keyword
https://read.qxmd.com/read/38475592/a-comparative-analysis-of-xgboost-and-neural-network-models-for-predicting-some-tomato-fruit-quality-traits-from-environmental-and-meteorological-data
#21
JOURNAL ARTICLE
Oussama M'hamdi, Sándor Takács, Gábor Palotás, Riadh Ilahy, Lajos Helyes, Zoltán Pék
The tomato as a raw material for processing is globally important and is pivotal in dietary and agronomic research due to its nutritional, economic, and health significance. This study explored the potential of machine learning (ML) for predicting tomato quality, utilizing data from 48 cultivars and 28 locations in Hungary over 5 seasons. It focused on °Brix, lycopene content, and colour (a/b ratio) using extreme gradient boosting (XGBoost) and artificial neural network (ANN) models. The results revealed that XGBoost consistently outperformed ANN, achieving high accuracy in predicting °Brix (R² = 0...
March 6, 2024: Plants (Basel, Switzerland)
https://read.qxmd.com/read/38475157/temporal-stability-of-management-zone-patterns-case-study-with-contact-and-non-contact-soil-electrical-conductivity-sensors-in-dryland-pastures
#22
JOURNAL ARTICLE
João Serrano, Shakib Shahidian, José Marques da Silva, Luís L Paniágua, Francisco J Rebollo, Francisco J Moral
Precision agriculture (PA) intends to validate technological tools that capture soil and crop spatial variability, which constitute the basis for the establishment of differentiated management zones (MZs). Soil apparent electrical conductivity (ECa ) sensors are commonly used to survey soil spatial variability. It is essential for surveys to have temporal stability to ensure correct medium- and long-term decisions. The aim of this study was to assess the temporal stability of MZ patterns using different types of ECa sensors, namely an ECa contact-type sensor (Veris 2000 XA, Veris Technologies, Salina, KS, USA) and an electromagnetic induction sensor (EM-38, Geonics Ltd...
March 1, 2024: Sensors
https://read.qxmd.com/read/38474945/the-design-and-experimentation-of-a-corn-moisture-detection-device-based-on-double-capacitors
#23
JOURNAL ARTICLE
Changjie Han, Yurong Wang, Zhai Shi, Yang Xu, Shilong Qiu, Hanping Mao
Detecting the moisture content of grain accurately and rapidly has important significance for harvesting, transport, storage, processing, and precision agriculture. There are some problems with the slow detection speeds, unstable detection, and low detection accuracy of moisture contents in corn harvesters. In that case, an online moisture detection device was designed, which is based on double capacitors. A new method of capacitance complementation and integration was proposed to eliminate the limitation of single data...
February 22, 2024: Sensors
https://read.qxmd.com/read/38474904/identification-of-olives-using-in-field-hyperspectral-imaging-with-lightweight-models
#24
JOURNAL ARTICLE
Samuel Domínguez-Cid, Diego Francisco Larios, Julio Barbancho, Francisco Javier Molina, Javier Antonio Guerra, Carlos León
During the growing season, olives progress through nine different phenological stages, starting with bud development and ending with senescence. During their lifespan, olives undergo changes in their external color and chemical properties. To tackle these properties, we used hyperspectral imaging during the growing season of the olives. The objective of this study was to develop a lightweight model capable of identifying olives in the hyperspectral images using their spectral information. To achieve this goal, we utilized the hyperspectral imaging of olives while they were still on the tree and conducted this process throughout the entire growing season directly in the field without artificial light sources...
February 20, 2024: Sensors
https://read.qxmd.com/read/38455562/crop-mapping-in-smallholder-farms-using-unmanned-aerial-vehicle-imagery-and-geospatial-cloud-computing-infrastructure
#25
JOURNAL ARTICLE
Shaeden Gokool, Maqsooda Mahomed, Kiara Brewer, Vivek Naiken, Alistair Clulow, Mbulisi Sibanda, Tafadzwanashe Mabhaudhi
Smallholder farms are major contributors to agricultural production, food security, and socio-economic growth in many developing countries. However, they generally lack the resources to fully maximize their potential. Subsequently they require innovative, evidence-based and lower-cost solutions to optimize their productivity. Recently, precision agricultural practices facilitated by unmanned aerial vehicles (UAVs) have gained traction in the agricultural sector and have great potential for smallholder farm applications...
March 15, 2024: Heliyon
https://read.qxmd.com/read/38444536/identification-of-cotton-pest-and-disease-based-on-cfnet-vov-gcsp-lsknet-yolov8s-a-new-era-of-precision-agriculture
#26
JOURNAL ARTICLE
Rujia Li, Yiting He, Yadong Li, Weibo Qin, Arzlan Abbas, Rongbiao Ji, Shuang Li, Yehui Wu, Xiaohai Sun, Jianping Yang
INTRODUCTION: The study addresses challenges in detecting cotton leaf pests and diseases under natural conditions. Traditional methods face difficulties in this context, highlighting the need for improved identification techniques. METHODS: The proposed method involves a new model named CFNet-VoV-GCSP-LSKNet-YOLOv8s. This model is an enhancement of YOLOv8s and includes several key modifications: (1) CFNet Module. Replaces all C2F modules in the backbone network to improve multi-scale object feature fusion...
2024: Frontiers in Plant Science
https://read.qxmd.com/read/38439983/uav-hyperspectral-analysis-of-secondary-salinization-in-arid-oasis-cotton-fields-effects-of-fod-feature-selection-and-soa-rf
#27
JOURNAL ARTICLE
Zeyuan Wang, Jianli Ding, Jiao Tan, Junhao Liu, Tingting Zhang, Weijian Cai, Shanshan Meng
Secondary salinization is a crucial constraint on agricultural progress in arid regions. The specific mulching irrigation technique not only exacerbates secondary salinization but also complicates field-scale soil salinity monitoring. UAV hyperspectral remote sensing offers a monitoring method that is high-precision, high-efficiency, and short-cycle. In this study, UAV hyperspectral images were used to derive one-dimensional, textural, and three-dimensional feature variables using Competitive adaptive reweighted sampling (CARS), Gray-Level Co-occurrence Matrix (GLCM), Boruta Feature Selection (Boruta), and Brightness-Color-Index (BCI) with Fractional-order differentiation (FOD) processing...
2024: Frontiers in Plant Science
https://read.qxmd.com/read/38434432/bi-directional-hyperspectral-reconstruction-of-cherry-tomato-diagnosis-of-internal-tissues-maturation-stage-and-composition
#28
JOURNAL ARTICLE
Renan Tosin, Mario Cunha, Filipe Monteiro-Silva, Filipe Santos, Teresa Barroso, Rui Martins
INTRODUCTION: Precision monitoring maturity in climacteric fruits like tomato is crucial for minimising losses within the food supply chain and enhancing pre- and post-harvest production and utilisation. OBJECTIVES: This paper introduces an approach to analyse the precision maturation of tomato using hyperspectral tomography-like. METHODS: A novel bi-directional spectral reconstruction method is presented, leveraging visible to near-infrared (Vis-NIR) information gathered from tomato spectra and their internal tissues (skin, pulp, and seeds)...
2024: Frontiers in Plant Science
https://read.qxmd.com/read/38432369/from-field-to-table-ensuring-food-safety-by-reducing-pesticide-residues-in-food
#29
REVIEW
Salman Munir, Asad Azeem, Muhammad Sikandar Zaman, Muhammad Zia Ul Haq
The present review addresses the significance of lowering pesticide residue levels in food items because of their harmful impacts on human health, wildlife populations, and the environment. It draws attention to the possible health risks-acute and chronic poisoning, cancer, unfavorable effects on reproduction, and harm to the brain or immunological systems-that come with pesticide exposure. Numerous traditional and cutting-edge methods, such as washing, blanching, peeling, thermal treatments, alkaline electrolyzed water washing, cold plasma, ultrasonic cleaning, ozone treatment, and enzymatic treatment, have been proposed to reduce pesticide residues in food products...
March 1, 2024: Science of the Total Environment
https://read.qxmd.com/read/38427607/tommicronet-convolutional-neural-networks-for-smartphone-based-microscopic-detection-of-tomato-biotic-and-abiotic-plant-health-issues
#30
JOURNAL ARTICLE
Sruthi Sentil, Manoj Choudhary, Mubin Tirsaiwala, Sandeep Rvs, Vignesh Mahalingam Suresh, Chacko Jacob, Mathews Paret
The image-based detection and classification of plant diseases has become increasingly important to the development of precision agriculture. We consider the case of tomato, a high-value crop supporting the livelihoods of many farmers around the world. Many biotic and abiotic plant health issues impede the efficient production of this crop, and laboratory-based diagnostics are inaccessible in many remote regions. Early detection of these plant health issues is essential for efficient and accurate response, prompting exploration of alternatives for field detection...
March 1, 2024: Phytopathology
https://read.qxmd.com/read/38424155/end-to-end-multimodal-3d-imaging-and-machine-learning-workflow-for-non-destructive-phenotyping-of-grapevine-trunk-internal-structure
#31
JOURNAL ARTICLE
Romain Fernandez, Loïc Le Cunff, Samuel Mérigeaud, Jean-Luc Verdeil, Julie Perry, Philippe Larignon, Anne-Sophie Spilmont, Philippe Chatelet, Maïda Cardoso, Christophe Goze-Bac, Cédric Moisy
Quantifying healthy and degraded inner tissues in plants is of great interest in agronomy, for example, to assess plant health and quality and monitor physiological traits or diseases. However, detecting functional and degraded plant tissues in-vivo without harming the plant is extremely challenging. New solutions are needed in ligneous and perennial species, for which the sustainability of plantations is crucial. To tackle this challenge, we developed a novel approach based on multimodal 3D imaging and artificial intelligence-based image processing that allowed a non-destructive diagnosis of inner tissues in living plants...
February 29, 2024: Scientific Reports
https://read.qxmd.com/read/38410449/cover-crop-root-exudates-impact-soil-microbiome-functional-trajectories-in-agricultural-soils
#32
Valerie A Seitz, Bridget B McGivern, Mikayla A Borton, Jacqueline M Chaparro, Meagan E Schipanski, Jessica E Prenni, Kelly C Wrighton
Background Cover cropping is an agricultural practice that uses secondary crops to support the growth of primary crops through various mechanisms including erosion control, weed suppression, nutrient management, and enhanced biodiversity. Cover crops may elicit some of these ecosystem services through chemical interactions with the soil microbiome via root exudation, or the release of plant metabolites from roots. Phytohormones are one metabolite type exuded by plants that activate the rhizosphere microbiome, yet managing this chemical interaction remains an untapped mechanism for optimizing plant-soil microbiome interactions...
February 16, 2024: Research Square
https://read.qxmd.com/read/38405590/editorial-recent-advances-in-big-data-machine-and-deep-learning-for-precision-agriculture
#33
EDITORIAL
Marcin Woźniak, Muhammad Fazal Ijaz
No abstract text is available yet for this article.
2024: Frontiers in Plant Science
https://read.qxmd.com/read/38405583/improving-u-net-network-for-semantic-segmentation-of-corns-and-weeds-during-corn-seedling-stage-in-field
#34
JOURNAL ARTICLE
Jiapeng Cui, Feng Tan, Nan Bai, Yaping Fu
INTRODUCTION: Weeds are one of the main factors affecting crop growth, making weed control a pressing global problem. In recent years, interest in intelligent mechanical weed-control equipment has been growing. METHODS: We propose a semantic segmentation network, RDS_Unet, based on corn seedling fields built upon an improved U-net network. This network accurately recognizes weeds even under complex environmental conditions, facilitating the use of mechanical weeding equipment for reducing weed density...
2024: Frontiers in Plant Science
https://read.qxmd.com/read/38403150/cultivating-a-sustainable-future-in-the-artificial-intelligence-era-a-comprehensive-assessment-of-greenhouse-gas-emissions-and-removals-in-agriculture
#35
REVIEW
Morteza SaberiKamarposhti, Ng Kok Why, Mehdi Yadollahi, Hesam Kamyab, Jie Cheng, Majid Khorami
Agriculture is a leading sector in international initiatives to mitigate climate change and promote sustainability. This article exhaustively examines the removals and emissions of greenhouse gases (GHGs) in the agriculture industry. It also investigates an extensive range of GHG sources, including rice cultivation, enteric fermentation in livestock, and synthetic fertilisers and manure management. This research reveals the complex array of obstacles that are faced in the pursuit of reducing emissions and also investigates novel approaches to tackling them...
February 23, 2024: Environmental Research
https://read.qxmd.com/read/38401280/sensing-of-gene-expression-in-live-cells-using-electrical-impedance-spectroscopy-and-dna-functionalized-gold-nanoparticles
#36
JOURNAL ARTICLE
Kian Kadan-Jamal, Aakash Jog, Marios Sophocleous, Tali Dotan, Polina Frumin, Tamar Kuperberg Goshen, Silvia Schuster, Adi Avni, Yosi Shacham-Diamand
A novel electrical impedance spectroscopy-based method for non-destructive sensing of gene expression in living cells is presented. The approach used takes advantage of the robustness and responsiveness of electrical impedance spectroscopy and the highly specific and selective nature of DNA hybridization. The technique uses electrical impedance spectroscopy and gold nanoparticles functionalized with single-stranded DNA complementary to an mRNA of interest to provide reliable, real-time, and quantifiable data on gene expression in live cells...
January 16, 2024: Biosensors & Bioelectronics
https://read.qxmd.com/read/38400372/precision-agriculture-applied-to-harvesting-operations-through-the-exploitation-of-numerical-simulation
#37
JOURNAL ARTICLE
Federico Cheli, Ahmed Khaled Mohamed Abdelaziz, Stefano Arrigoni, Francesco Paparazzo, Marco Pezzola
When it comes to harvesting operations, precision agriculture needs to consider both combine harvester technology and the precise execution of the process to eliminate harvest losses and minimize out-of-work time. This work aims to propose a complete control framework defined by a two-layer-based algorithm and a simulation environment suitable for quantitative harvest loss, time, and consumption analyses. In detail, the path-planning layer shows suitable harvesting techniques considering field boundaries and irregularities, while the path-tracking layer presents a vision-guided Stanley Lateral Controller...
February 14, 2024: Sensors
https://read.qxmd.com/read/38378736/ercp-net-a-channel-extension-residual-structure-and-adaptive-channel-attention-mechanism-for-plant-leaf-disease-classification-network
#38
JOURNAL ARTICLE
Xiu Ma, Wei Chen, Yannan Xu
Plant leaf diseases are a major cause of plant mortality, especially in crops. Timely and accurately identifying disease types and implementing proper treatment measures in the early stages of leaf diseases are crucial for healthy plant growth. Traditional plant disease identification methods rely heavily on visual inspection by experts in plant pathology, which is time-consuming and requires a high level of expertise. So, this approach fails to gain widespread adoption. To overcome these challenges, we propose a channel extension residual structure and adaptive channel attention mechanism for plant leaf disease classification network (ERCP-Net)...
February 20, 2024: Scientific Reports
https://read.qxmd.com/read/38363835/all-organic-transparent-plant-e-skin-for-noninvasive-phenotyping
#39
JOURNAL ARTICLE
Yanqin Yang, Tianyiyi He, Pratibha Ravindran, Feng Wen, Pannaga Krishnamurthy, Luwei Wang, Zixuan Zhang, Prakash P Kumar, Eunyoung Chae, Chengkuo Lee
Real-time in situ monitoring of plant physiology is essential for establishing a phenotyping platform for precision agriculture. A key enabler for this monitoring is a device that can be noninvasively attached to plants and transduce their physiological status into digital data. Here, we report an all-organic transparent plant e-skin by micropatterning poly(3,4-ethylenedioxythiophene) polystyrene sulfonate (PEDOT:PSS) on polydimethylsiloxane (PDMS) substrate. This plant e-skin is optically and mechanically invisible to plants with no observable adverse effects to plant health...
February 16, 2024: Science Advances
https://read.qxmd.com/read/38351387/tree-based-algorithms-for-spatial-modeling-of-soil-particle-distribution-in-arid-and-semi-arid-region
#40
JOURNAL ARTICLE
Osman Abakay, Miraç Kılıç, Hikmet Günal, Orhan Mete Kılıç
Accurate estimation of particle size distribution across a large area is crucial for proper soil management and conservation, ensuring compatibility with capabilities and enabling better selection and adaptation of precision agricultural techniques. The study investigated the performance of tree-based models, ranging from simpler options like CART to sophisticated ones like XGBoost, in predicting soil texture over a wide geographic region. Models were constructed using remotely sensed plant and soil indexes as covariates...
February 14, 2024: Environmental Monitoring and Assessment
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