advances in Signal Processing}, year={2007}, volume={2007}, pages={1-10} } G. Menegaz, A. Troter, +1 author J. Boï Published 2007 Mathematics, Computer Science EURASIP Journal on Advances in Signal Processing The ability to associate labels to colors is very natural for human beings. Though, this apparently simple task hides very complex and still unsolved problems, spreading over many different disciplines ranging from neurophysiology to psychology and imaging. In this paper, we propose a discrete model for computational color categorization and naming. Starting from the 424 color specimens of the OSA-UCS set, we propose a fuzzy partitioning of the color space. Each of the 11 basic color categories… Expand View on Springer asp-eurasipjournals.springeropen.com Save to Library Create Alert Cite Launch Research Feed Share This Paper 51 CitationsHighly Influential Citations 1 Background Citations 19 Methods Citations 5 View All Figures and Topics from this paper figure 1 figure 2 figure 3 figure 4 figure 5 figure 6 figure 7 figure 8 figure 9 figure 10 figure 11 figure 12 View All 12 Figures & Tables Color space Delaunay triangulation Computer vision Linear interpolation Feature vector Fuzzy set Image segmentation Hoc (programming language) Experiment Categorization Sampling (signal processing) 51 Citations Citation Type Citation Type All Types Cites Results Cites Methods Cites Background Has PDF Publication Type Author More Filters More Filters Filters Sort by Relevance Sort by Most Influenced Papers Sort by Citation Count Sort by Recency Psychophysical Measurements to Model Intercolor Regions of Color-Naming Space C. Párraga, R. 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Sánchez Mathematics, Computer Science IEEE Transactions on Fuzzy Systems 2017 15 View 1 excerpt, cites background Save Alert Research Feed Color Names Portions Reprinted, with Permission, from 'learning Color Names for Real-world R. Benavente, M. Vanrell, C. Schmid, R. Baldrich, Jakob Verbeek, Diane Larlus 2009 View 1 excerpt Save Alert Research Feed NICE: A Computational Solution to Close the Gap from Colour Perception to Colour Categorization C. Párraga, A. Akbarinia Computer Science, Medicine PloS one 2016 16 PDF Save Alert Research Feed Computational Color Naming for Human-Machine Interaction K. R. Jyothi, M. Okade Computer Science 2019 IEEE Region 10 Symposium (TENSYMP) 2019 1 PDF View 1 excerpt, cites background Save Alert Research Feed Color Classification based on Pixel Intensity Values J. Sainui, Paiboon Pattanasatean Computer Science 2018 19th IEEE/ACIS International Conference on Software Engineering, Artificial Intelligence, Networking and Parallel/Distributed Computing (SNPD) 2018 2 View 2 excerpts, cites background Save Alert Research Feed ... 1 2 3 4 5 ... References SHOWING 1-10 OF 23 REFERENCES SORT BYRelevance Most Influenced Papers Recency A computational model of color perception and color naming J. M. Lammens Psychology 1995 129 Save Alert Research Feed A Computational Model for Color Naming and Describing Color Composition of Images A. Mojsilovi 56 Highly Influential PDF View 3 excerpts, references background Save Alert Research Feed A computational model for color naming and describing color composition of images A. Mojsilovic Computer Science, Medicine IEEE Transactions on Image Processing 2005 81 Highly Influential View 3 excerpts, references background Save Alert Research Feed Salient Features of Munsell Colour Space as a Function of Monolexemic Naming and Response Latencies Julia Sturges, T.W.ALLAN Whitfield Psychology, Medicine Vision Research 1997 48 Highly Influential View 1 excerpt, references background Save Alert Research Feed Simulating the Formation of Color Categories Tony Belpaeme Computer Science IJCAI 2001 30 Highly Influential PDF View 2 excerpts, references background Save Alert Research Feed Associating color appearance with the cone chromaticity space D. Cao, J. Pokorny, V. Smith Mathematics, Medicine Vision Research 2005 10 PDF Save Alert Research Feed Reaching coherent color categories through communication Tony Belpaeme Computer Science 2001 16 Highly Influential View 1 excerpt, references background Save Alert Research Feed Locating basic colours in the munsell space Julia Sturges, T. Whitfield Mathematics 1995 159 Highly Influential View 1 excerpt, references background Save Alert Research Feed Locating basic colors in the OSA space R. Boynton, C. X. Olson Mathematics 1987 185 View 2 excerpts, references background Save Alert Research Feed Color vision : perspectives from different disciplines W. Backhaus, R. Kliegl, J. Werner Computer Science 1998 143 Highly Influential View 1 excerpt, references background Save Alert Research Feed ... 1 2 3 ... 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