We've developed ILCD, a VQA model for crop diseases, integrating coattention, MUTAN, and BiBa. Our new CDwPK-VQA dataset includes multi-attribute info. ILCD achieves 86.06% accuracy on CDwPK-VQA, outperforming others.
Details: doi.org/10.34133/plantβ¦
22.05.2025 03:08 β π 0 π 0 π¬ 0 π 0
We integrated hyperspectral & metabolomic data to identify salt-tolerant Medicago truncatula mutants. By combining data & using upper-level metabolomics, we achieved high efficiency & accuracy.
Details: doi.org/10.1016/j.plapβ¦
15.05.2025 15:09 β π 0 π 0 π¬ 0 π 0
New study uses 3D RTM & LiDAR to analyze light in larch plantations. Crown volume key for APAR, while competition still impacts. Combining tech helps optimize forest structure & guide precise management. #forestry #ecology
Details: spj.science.org/doi/10.34133/pβ¦
07.04.2025 14:58 β π 0 π 0 π¬ 0 π 0
New study uses YOLO v5, ResNet50, and DeepSORT models to analyze rice panicle traits via time - series images. Results show high accuracy in panicle counting and heading date estimation.
Details: spj.science.org/doi/10.34133/pβ¦
07.04.2025 14:58 β π 0 π 0 π¬ 0 π 0
Boosting rice yield via enhanced photosynthesis! New study uses sun-induced chlorophyll fluorescence (SIF) to accurately estimate key traits like Vcmax and gs. π±π #agritech #photosynthesis #cropscience
Details: spj.science.org/doi/10.34133/pβ¦
07.04.2025 14:57 β π 0 π 0 π¬ 0 π 0
New study proposes ALAEM algorithm to measure maize leaf orientation via RGB images. It shows leaf orientation varies by sowing density, row spacing, and genotype, impacting light interception.
Details: spj.science.org/doi/10.34133/pβ¦
31.03.2025 14:49 β π 1 π 0 π¬ 0 π 0
We propose PLPNet for precise tomato leaf disease detection. It uses perceptual adaptive convolution, location reinforcement attention, and proximity feature aggregation to tackle challenges like soil interference. Details: spj.science.org/doi/10.34133/pβ¦
31.03.2025 14:48 β π 0 π 0 π¬ 0 π 0
New study: DC2Net detects Asian soybean rust early using hyperspectral imaging & deep learning. It combines deformable & dilated convolutions, achieving 96.73% accuracy. #CropDisease
Details: spj.science.org/doi/10.34133/pβ¦
31.03.2025 14:47 β π 1 π 0 π¬ 0 π 0
New study uses AI & citizen science w/ smartphones to count coffee cherries on trees. Tested in Peru & Colombia, it shows promising results for scalable, low-cost crop monitoring in low-income regions. #AI #Coffee #CitizenScience
Details: spj.science.org/doi/10.34133/pβ¦
31.03.2025 14:47 β π 0 π 0 π¬ 0 π 0
Hyperspectral imaging + machine learning = game-changing tool for analyzing pigments in Neopyropia! Fast, nondestructive, and accurate phenotyping of phycoerythrin, phycocyanin, allophycocyanin.
Details: spj.science.org/doi/10.34133/pβ¦
17.03.2025 15:03 β π 0 π 0 π¬ 0 π 0
MG-YOLO: A novel detection algorithm for gray mold spores in precision ag. Combines Multi-head self-attention, BiFPN, and GhostCSP for high accuracy and speed. Achieves 0.983 accuracy in 0.009s/image, outperforming YOLOv5 by 6.8%.
Details: spj.science.org/doi/10.34133/pβ¦
17.03.2025 15:03 β π 0 π 1 π¬ 0 π 0
PanicleNeRF uses smartphone videos to create 3D rice panicle models in fields. Combining SAM and YOLOv8, it achieves high segmentation accuracy and outperforms traditional methods. #Reconstruction
Details: spj.science.org/doi/10.34133/pβ¦
17.03.2025 15:02 β π 0 π 1 π¬ 0 π 0
New VQA model for crop disease detection! ILCD uses co-attention, MUTAN, and bias balancing to identify disease stages. Achieves 86.06% accuracy on CDwPK-VQA dataset. Check it out: github.com/SdustZYP/ILCD-β¦
Details: spj.science.org/doi/10.34133/pοΏ½οΏ½οΏ½
12.03.2025 12:02 β π 1 π 1 π¬ 0 π 0
New study improves LNC retrieval in Ginkgo trees using modified ratio indices & advanced BRF spectra methods. Results show enhanced accuracy & highlight potential for better nitrogen status assessment. #LeafNitrogen #RemoteSensing
Details: spj.science.org/doi/10.34133/pβ¦
12.03.2025 12:02 β π 0 π 0 π¬ 0 π 0
New study develops LNA estimation model for wheat using UAV & hyperspectral data. Models consider vertical heterogeneity, improving accuracy. RF-LNASum model shows best results with 17.8% error.
Details: spj.science.org/doi/10.34133/pβ¦
12.03.2025 12:02 β π 0 π 0 π¬ 0 π 0
New study uses field excavation & 3D digitization to analyze grapevine root systems, revealing genotype-specific water uptake. Excavation & in situ digitization are accurate, despite some fine root length underestimation. #Sustainableagriculture
Details: spj.science.org/doi/10.34133/pβ¦
12.03.2025 12:01 β π 0 π 0 π¬ 0 π 0
Using drones & deep learning, we measured plant maturity, stand count, & height in fields. CNN-LSTM models improved maturity prediction. This tech offers accuracy & cost savings over traditional methods. #DeepLearning
Details: spj.science.org/doi/10.34133/pβ¦
12.03.2025 12:01 β π 0 π 0 π¬ 0 π 0
We studied Phragmites australis & Typha orientalis to understand their canopy structure and solar radiation patterns. Key findings: layered solar radiation transmittance is more sensitive to canopy structure than pigments.
Details: spj.science.org/doi/10.34133/pβ¦
10.03.2025 11:52 β π 0 π 0 π¬ 0 π 0
We propose using low-altitude aerial photography to create 3D point clouds and multispectral images of wheat plots. This helps extract dynamic digital phenotypes for genome-wide association studies. #Wheatplot #Image
Details: spj.science.org/doi/10.34133/pβ¦
10.03.2025 11:52 β π 0 π 0 π¬ 0 π 0
Introducing CHCNet: A unified model for counting cereal crops like maize, rice, sorghum, and wheat using few-shot learning. It reduces labeling costs and enhances cross-crop generalization. Check it out at cerealcropnet.com
Details: spj.science.org/doi/10.34133/pβ¦
10.03.2025 11:51 β π 0 π 0 π¬ 0 π 0
New AI model for plant disease diagnostics outperforms GPT-4! Uses 3 stages of image-text alignment to generate accurate phenotypic descriptions. Check it out: plantext.samlab.cn #ChartGPT
Details: spj.science.org/doi/10.34133/pβ¦
10.03.2025 11:51 β π 2 π 0 π¬ 0 π 0
Our study explores nitrogen responsiveness in wheat using drone phenotyping & machine learning. We quantify traits, map genetic components, and classify varieties for optimized N use. #nitrogen
Details: spj.science.org/doi/10.34133/pβ¦
04.03.2025 11:42 β π 0 π 0 π¬ 0 π 0
Exploring plant drought response? Chlorophyll fluorescence beats spectral reflectance in reliability. But using both methods together offers best insights. Study on tobacco & barley leaves shows the way! #ClimateChange #PlantScience
Details: spj.science.org/doi/10.34133/pβ¦
04.03.2025 11:42 β π 0 π 0 π¬ 0 π 0
πΎ CSNet revolutionizes wheat breeding! πΎ Our count-supervised network uses quantity info to accurately count wheat ears without location data. Boosting yield & reducing costs! ππ± Learn more #AgTech #AI #FoodSecurity
Details: spj.science.org/doi/10.34133/pβ¦
04.03.2025 11:41 β π 0 π 0 π¬ 0 π 0
Using AI and computer vision, we developed models to detect sorghum panicles and estimate grain numbers from smartphone images. Our Sorghum-Net model achieved a 17% error rate, paving the way for efficient crop yield estimation.
Details: spj.science.org/doi/10.34133/pβ¦
04.03.2025 11:41 β π 1 π 0 π¬ 0 π 0
Studying root systems with germination papers offers high resolution but lacks natural conditions. Using FSPMs and RhizoVision, we analyzed Populus trichocarpa roots, finding thermal time correlation and varying 2D/3D accuracy.
Details: spj.science.org/doi/10.34133/pβ¦
04.03.2025 11:41 β π 0 π 1 π¬ 0 π 0
We evaluated a novel 2-step workflow for automated root system architecture (RSA) reconstruction from MRI images. U-Net segmentation doubled reconstruction speed and increased root length in low CNR images.
Details: spj.science.org/doi/10.34133/pβ¦
27.02.2025 11:21 β π 3 π 2 π¬ 0 π 0
Sugarcane, a major global food and bioenergy crop, is produced mostly in Brazil and India. Its breeding is slow and challenging due to its complex genome and long selection process.
Details: spj.science.org/doi/10.34133/pβ¦
27.02.2025 11:20 β π 1 π 0 π¬ 0 π 0
Deep learning models for plant trait analysis need annotated datasets, which are labor-intensive to create. Our Helios 3D framework generates labeled synthetic plant images, easing data collection.
Details: spj.science.org/doi/10.34133/pβ¦
27.02.2025 11:20 β π 0 π 0 π¬ 0 π 0
New study uses UAVs and deep learning to accurately detect maize tassels pre- and post-detasseling. Optimized models achieve 94.5% avg precision, with blocking strategies boosting accuracy to 98%. #agritech #maizehybridization
Details: spj.science.org/doi/10.34133/pβ¦
27.02.2025 11:20 β π 0 π 0 π¬ 0 π 0
POLITICALLY INDEPENDENT | PRO-DEMOCRACY | ANTI FASCIST | LAW & ORDER | CLIMATE CHANGE | PRO-CHOICE | GUN REFORM | RESIST | FUCK PUTIN | ππππππππ
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PhD candidate in Biochem @okstate I am currently working on the membrane receptor-like kinases in legume-rhizobia communication. I am rethinking my research topic in the future.
@Helmholtz-munich.de - Research Unit Environmental Simulation (EUS) | Prof @UniFreiburg | VOCs | fungi | plants & climate change | metabolomics | chemical ecology | privately here for democracy | views are my own
https://orcid.org/0000-0002-9825-867X
BlueSky account for https://botany.one the weblog of the Annals of Botany Company. Non-Profit All Science since 1887.
Posts by @alunsalt.bsky.social or @caordonezparra.bsky.social and scheduled well in advance through Buffer.
Australian Research Council funded research centre bringing together #plant scientists, mathematical modellers, crop breeders, and legal experts to achieve #PlantSuccess π±π§¬ππΎ
www.plantsuccess.org
May the #Roots be with you!
Associate Professor @ UCLouvain.
#OpenSci #SciComm #plant #drought #cereals #gamification #bread #teaching. π©βπ¦°π© #dad.
#StandUpForScience
Pronoms : he/him
Personal webiste : https://www.guillaumelobet.be/
International journal publishing novel and rigorous research in all areas of plant science, managed by the Annals of Botany Company, a not-for-profit educational charity.
NPEC offers high throughput and high resolution data from plants both above and below ground
PhD student in the Computational Plant Science (Bucksch) Lab at the University of Arizona.
I focus on the role of root-root interactions in driving root architectural phenotypes!
It's time to modernize tissue culture & transformation!
PlantGENE is an NSF-funded RCN for community collaboration, knowledge sharing & training
How root anatomy influences plant water uptake ?
PhD student | Bioengineer & Data Scientist | In Silico analysis
Postdoctoral researcher @ Ghent University working on measuring fertilizer requirements in plants
Assistant professor at Utrecht University
Community, functional, and chemical ecology | Biodiversity | Global change | Plant-soil interactions | Root phenotyping | Editor for Plant and Soil and Journal of Ecology
Webpage: https://www.uu.nl/staff/BMMDelory
The Queensland Alliance for Agriculture and Food Innovation is a research institute of The University of Queensland, established with and supported by The Department of Primary Industries. Crops, horticulture, animal and food science.
qaafi.uq.edu.
Scientist at Oak Ridge National Laboratory. Autonomous discovery, roots, plants, soil, and phenomics. My opinions. Life is a garden.
www.phenotyper.com
PhD researcher in Evolutionary Genetics at the ARC Centre of Excellence for Plant Success and The University of Queensland.
Plant molecular biologist & AI Task Force member @AIT Austrian Institute of Technology | Bioinformatics MSc | Nature & sports lover
www.zubaplants.com - Native Plants and More - Buffalo, NY
Open-access, peer-reviewed journal in systematic botany.
Publishes new taxa, revisions, checklists, data papers & more from any geological age and any part of the world.
Published by @pensoft.net. Powered by ARPHA.
Website: phytokeys.pensoft.net
University of Pittsburgh Ecology and Evolution Graduate StudentπΈπΊ Ashman Lab
Purdue University 24β Plant Science and Microbioπ§«