Related references
Note: Only part of the references are listed.CNN-based transfer learning-BiLSTM network: A novel approach for COVID-19 infection detection
Muhammet Fatih Aslan et al.
APPLIED SOFT COMPUTING (2021)
Semantic segmentation of major macroalgae in coastal environments using high-resolution ground imagery and deep learning
Jesus Balado et al.
INTERNATIONAL JOURNAL OF REMOTE SENSING (2021)
Plant-based biopolymers: emerging bio-flocculants for microalgal biomass recovery
Hitesh Jethani et al.
REVIEWS IN ENVIRONMENTAL SCIENCE AND BIO-TECHNOLOGY (2021)
Bioprospecting of wild type ethanologenic yeast for ethanol fuel production from wastewater-grown microalgae
Enrique Romero-Frasca et al.
BIOTECHNOLOGY FOR BIOFUELS (2021)
Microalgae classification based on machine learning techniques
P. Otalora et al.
ALGAL RESEARCH-BIOMASS BIOFUELS AND BIOPRODUCTS (2021)
Deep learning for variational multimodality tumor segmentation in PET/CT
Laquan Li et al.
NEUROCOMPUTING (2020)
Early warning of Noctiluca scintillans blooms using in-situ plankton imaging system: An example from Dapeng Bay, PR China
Junting Song et al.
ECOLOGICAL INDICATORS (2020)
Identification and enumeration of cyanobacteria species using a deep neural network
Sang-Soo Baek et al.
ECOLOGICAL INDICATORS (2020)
CNN and HOG based comparison study for complete occlusion handling in human tracking
Muhammet Fatih Aslan et al.
MEASUREMENT (2020)
A Low-Cost Automated Digital Microscopy Platform for Automatic Identification of Diatoms
Jesus Salido et al.
APPLIED SCIENCES-BASEL (2020)
Selenastrum Capricornutum a New Strain of Algae for Biodiesel Production
Annarita Pugliese et al.
FERMENTATION-BASEL (2020)
EmbraceNet: A robust deep learning architecture for multimodal classification
Jun-Ho Choi et al.
INFORMATION FUSION (2019)
A study on visual features of leaves in plant identification using artificial intelligence techniques
Enes Yigit et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2019)
Species identification and survival competition analysis of microalgae via hyperspectral microscopic images
Bi Xiaolin et al.
OPTIK (2019)
The Feasibility of Automated Identification of Six Algae Types Using Feed-Forward Neural Networks and Fluorescence-Based Spectral-Morphological Features
Jason L. Deglint et al.
IEEE ACCESS (2019)
Predicting Colonization Growth of Algae on Mortar Surface with Artificial Neural Network
Thu-Hien Tran et al.
JOURNAL OF COMPUTING IN CIVIL ENGINEERING (2016)
Potential of industrial biotechnology with cyanobacteria and eukaryotic microalgae
Rene H. Wijffels et al.
CURRENT OPINION IN BIOTECHNOLOGY (2013)
ALGAE GROWTH PREDICTION THROUGH IDENTIFICATION OF INFLUENTIAL ENVIRONMENTAL VARIABLES: A MACHINE LEARNING APPROACH
Ashfaqur Rahman et al.
INTERNATIONAL JOURNAL OF COMPUTATIONAL INTELLIGENCE AND APPLICATIONS (2013)
Valuable products from biotechnology of microalgae
O Pulz et al.
APPLIED MICROBIOLOGY AND BIOTECHNOLOGY (2004)