Machine learning methods for efficient and automated in situ monitoring of peach flowering phenology

[1]  Yuan Cheng,et al.  Quantitative Extraction and Evaluation of Tomato Fruit Phenotypes Based on Image Recognition , 2022, Frontiers in Plant Science.

[2]  R. Petit,et al.  Efficient monitoring of phenology in chestnuts , 2021 .

[3]  Milan Koreň,et al.  Assessment of Machine Learning Algorithms for Modeling the Spatial Distribution of Bark Beetle Infestation , 2021, Forests.

[4]  J. Callow,et al.  Satellite prediction of forest flowering phenology , 2021 .

[5]  Michael P. Pound,et al.  Predicting Plant Growth from Time-Series Data Using Deep Learning , 2021, Remote. Sens..

[6]  P. Ciais,et al.  Overestimation of the effect of climatic warming on spring phenology due to misrepresentation of chilling , 2020, Nature Communications.

[7]  M. Gatto,et al.  Shifts in the thermal niche of fruit trees under climate change: the case of peach cultivation in France , 2020, bioRxiv.

[8]  S. Song,et al.  Chilling and heat requirement of peach cultivars and changes in chilling accumulation spectrums based on 100-year records in Republic of Korea , 2020 .

[9]  Qi Yang,et al.  Real-time detection of rice phenology through convolutional neural network using handheld camera images , 2020, Precision Agriculture.

[10]  N Oses,et al.  Machine Learning for olive phenology prediction and base temperature optimisation , 2020, 2020 Global Internet of Things Summit (GIoTS).

[11]  Jingye Han,et al.  A near real-time deep learning approach for detecting rice phenology based on UAV images , 2020, Agricultural and Forest Meteorology.

[12]  Juan Ignacio Arribas,et al.  Weed Classification for Site-Specific Weed Management Using an Automated Stereo Computer-Vision Machine-Learning System in Rice Fields , 2020, Plants.

[13]  C. E. Santos,et al.  Development of Peach Flower Buds under Low Winter Chilling Conditions , 2020, Agronomy.

[14]  Andrej Ceglar,et al.  Detecting flowering phenology in oil seed rape parcels with Sentinel-1 and -2 time series , 2020, Remote sensing of environment.

[15]  D. Castellanos,et al.  Evaluation of a predictive model to configure an active packaging with moisture adsorption for fresh tomato , 2020 .

[16]  Kemal Adem,et al.  Automatic detection and classification of leaf spot disease in sugar beet using deep learning algorithms , 2019, Physica A: Statistical Mechanics and its Applications.

[17]  Hao Hu,et al.  Early detection of tomato spotted wilt virus infection in tobacco using the hyperspectral imaging technique and machine learning algorithms , 2019, Comput. Electron. Agric..

[18]  C. Zohner,et al.  Daylength helps temperate deciduous trees to leaf‐out at the optimal time , 2019, Global change biology.

[19]  Xiaolin Zhu,et al.  Plant phenology and global climate change: Current progresses and challenges , 2019, Global change biology.

[20]  Y. Rharrabti,et al.  Codification and description of almond (Prunus dulcis) vegetative and reproductive phenology according to the extended BBCH scale , 2019, Scientia Horticulturae.

[21]  Angelo Monteiro,et al.  A framework for predicting soft-fruit yields and phenology using embedded, networked microsensors, coupled weather models and machine-learning techniques , 2019, bioRxiv.

[22]  P. Martínez-Gómez,et al.  Monitoring Dormancy Transition in Almond [Prunus Dulcis (Miller) Webb] during Cold and Warm Mediterranean Seasons through the Analysis of a DAM (Dormancy-Associated MADS-Box) Gene , 2018, Horticulturae.

[23]  Henry Medeiros,et al.  Apple flower detection using deep convolutional networks , 2018, Comput. Ind..

[24]  P. Fearns,et al.  Simple remote sensing detection of Corymbia calophylla flowers using common 3 –band imaging sensors , 2018, Remote Sensing Applications: Society and Environment.

[25]  Ramona Walls,et al.  The Plant Phenology Ontology: A New Informatics Resource for Large-Scale Integration of Plant Phenology Data , 2018, Front. Plant Sci..

[26]  Jakub Nowosad,et al.  Machine learning modeling of plant phenology based on coupling satellite and gridded meteorological dataset , 2018, International Journal of Biometeorology.

[27]  T. Dejong,et al.  The phyllochron of well-watered and water deficit mature peach trees varies with shoot type and vigour , 2017, AoB PLANTS.

[28]  N. Akter,et al.  Heat stress effects and management in wheat. A review , 2017, Agronomy for Sustainable Development.

[29]  V. Mitre,et al.  Sweet Cherry (Prunus avium L.) and Peach (Prunus persica L.) Phenological Growth Stages According to BBCH Scale , 2017 .

[30]  Javier Rodrigo,et al.  Flower development in sweet cherry framed in the BBCH scale , 2015 .

[31]  Olivier Merlin,et al.  Consistency between In Situ, Model-Derived and High-Resolution-Image-Based Soil Temperature Endmembers: Towards a Robust Data-Based Model for Multi-Resolution Monitoring of Crop Evapotranspiration , 2015, Remote. Sens..

[32]  A. Menzel,et al.  Does flower phenology mirror the slowdown of global warming? , 2015, Ecology and evolution.

[33]  Ute Roessner,et al.  Detection of QTL for metabolic and agronomic traits in wheat with adjustments for variation at genetic loci that affect plant phenology. , 2015, Plant science : an international journal of experimental plant biology.

[34]  S. Ninomiya,et al.  Automated characterization of flowering dynamics in rice using field-acquired time-series RGB images , 2015, Plant Methods.

[35]  Marcos Prunello,et al.  Comparison of methods for estimation of chilling and heat requirements of nectarine and peach genotypes for flowering , 2014 .

[36]  P. Martínez-Gómez,et al.  Recent advancements to study flowering time in almond and other Prunus species , 2014, Front. Plant Sci..

[37]  Annette Menzel,et al.  Chilling outweighs photoperiod in preventing precocious spring development , 2014, Global change biology.

[38]  V. Galán Saúco,et al.  Phenological growth stages of mango (Mangifera indica L.) according to the BBCH scale , 2011 .

[39]  Deborah Estrin,et al.  Public Internet‐connected cameras used as a cross‐continental ground‐based plant phenology monitoring system , 2010 .

[40]  Witold R. Rudnicki,et al.  Feature Selection with the Boruta Package , 2010 .

[41]  Michael A. Crimmins,et al.  Monitoring Plant Phenology Using Digital Repeat Photography , 2008, Environmental management.

[42]  D. R. Walker,et al.  A Model for Estimating the Completion of Rest for ‘Redhaven’ and ‘Elberta’ Peach Trees1 , 1974, HortScience.

[43]  Kaiqiong Sun,et al.  Apple, peach, and pear flower detection using semantic segmentation network and shape constraint level set , 2021, Comput. Electron. Agric..

[44]  F. Hao,et al.  Integrated phenology and climate in rice yields prediction using machine learning methods , 2021 .