Artificial intelligence reveals environmental constraints on colour diversity in insects
Published 2019 View Full Article
- Home
- Publications
- Publication Search
- Publication Details
Title
Artificial intelligence reveals environmental constraints on colour diversity in insects
Authors
Keywords
-
Journal
Nature Communications
Volume 10, Issue 1, Pages -
Publisher
Springer Science and Business Media LLC
Online
2019-10-07
DOI
10.1038/s41467-019-12500-2
References
Ask authors/readers for more resources
Related references
Note: Only part of the references are listed.- pavo 2: new tools for the spectral and spatial analysis of colour in R
- (2019) Rafael Maia et al. Methods in Ecology and Evolution
- Abiotic and biotic predictors of macroecological patterns in bird and butterfly coloration
- (2018) Rhiannon L. Dalrymple et al. ECOLOGICAL MONOGRAPHS
- The dark side of Lepidoptera: Colour lightness of geometrid moths decreases with increasing latitude
- (2018) Lea Heidrich et al. GLOBAL ECOLOGY AND BIOGEOGRAPHY
- Colors of night: climate–morphology relationships of geometrid moths along spatial gradients in southwestern China
- (2018) Shuang Xing et al. OECOLOGIA
- A deep convolutional neural network for video sequence background subtraction
- (2018) Mohammadreza Babaee et al. PATTERN RECOGNITION
- Quantifying camouflage and conspicuousness using visual salience
- (2018) Thomas W. Pike Methods in Ecology and Evolution
- Background Subtraction Using Multiscale Fully Convolutional Network
- (2018) Dongdong Zeng et al. IEEE Access
- PAT ‐ GEOM : A Software Package for the Analysis of Animal Patterns
- (2018) Ian Z.W. Chan et al. Methods in Ecology and Evolution
- WorldClim 2: new 1-km spatial resolution climate surfaces for global land areas
- (2017) Stephen E. Fick et al. INTERNATIONAL JOURNAL OF CLIMATOLOGY
- Shape matters: animal colour patterns as signals of individual quality
- (2017) Lorenzo Pérez-Rodríguez et al. PROCEEDINGS OF THE ROYAL SOCIETY B-BIOLOGICAL SCIENCES
- The biology of color
- (2017) Innes C. Cuthill et al. SCIENCE
- Wallace on Coloration: Contemporary Perspective and Unresolved Insights
- (2017) Tim Caro TRENDS IN ECOLOGY & EVOLUTION
- An Integrative Framework for the Appraisal of Coloration in Nature
- (2015) Darrell J. Kemp et al. AMERICAN NATURALIST
- Reproducible research in the study of biological coloration
- (2015) Thomas E. White et al. ANIMAL BEHAVIOUR
- cati: an R package using functional traits to detect and quantify multi-level community assembly processes
- (2015) Adrien Taudiere et al. ECOGRAPHY
- Birds, butterflies and flowers in the tropics are not more colourful than those at higher latitudes
- (2015) Rhiannon L. Dalrymple et al. GLOBAL ECOLOGY AND BIOGEOGRAPHY
- Fitting Linear Mixed-Effects Models Usinglme4
- (2015) Douglas Bates et al. Journal of Statistical Software
- Image calibration and analysis toolbox - a free software suite for objectively measuring reflectance, colour and pattern
- (2015) Jolyon Troscianko et al. Methods in Ecology and Evolution
- lavaan: AnRPackage for Structural Equation Modeling
- (2015) Yves Rosseel Journal of Statistical Software
- Pattern recognition algorithm reveals how birds evolve individual egg pattern signatures
- (2014) Mary Caswell Stoddard et al. Nature Communications
- Global warming favours light-coloured insects in Europe
- (2014) Dirk Zeuss et al. Nature Communications
- Classification of Taiwan forest vegetation
- (2013) Ching-Feng Li et al. APPLIED VEGETATION SCIENCE
- The return of the variance: intraspecific variability in community ecology
- (2012) Cyrille Violle et al. TRENDS IN ECOLOGY & EVOLUTION
- A general and simple method for obtainingR2from generalized linear mixed-effects models
- (2012) Shinichi Nakagawa et al. Methods in Ecology and Evolution
- Mechanistic niche modelling: combining physiological and spatial data to predict species’ ranges
- (2009) Michael Kearney et al. ECOLOGY LETTERS
- Variation in leaf functional trait values within and across individuals and species: an example from a Costa Rican dry forest
- (2009) Catherine M. Hulshof et al. FUNCTIONAL ECOLOGY
Discover Peeref hubs
Discuss science. Find collaborators. Network.
Join a conversationBecome a Peeref-certified reviewer
The Peeref Institute provides free reviewer training that teaches the core competencies of the academic peer review process.
Get Started