Resolving phytoplankton pigments from spectral images using convolutional neural networks
出版年份 2023 全文链接
标题
Resolving phytoplankton pigments from spectral images using convolutional neural networks
作者
关键词
-
出版物
LIMNOLOGY AND OCEANOGRAPHY-METHODS
Volume -, Issue -, Pages -
出版商
Wiley
发表日期
2023-11-06
DOI
10.1002/lom3.10588
参考文献
相关参考文献
注意:仅列出部分参考文献,下载原文获取全部文献信息。- Phytoplankton group identification with chemotaxonomic biomarkers: In combination they do better
- (2023) E. Peltomaa et al. PHYTOCHEMISTRY
- Seeing good and bad: Optical sensing of microalgal culture condition
- (2023) Alexei Solovchenko Algal Research-Biomass Biofuels and Bioproducts
- Assessment of microalgae species, biomass, and distribution from spectral images using a convolution neural network
- (2022) Pauliina Salmi et al. JOURNAL OF APPLIED PHYCOLOGY
- Spectral mixture analysis for surveillance of harmful algal blooms (SMASH): A field-, laboratory-, and satellite-based approach to identifying cyanobacteria genera from remotely sensed data
- (2022) Carl J. Legleiter et al. REMOTE SENSING OF ENVIRONMENT
- Towards operational phytoplankton recognition with automated high-throughput imaging, near-real-time data processing, and convolutional neural networks
- (2022) Kaisa Kraft et al. Frontiers in Marine Science
- A Bayesian approach for remote sensing of chlorophyll-a and associated retrieval uncertainty in oligotrophic and mesotrophic lakes
- (2022) Mortimer Werther et al. REMOTE SENSING OF ENVIRONMENT
- Application of a convolutional neural network to improve automated early warning of harmful algal blooms
- (2021) Darren W. Henrichs et al. ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH
- Lake management: is prevention better than cure?
- (2021) Bryan M. Spears et al. Inland Waters
- Chlorophyll-a Retrieval From Sentinel-2 Images Using Convolutional Neural Network Regression
- (2021) Erchan Aptoula et al. IEEE Geoscience and Remote Sensing Letters
- How to reach optimal estimates of confidence intervals in microscopic counting of phytoplankton?
- (2021) Kalevi Salonen et al. JOURNAL OF PLANKTON RESEARCH
- A convolutional neural network regression for quantifying cyanobacteria using hyperspectral imagery
- (2019) JongCheol Pyo et al. REMOTE SENSING OF ENVIRONMENT
- Measures of Model Performance Based On the Log Accuracy Ratio
- (2018) S. K. Morley et al. SPACE WEATHER-THE INTERNATIONAL JOURNAL OF RESEARCH AND APPLICATIONS
- Imaging Spectrometry of Inland and Coastal Waters: State of the Art, Achievements and Perspectives
- (2018) C. Giardino et al. SURVEYS IN GEOPHYSICS
- Sensors in the Stream: The High-Frequency Wave of the Present
- (2016) Michael Rode et al. ENVIRONMENTAL SCIENCE & TECHNOLOGY
- Challenges for mapping cyanotoxin patterns from remote sensing of cyanobacteria
- (2016) Richard P. Stumpf et al. HARMFUL ALGAE
- Effect of phytoplankton size classes on bio-optical properties of phytoplankton in the Western Iberian coast: Application of models
- (2015) Ana C. Brito et al. REMOTE SENSING OF ENVIRONMENT
- Aquatic color radiometry remote sensing of coastal and inland waters: Challenges and recommendations for future satellite missions
- (2015) Colleen B. Mouw et al. REMOTE SENSING OF ENVIRONMENT
- Quantitative analysis of extracted phycobilin pigments in cyanobacteria—an assessment of spectrophotometric and spectrofluorometric methods
- (2014) Monika Sobiechowska-Sasim et al. JOURNAL OF APPLIED PHYCOLOGY
- Extraction methods for phycocyanin determination in freshwater filamentous cyanobacteria and their application in a shallow lake
- (2013) Hajnalka Horváth et al. EUROPEAN JOURNAL OF PHYCOLOGY
- Phycobilisome: architecture of a light-harvesting supercomplex
- (2013) Mai Watanabe et al. PHOTOSYNTHESIS RESEARCH
- Remote sensing of phytoplankton functional types
- (2008) Anitha Nair et al. REMOTE SENSING OF ENVIRONMENT
- A phycocyanin probe as a tool for monitoring cyanobacteria in freshwater bodies
- (2007) Luc Brient et al. JOURNAL OF ENVIRONMENTAL MONITORING
Create your own webinar
Interested in hosting your own webinar? Check the schedule and propose your idea to the Peeref Content Team.
Create NowBecome a Peeref-certified reviewer
The Peeref Institute provides free reviewer training that teaches the core competencies of the academic peer review process.
Get Started