Use of image processing and digital algorithm for microalgae identification.

[1]  J. Niu,et al.  Identification of paralytic shellfish toxin-producing microalgae using machine learning and deep learning methods , 2022, Journal of Oceanology and Limnology.

[2]  Abdullah,et al.  Computer Vision Based Deep Learning Approach for the Detection and Classification of Algae Species Using Microscopic Images , 2022, Water.

[3]  Wei Lu,et al.  Graph convolutional networks in language and vision: A survey , 2022, Knowl. Based Syst..

[4]  J. A. Scott,et al.  Microalgae as an alternative to oil crops for edible oils and animal feed , 2022, Algal Research.

[5]  L. Tan,et al.  Harmful Microalgae Detection: Biosensors versus Some Conventional Methods , 2022, Sensors.

[6]  Keugtae Kim,et al.  Deep Learning-Based Algal Detection Model Development Considering Field Application , 2022, Water.

[7]  P. Show,et al.  The impact of using recycled culture medium to grow Chlorella vulgaris in a sequential flow system: Evaluation on growth, carbon removal, and biochemical compositions , 2022, Biomass and Bioenergy.

[8]  Ran Liao,et al.  Machine Learning Powered Microalgae Classification by Use of Polarized Light Scattering Data , 2022, Applied Sciences.

[9]  P. Show,et al.  Smart microalgae farming with internet-of-things for sustainable agriculture. , 2022, Biotechnology advances.

[10]  Chen Li,et al.  Applications of artificial neural networks in microorganism image analysis: a comprehensive review from conventional multilayer perceptron to popular convolutional neural network and potential visual transformer , 2021, Artificial Intelligence Review.

[11]  S. Trasatti,et al.  Powering a microprocessor by photosynthesis , 2022, Energy & Environmental Science.

[12]  W. Ang,et al.  Recovery of microalgae biodiesel using liquid biphasic flotation system , 2022, Fuel.

[13]  Pau Loke Show,et al.  Sustainable Smart Photobioreactor for Continuous Cultivation of Microalgae Embedded with Internet of Things. , 2021, Bioresource technology.

[14]  Muhammet Fatih Aslan,et al.  Convolutional neural network - Support vector machine based approach for classification of cyanobacteria and chlorophyta microalgae groups , 2021, Algal Research.

[15]  Xin-qi Zheng,et al.  The Fusion of Microfluidics and Optics for On-Chip Detection and Characterization of Microalgae , 2021, Micromachines.

[16]  L. Barsanti,et al.  Water monitoring by means of digital microscopy identification and classification of microalgae. , 2021, Environmental science. Processes & impacts.

[17]  P. Show,et al.  Perspective of Spirulina culture with wastewater into a sustainable circular bioeconomy. , 2021, Environmental pollution.

[18]  J. Manhas,et al.  Machine Learning and Deep Learning Based Computational Approaches in Automatic Microorganisms Image Recognition: Methodologies, Challenges, and Developments , 2021, Archives of Computational Methods in Engineering.

[19]  Jo‐Shu Chang,et al.  How does the Internet of Things (IoT) help in microalgae biorefinery? , 2021, Biotechnology advances.

[20]  P. Show,et al.  Algae as potential feedstock for various bioenergy production. , 2021, Chemosphere.

[21]  T. Trappenberg,et al.  Plankton classification with high-throughput submersible holographic microscopy and transfer learning , 2021, BMC ecology and evolution.

[22]  Dongda Zhang,et al.  Machine learning for biochemical engineering: A review , 2021 .

[23]  M. Berenguel,et al.  Microalgae classification based on machine learning techniques , 2021 .

[24]  B. Peyton,et al.  Microalgae, soil and plants: A critical review of microalgae as renewable resources for agriculture , 2021, Algal Research.

[25]  R. Singh,et al.  Review of Challenges for Algae-Based Wastewater Treatment: Strain Selection, Wastewater Characteristics, Abiotic, and Biotic Factors , 2021 .

[26]  Nicholas M. H. Khong,et al.  Meeting Sustainable Development Goals: Alternative Extraction Processes for Fucoxanthin in Algae , 2021, Frontiers in Bioengineering and Biotechnology.

[27]  Sin Yong Teng,et al.  Chlorella vulgaris FSP-E cultivation in waste molasses: Photo-to-property estimation by artificial intelligence , 2020 .

[28]  Muhammet Fatih Aslan,et al.  CNN-based transfer learning–BiLSTM network: A novel approach for COVID-19 infection detection , 2020, Applied Soft Computing.

[29]  K. Khoo,et al.  Nature’s fight against plastic pollution: Algae for plastic biodegradation and bioplastics production , 2020, Environmental science and ecotechnology.

[30]  Sin Yong Teng,et al.  Microalgae with artificial intelligence: A digitalized perspective on genetics, systems and products. , 2020, Biotechnology advances.

[31]  Tim W. Nattkemper,et al.  Deep learning-based diatom taxonomy on virtual slides , 2020, Scientific Reports.

[32]  A. S. Jalal,et al.  Deep learning-based ResNeXt model in phycological studies for future , 2020 .

[33]  Y. Pachepsky,et al.  Identification and enumeration of cyanobacteria species using a deep neural network , 2020 .

[34]  M. Fawley,et al.  Identification of eukaryotic microalgal strains , 2020, Journal of Applied Phycology.

[35]  Gaurav Pant,et al.  ResNeXt convolution neural network topology-based deep learning model for identification and classification of Pediastrum , 2020, Algal Research.

[36]  C. Benning,et al.  Human health benefits of very-long-chain polyunsaturated fatty acids from microalgae. , 2020, Biochimie.

[37]  Tanzila Saba,et al.  A deep neural network and classical features based scheme for objects recognition: an application for machine inspection , 2020, Multimedia Tools and Applications.

[38]  Keisuke Goda,et al.  Accurate classification of microalgae by intelligent frequency-division-multiplexed fluorescence imaging flow cytometry , 2020 .

[39]  P. Show,et al.  Recent advances in downstream processing of microalgae lipid recovery for biofuel production. , 2020, Bioresource technology.

[40]  P. Show,et al.  Potential utilization of bioproducts from microalgae for the quality enhancement of natural products. , 2020, Bioresource technology.

[41]  Daniel C W Tsang,et al.  Algae as potential feedstock for the production of biofuels and value-added products: Opportunities and challenges. , 2020, The Science of the total environment.

[42]  B. Singh,et al.  Analysis of CCD and CMOS Sensor Based Images from Technical and Photographic Aspects , 2020 .

[43]  G. Bueno,et al.  Modern Trends in Diatom Identification: Fundamentals and Applications , 2020 .

[44]  H. Zabed,et al.  Biogas from microalgae: Technologies, challenges and opportunities , 2020 .

[45]  Gulshan Kumar,et al.  A Survey of Deep Learning and Its Applications: A New Paradigm to Machine Learning , 2019, Archives of Computational Methods in Engineering.

[46]  I. Yamamoto,et al.  Early Detection System of Harmful Algal Bloom Using Drones and Water Sample Image Recognition , 2019 .

[47]  Daniel C W Tsang,et al.  Bioremediation of water containing pesticides by microalgae: Mechanisms, methods, and prospects for future research. , 2019, The Science of the total environment.

[48]  Si Zhang,et al.  Graph convolutional networks: a comprehensive review , 2019, Computational Social Networks.

[49]  X. Miao,et al.  Recent advances in biorefinery of astaxanthin from Haematococcus pluvialis. , 2019, Bioresource technology.

[50]  Fumihito Arai,et al.  A practical guide to intelligent image-activated cell sorting , 2019, Nature Protocols.

[51]  C. Park,et al.  Algal Morphological Identification in Watersheds for Drinking Water Supply Using Neural Architecture Search for Convolutional Neural Network , 2019, Water.

[52]  Mohammad A. Qasaimeh,et al.  Cell Cytometry: Review and Perspective on Biotechnological Advances , 2019, Front. Bioeng. Biotechnol..

[53]  Pakaket Wattuya,et al.  A New Shape Descriptor and Segmentation Algorithm for Automated Classifying of Multiple-morphological Filamentous Algae , 2019, ICCS.

[54]  Ausif Mahmood,et al.  Review of Deep Learning Algorithms and Architectures , 2019, IEEE Access.

[55]  P. Show,et al.  Microalgae: A potential alternative to health supplementation for humans , 2019, Food Science and Human Wellness.

[56]  A. I. Aleksanin,et al.  Pseudo-nitzschia species (Bacillariophyceae) and the domoic acid concentration in Pseudo-nitzschia cultures and bivalves from the northwestern Sea of Japan, Russia , 2019, Nova Hedwigia.

[57]  Stavros Stavrakis,et al.  High-throughput microfluidic imaging flow cytometry. , 2019, Current opinion in biotechnology.

[58]  V. Ediger An integrated review and analysis of multi-energy transition from fossil fuels to renewables , 2019, Energy Procedia.

[59]  Nawal Soliman ALKolifi ALEnezi,et al.  A Method Of Skin Disease Detection Using Image Processing And Machine Learning , 2019, Procedia Computer Science.

[60]  H. Ahmadzadeh,et al.  Production of Microalgae-Derived High-Protein Biomass to Enhance Food for Animal Feedstock and Human Consumption , 2019, Advanced Bioprocessing for Alternative Fuels, Biobased Chemicals, and Bioproducts.

[61]  Luca Dall’Osto,et al.  Biomass from microalgae: the potential of domestication towards sustainable biofactories , 2018, Microbial Cell Factories.

[62]  Nilanjan Dey,et al.  A Beginner's Guide to Image Preprocessing Techniques , 2018 .

[63]  Vittorio Bianco,et al.  A deep learning-enabled portable imaging flow cytometer for cost-effective, high-throughput, and label-free analysis of natural water samples , 2018, Light: Science & Applications.

[64]  Fumihito Arai,et al.  Intelligent Image-Activated Cell Sorting , 2018, Cell.

[65]  Makoto Yamada,et al.  High-throughput imaging flow cytometry by optofluidic time-stretch microscopy , 2018, Nature Protocols.

[66]  Cheng Lei,et al.  Optofluidic time-stretch microscopy: recent advances , 2018 .

[67]  David J. Hill,et al.  Combining image processing and machine learning to identify invasive plants in high-resolution images , 2018 .

[68]  Duu-Jong Lee,et al.  Sustainable approaches for algae utilisation in bioenergy production , 2017, Renewable Energy.

[69]  S. Perumal,et al.  Preprocessing by Contrast Enhancement Techniques for Medical Images , 2018 .

[70]  Hyun Soo Kim,et al.  Microfluidic systems for microalgal biotechnology: A review , 2017 .

[71]  Silvia Silva da Costa Botelho,et al.  Deep Learning for Microalgae Classification , 2017, 2017 16th IEEE International Conference on Machine Learning and Applications (ICMLA).

[72]  André Carlos Ponce de Leon Ferreira de Carvalho,et al.  Deep learning for biological image classification , 2017, Expert Syst. Appl..

[73]  Xiao Chen,et al.  Progress of microalgae biofuel’s commercialization , 2017 .

[74]  Nalin Kumar,et al.  Noise Removal and Filtering Techniques used in Medical Images , 2017 .

[75]  I. Stonik,et al.  Morphology and molecular phylogeny of Pseudohaptolina sorokinii sp. nov. (Prymnesiales, Haptophyta) from the Sea of Japan, Russia , 2016 .

[76]  Andrea Carolina Monaldi,et al.  Rolling Shutter Effect aberration compensation in Digital Holographic Microscopy , 2016 .

[77]  Michael S. Lew,et al.  Deep learning for visual understanding: A review , 2016, Neurocomputing.

[78]  T. Orlova,et al.  Detection of Dinophysistoxin-1 in Clonal Culture of Marine Dinoflagellate Prorocentrum foraminosum (Faust M.A., 1993) from the Sea of Japan , 2015, Toxins.

[79]  Brijendra Kumar Joshi,et al.  A Review Paper: Noise Models in Digital Image Processing , 2015, ArXiv.

[80]  Kil-Nam Kim,et al.  Phylogenetic analysis of microalgae based on highly abundant proteins using mass spectrometry. , 2015, Talanta.

[81]  Pakaket Wattuya,et al.  Automated Microalgae Image Classification , 2014, ICCS.

[82]  Primo Coltelli,et al.  Automatic and real time recognition of microalgae by means of pigment signature and shape. , 2013, Environmental science. Processes & impacts.

[83]  Zahir M. Hussain,et al.  Automatic facial expression recognition: feature extraction and selection , 2010, Signal, Image and Video Processing.

[84]  Huazhong Shu,et al.  Fast Computation of Tchebichef Moments for Binary and Grayscale Images , 2010, IEEE Transactions on Image Processing.

[85]  Michael Hannon,et al.  Biofuels from algae: challenges and potential , 2010, Biofuels.

[86]  N. S. Raghuwanshi,et al.  Artificial neural networks approach in evapotranspiration modeling: a review , 2010, Irrigation Science.

[87]  D. Anderson,et al.  Morphogenetic and toxin composition variability of Alexandrium tamarense (Dinophyceae) from the east coast of Russia , 2007 .

[88]  Eric C. Henry,et al.  HANDBOOK OF MICROALGAL CULTURE: BIOTECHNOLOGY AND APPLIED PHYCOLOGY , 2004 .

[89]  M. Bayer,et al.  Digital microscopy in phycological research, with special reference to microalgae , 2001 .