Early Detection of Aphid Infestation and Insect-Plant Interaction Assessment in Wheat Using a Low-Cost Electronic Nose (E-Nose), Near-Infrared Spectroscopy and Machine Learning Modeling
暂无分享,去创建一个
Claudia Gonzalez Viejo | Sigfredo Fuentes | Eden Jane Tongson | Ranjith R. Unnithan | S. Fuentes | R. Unnithan | E. Tongson | C. G. Viejo
[1] Kil-Nam Kim,et al. Advances in insect phototaxis and application to pest management: A review. , 2019, Pest management science.
[2] G. Jander,et al. Suppression of plant defenses by a Myzus persicae (green peach aphid) salivary effector protein. , 2014, Molecular plant-microbe interactions : MPMI.
[3] Claudia Gonzalez Viejo,et al. Development of Artificial Neural Network Models to Assess Beer Acceptability Based on Sensory Properties Using a Robotic Pourer: A Comparative Model Approach to Achieve an Artificial Intelligence System , 2019, Beverages.
[4] B. Kratky. A Suspended Pot, Non-Circulating Hydroponic Method , 2004 .
[5] J. Dillwith,et al. Salivary Proteins of Russian Wheat Aphid (Hemiptera: Aphididae) , 2010, Environmental entomology.
[6] S. Potts,et al. Economic valuation of natural pest control of the summer grain aphid in wheat in South East England , 2018 .
[7] F. Verheggen,et al. Insect pest monitoring with camera-equipped traps: strengths and limitations , 2020, Journal of Pest Science.
[8] B. Ludwig,et al. Quality Assessment of Growing Media with Near-Infrared Spectroscopy: Chemical Characteristics and Plant Assays , 2008 .
[9] Jun Wang,et al. Detection of age and insect damage incurred by wheat, with an electronic nose , 2007 .
[10] Yuanyuan Li,et al. Improving water-use efficiency by decreasing stomatal conductance and transpiration rate to maintain higher ear photosynthetic rate in drought-resistant wheat , 2017 .
[11] Population Dynamics of Drosophila suzukii (Diptera: Drosophilidae) in Berry Crops in Southern Brazil , 2019, Neotropical Entomology.
[12] Bo Xu,et al. Application of imidacloprid controlled-release granules to enhance the utilization rate and control wheat aphid on winter wheat , 2020 .
[13] P. Beck,et al. Detection of Xylella fastidiosa infection symptoms with airborne multispectral and thermal imagery: Assessing bandset reduction performance from hyperspectral analysis , 2020 .
[14] Claudia Gonzalez Viejo,et al. Emerging Technologies Based on Artificial Intelligence to Assess the Quality and Consumer Preference of Beverages , 2019, Beverages.
[15] Therese M. Poland,et al. Improved biosecurity surveillance of non-native forest insects: a review of current methods , 2018, Journal of Pest Science.
[16] A. Dixon,et al. Population dynamics of aphids , 1998 .
[17] Joel G. Burken,et al. Using artificial neural network to investigate physiological changes and cerium oxide nanoparticles and cadmium uptake by Brassica napus plants. , 2019, Environmental pollution.
[18] Emil W. Ciurczak,et al. Handbook of Near-Infrared Analysis , 1992 .
[19] Effects of Water Stress on Photosynthesis, Yield, and Water Use Efficiency in Winter Wheat , 2020, Water.
[20] A. Honěk,et al. Population Dynamics of Aphids on Cereals: Digging in the Time-Series Data to Reveal Population Regulation Caused by Temperature , 2014, PloS one.
[21] Heping Zhu,et al. Development of Fast E-nose System for Early-Stage Diagnosis of Aphid-Stressed Tomato Plants , 2019, Sensors.
[22] D. Landis,et al. An exponential growth model with decreasing r captures bottom‐up effects on the population growth of Aphis glycines Matsumura (Hemiptera: Aphididae) , 2007 .
[23] John Chambers,et al. Detection of mite infestation in wheat by electronic nose with transient flow sampling , 1999 .
[24] J. Hayes,et al. The Use of Hydroponics in Abiotic Stress Tolerance Research , 2012 .
[25] Davide Brunelli,et al. Energy Neutral Machine Learning Based IoT Device for Pest Detection in Precision Agriculture , 2019, IEEE Internet of Things Magazine.
[26] J. Iqbal,et al. Population Dynamics of Aphids ( Hemiptera : Aphididae ) on Wheat Varieties ( Triticum aestivum L . ) as Affected by Abiotic Conditions in Bahawalpur , Pakistan , 2016 .
[27] M. Pawłowska,et al. Biogas generation from insects breeding post production wastes , 2020 .
[28] Tom Fearn,et al. Practical Nir Spectroscopy With Applications in Food and Beverage Analysis , 1993 .
[29] Q. Ali,et al. PERFORMANCE OF SOME WHEAT CULTIVARS AGAINST APHID AND ITS DAMAGE ON YIELD AND PHOTOSYNTHESIS , 2019, Journal of Global Innovations in Agricultural and Social Sciences.
[30] Jayme Garcia Arnal Barbedo,et al. Detecting and Classifying Pests in Crops Using Proximal Images and Machine Learning: A Review , 2020, AI.
[31] Qing-Hao Meng,et al. Development of compact electronic noses: a review , 2021, Measurement Science and Technology.
[32] N. Moran,et al. Aphid genome expression reveals host–symbiont cooperation in the production of amino acids , 2011, Proceedings of the National Academy of Sciences.
[33] Marilton S. de Aguiar,et al. Identification of fruit fly in intelligent traps using techniques of digital image processing and machine learning , 2018, SAC.
[34] Celio Pasquini,et al. Determination of Hydrogen Peroxide by near Infrared Spectroscopy , 2003 .
[35] T. Saha,et al. Chemical ecology and pest management: A review , 2017 .
[36] Rafael Rieder,et al. A method for counting and classifying aphids using computer vision , 2020, Comput. Electron. Agric..
[37] Jun Wang,et al. Use of electronic nose technology for identifying rice infestation by Nilaparvata lugens , 2011 .
[38] Dejan Vujicic,et al. Prediction of Pest Insect Appearance Using Sensors and Machine Learning , 2021, Sensors.
[39] A. Honěk,et al. Comparison of Field Population Growths of Three Cereal Aphid Species on Winter Wheat , 2018 .
[40] Yanbo Huang,et al. Monitoring plant diseases and pests through remote sensing technology: A review , 2019, Comput. Electron. Agric..
[41] W. C. Hoffmann,et al. Identification of Stink Bugs Using an Electronic Nose , 2008 .
[42] P. Jasrotia,et al. Impact of integrated pest management (IPM) module on major insect-pests of wheat and their natural enemies in North-western plains of India , 2020 .
[43] Claudia Gonzalez Viejo,et al. Non-Invasive Tools to Detect Smoke Contamination in Grapevine Canopies, Berries and Wine: A Remote Sensing and Machine Learning Modeling Approach , 2019, Sensors.
[44] S. Tyerman,et al. Computational water stress indices obtained from thermal image analysis of grapevine canopies , 2012, Irrigation science.
[45] Eija Honkavaara,et al. Quantitative Remote Sensing at Ultra-High Resolution with UAV Spectroscopy: A Review of Sensor Technology, Measurement Procedures, and Data Correction Workflows , 2018, Remote. Sens..
[46] Hoam Chung,et al. Adaptive Estimation of Crop Water Stress in Nectarine and Peach Orchards Using High-Resolution Imagery from an Unmanned Aerial Vehicle (UAV) , 2017, Remote. Sens..
[47] Hua Yu,et al. Canopy-Level Photochemical Reflectance Index from Hyperspectral Remote Sensing and Leaf-Level Non-Photochemical Quenching as Early Indicators of Water Stress in Maize , 2017, Remote. Sens..
[48] Thenmozhi Kasinathan,et al. Machine learning ensemble with image processing for pest identification and classification in field crops , 2021, Neural Computing and Applications.
[49] S. Francesconi,et al. The modulation of stomatal conductance and photosynthetic parameters is involved in Fusarium head blight resistance in wheat , 2020, PloS one.
[50] Constantino Valero,et al. Automatic Detection and Monitoring of Insect Pests—A Review , 2020, Agriculture.
[51] N. Anjum,et al. Hydrogen peroxide potentiates defense system in presence of sulfur to protect chloroplast damage and photosynthesis of wheat under drought stress. , 2020, Physiologia plantarum.
[52] Heping Zhu,et al. Plant Pest Detection Using an Artificial Nose System: A Review , 2018, Sensors.
[53] Yong Liu,et al. Enhancement of Natural Control Function for Aphids by Intercropping and Infochemical Releasers in Wheat Ecosystem , 2020 .
[54] D. Jayas,et al. Feasibility of the application of electronic nose technology to detect insect infestation in wheat , 2013 .
[55] Claudia Gonzalez Viejo,et al. Integrating a Low-Cost Electronic Nose and Machine Learning Modelling to Assess Coffee Aroma Profile and Intensity , 2021, Sensors.
[56] M. Hoddle,et al. Use of Digital Video Cameras to Determine the Efficacy of Two Trap Types for Capturing Rhynchophorus palmarum (Coleoptera: Curculionidae) , 2020, Journal of Economic Entomology.
[57] Antonio Cellini,et al. Potential Applications and Limitations of Electronic Nose Devices for Plant Disease Diagnosis , 2017, Sensors.
[58] P.J. Zarco-Tejada,et al. Monitoring the incidence of Xylella fastidiosa infection in olive orchards using ground-based evaluations, airborne imaging spectroscopy and Sentinel-2 time series through 3-D radiative transfer modelling , 2020 .
[59] Mayumbo Nyirenda,et al. Developing an automatic identification and early warning and monitoring web based system of fall army worm based on machine learning in developing countries , 2019 .
[60] Sèmèvo Arnaud R. M. Ahouandjinou,et al. A Multi-level Smart Monitoring System by Combining an E-Nose and Image Processing for Early Detection of FAW Pest in Agriculture , 2020, InterSol.
[61] Wang Jiao,et al. Aphid Identification and Counting Based on Smartphone and Machine Vision , 2017 .
[62] Chun-Hou Zheng,et al. Recognition and counting of wheat mites in wheat fields by a three-step deep learning method , 2021, Neurocomputing.
[63] Sigfredo Fuentes,et al. Development of a low-cost e-nose to assess aroma profiles: An artificial intelligence application to assess beer quality , 2020 .
[64] S. Altizer,et al. Seasonal insect migrations: massive, influential, and overlooked , 2020, Frontiers in Ecology and the Environment.
[65] B. Sierra,et al. A Method for Detecting Coffee Leaf Rust through Wireless Sensor Networks, Remote Sensing, and Deep Learning: Case Study of the Caturra Variety in Colombia , 2020 .
[66] S. Fuentes,et al. A Digital Approach to Evaluate the Effect of Berry Cell Death on Pinot Noir Wines’ Quality Traits and Sensory Profiles Using Non-Destructive Near-Infrared Spectroscopy , 2020, Beverages.
[67] Bappa Das,et al. Thermal imaging and multivariate techniques for characterizing and screening wheat genotypes under water stress condition , 2020 .
[68] J. Simon,et al. Impact of water-deficit stress on tritrophic interactions in a wheat-aphid-parasitoid system , 2017, PloS one.