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#Classification

Latest posts tagged with #Classification on Bluesky

Posts tagged #Classification

Abstract:  The increasing concern about the presence of pesticides in vegetable leaves has underscored an urgent need for real-time, nondestructive, and accurate detection methods. Traditional methods are reliable but laboratory-based, costly, and unsuitable for field monitoring. In this study, we propose an efficient learning model pipeline that uses hyperspectral reflectance signatures to detect pesticide residue in plant leaves. We extract a comprehensive set of 39 domain-specific features based on vegetation indices, red-edge metrics, spectral statistics, and derivative profiles. To enhance the performance, use a multilayer perceptron to extract more features. A feature fusion module is used to combine both domain-specific features and features extracted by a multilayer perceptron. Further refinement is achieved through a feed-forward attention scoring module that dynamically weights important features. The efficiency of the system is evaluated using an enhanced extra trees classifier, which shows superior classification performance and stability across different feature formats. With cross-validation, our model achieves an accuracy of 94.69%, significantly outperforming conventional classifiers such as convolutional neural networks, support vector machines, and ensemble models such as random forest and extra trees. This framework not only improves interpretability and performance but also provides a foundation for a real-time, on-site pesticide monitoring solution.

Abstract: The increasing concern about the presence of pesticides in vegetable leaves has underscored an urgent need for real-time, nondestructive, and accurate detection methods. Traditional methods are reliable but laboratory-based, costly, and unsuitable for field monitoring. In this study, we propose an efficient learning model pipeline that uses hyperspectral reflectance signatures to detect pesticide residue in plant leaves. We extract a comprehensive set of 39 domain-specific features based on vegetation indices, red-edge metrics, spectral statistics, and derivative profiles. To enhance the performance, use a multilayer perceptron to extract more features. A feature fusion module is used to combine both domain-specific features and features extracted by a multilayer perceptron. Further refinement is achieved through a feed-forward attention scoring module that dynamically weights important features. The efficiency of the system is evaluated using an enhanced extra trees classifier, which shows superior classification performance and stability across different feature formats. With cross-validation, our model achieves an accuracy of 94.69%, significantly outperforming conventional classifiers such as convolutional neural networks, support vector machines, and ensemble models such as random forest and extra trees. This framework not only improves interpretability and performance but also provides a foundation for a real-time, on-site pesticide monitoring solution.

New from Applied Spectroscopy!
Advanced #Hyperspectral Signature Processing for Chemical Stress Detection in Vegetable Leaves Using Hierarchical Feature Extraction and Enhanced Ensemble Model
More: https://doi.org/10.1177/00037028251411953
#SAS #Spectroscopy #pesticides #classification #monitoring

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New in #Diversity,18(4) @mdpiopenaccess.bsky.social #OpenAccess
"What Is a Taxon? Identity, Persistence, and Operability in Taxonomy"
Bourgoin, T., Zaragüeta, R., & Vignes-Lebbe, R. @isyeb.mnhn.fr et al.
#taxonomy #classification #persistent_identifier #interoperability
➡️ doi.org/10.3390/d180...

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Apple adds three new devices to its “vintage” and “obsolete” product lists You may love certain Apple products, but they all become vintage or obsolete at some point. Apple on Tuesday added its 2017 13-inch MacBook Air to its “vintage” products list, meaning the device is…

Apple adds three new devices to its "vintage" and "obsolete" product lists

www.powerpage.org/apple-adds-t...

#Apple #vintage #obsolete #classification #retail #repairs #AppleCare #parts #components #AASP #AppleStore #support #iPadmini #AppleTVHD #MacBookAir

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Classification de la chatte

La classification est le processus d'organisation d'objets ou d'informations en catégories basées sur des critères spécifiques, permettant une meilleure compréhension et accessibilité. #Classification #Organiser #Catégories #Critères #Compréhension

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Classable de la chatte

Quelque chose qui peut être classé ou catégorisé. #Classable #Categorise #Organisation #Classification #Système

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And a mention of library #cataloguing & #classification as a fundamental part of knowledge management & dissemination ✊ #metadatamatters #RLUK26

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Adapting Language Models to Produce Good Class Probabilities for Classification Tasks

Lautaro Estienne, Matias Vera, Elizabeth Fons et al.

Action editor: Hsuan-Tien Lin

https://openreview.net/forum?id=VVneIp69GR

#generative #supervised #classification

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AI-driven Spreadsheet Processing Services Streamline your spreadsheet workflows with AI-powered data processing services. Using (Un)Perplexed Spready and Perplexity AI, we specialize in data extraction, categorization, annotation, and labelin...

📈 Stop wasting time on manual data entry! Let AI extract, categorize & classify your data while you focus on decisions. 80% time savings, 85% error reduction. Your data deserves smarter handling! matasoft.hr/qtrendcontro...
#Productivity #AI #Business #DataEntry #Categorization #Classification

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Robust Conformal Prediction for Infrequent Classes

Jens-Michalis Papaioannou, Sebastian Jäger, Alexei Figueroa et al.

Action editor: Jake C. Snell

https://openreview.net/forum?id=nJ4p8rh3Ig

#classification #classes #label

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Classification of high-dimensional data with spiked covariance matrix structure

Yin-Jen Chen, Minh Tang

Action editor: Trevor Campbell

https://openreview.net/forum?id=6bQDtTbaQs

#classification #classifier #sparse

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Branche chimie : FO n’acceptera pas une classification au rabais

Les 1ers travaux ont démarré pour renégocier la #classification conventionnelle. FO a rappelé son attachemt à des #garanties #collectives d’évolut° de #carrière.
>> www.force-ouvriere.fr/branche-chim...

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Abstract:  Laser-induced breakdown spectroscopy (LIBS) offers a promising alternative due to its minimal sample preparation, real-time analysis capabilities, and versatility in analyzing a broad range of materials. However, the challenge lies in determining its ability to effectively distinguish high-iron ore content from mineralogically similar ores with lower iron content. This study focuses on differentiating iron ore from a variety of ores with lower iron content, including calcite, biotite, dolomite, chalcopyrite, rutile, chromite, olivine, limonite, and astrophyllite, using LIBS. By comparing the obtained spectra and applying receiver operating characteristic (ROC) curve analysis, the study assesses the specificity of the technique. The results demonstrate a high specificity (>70%) in distinguishing iron ore from biotite, dolomite, chalcopyrite, rutile, olivine, and astrophyllite, revealing the potential of LIBS for effectively identifying iron ore from some ore types. However, when comparing iron ore to other ore types, such as limonite, chromite, and calcite, the results are not statistically significant. This means that the spectral or compositional similarities between these ores may limit the method's capacity to give clear separation in certain situations. To further validate the results, two common classification models, principal component analysis followed by linear discriminant analysis (PCA + LDA) and k-nearest neighbors (KNN) were applied to the spectral data. The comparison results demonstrate the resilience of LIBS classification and the impact of mineral matrix influences on diagnostic performance.

Abstract: Laser-induced breakdown spectroscopy (LIBS) offers a promising alternative due to its minimal sample preparation, real-time analysis capabilities, and versatility in analyzing a broad range of materials. However, the challenge lies in determining its ability to effectively distinguish high-iron ore content from mineralogically similar ores with lower iron content. This study focuses on differentiating iron ore from a variety of ores with lower iron content, including calcite, biotite, dolomite, chalcopyrite, rutile, chromite, olivine, limonite, and astrophyllite, using LIBS. By comparing the obtained spectra and applying receiver operating characteristic (ROC) curve analysis, the study assesses the specificity of the technique. The results demonstrate a high specificity (>70%) in distinguishing iron ore from biotite, dolomite, chalcopyrite, rutile, olivine, and astrophyllite, revealing the potential of LIBS for effectively identifying iron ore from some ore types. However, when comparing iron ore to other ore types, such as limonite, chromite, and calcite, the results are not statistically significant. This means that the spectral or compositional similarities between these ores may limit the method's capacity to give clear separation in certain situations. To further validate the results, two common classification models, principal component analysis followed by linear discriminant analysis (PCA + LDA) and k-nearest neighbors (KNN) were applied to the spectral data. The comparison results demonstrate the resilience of LIBS classification and the impact of mineral matrix influences on diagnostic performance.

New from Applied Spectroscopy!
Analysis of Specificity and Limitations Applying the Receiver Operating Characteristic Curve and Laser-Induced Breakdown Spectroscopy for Differentiating Iron Ore
Read more: https://doi.org/10.1177/00037028251396585
#SAS #Spectroscopy #LIBS #iron #ore #classification

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⚡ 2x+ efficiency, zero compromise: By integrating Soft Mixture-of-Experts, CSMoE delivers superior or comparable performance to state-of-the-art models while requiring significantly fewer FLOPs across scene #classification, #semantic #segmentation, and #image #retrieval.

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Great talk by Leonard Hackel in our lunch talk series on the future of remote sensing foundation models today.

Here are the key takeaways 👇

#RemoteSensing @tuberlin.bsky.social 🛰️🌍 #eochat #geoai #GIS #space4good #opensource #classification #CSMoE #DeepLearning #MachineLearning #BIFOLD

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Branche chimie : FO n’acceptera pas une classification au rabais

Les 1ers travaux ont démarré pour renégocier la #classification conventionnelle. FO a rappelé son attachemt à des #garanties #collectives d’évolut° de #carrière.
>> www.force-ouvriere.fr/branche-chim...

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La Passerelle. Médiathèque de Labège photo charlotte cc by sa 4.0

#classification www.flickr.com/photos/charl...
(La photo montre un rayonnage de bibliothèque avec une grande signalétique : "Manga + 14 ans")

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New #OpenAccess work in #RESSystematicEnt

Ultraconserved elements support a new tribal-level #classification for Australasian endemic #DungBeetles (#Coleoptera: #Scarabaeidae: Scarabaeinae)
doi.org/10.1111/syen.70026

#UCEs #Phylogenomics #Taxonomy
@gkergoat.bsky.social @wileyecology.bsky.social

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Adversarial Vulnerability from On-Manifold Inseparability and Poor Off-Manifold Convergence

Rajdeep Haldar, Yue Xing, Qifan Song, Guang Lin

Action editor: Olivier Cappé

https://openreview.net/forum?id=pa90uRZATF

#adversarial #robustness #classification

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Training More Robust Classification Model via Discriminative Loss and Gaussian Noise Injection

Hai-Vy Nguyen, Fabrice Gamboa, Sixin Zhang, Reda CHHAIBI, Serge Gratton, Thierry Giaccone

Action editor: Lei Feng

https://openreview.net/forum?id=RnLfJgvST2

#softmax #robust #classification

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It is interesting that such a small 0.5B model achieved strong performance (first-level category). This supports the potential of small language models as a lower-cost option for LIS researchers. This approach may be relevant for classification of various resources.

#AI #LLM #Classification #KO

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Automatic classification of research data sets into the Chinese Library Classification with generative large language model Purpose. Research data sets are typically distributed across different data repositories and lack standardized classification information, which hinders effective discovery and access. This study aims...

How can AI classify multilingual research datasets?

doi.org/10.1108/EL-0...

Why read? It shows a practical pipeline using a fine-tuned Qwen2 to assign CLC codes to multilingual datasets.
Next step: More detailed cross-language evaluation (authors).

#ShortReview #AI #LLM #Classification #Datasets

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Kashyap Patel is a liar, in my opinion. But idk, you tell me.
Kashyap Patel is a liar, in my opinion. But idk, you tell me. YouTube video by SHEILA ZOLNOOR

#KashPatel Lied about the #blackbook
And so much more. #classification #declassification

youtu.be/4qjc1xOcfAI?...

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VCS: Volume 6 (2025) completed, and Volume 7 started - vegsciblog.org Prepared by Jürgen Dengler (on behalf of VCS Chief Editor) Vegetation Classification and Survey (VCS) has successfully completed its 6th

Volume 6 of VCS is now finished!

📈Journal Impact Factor increased to 3.0 and #Scopus CiteScore to 3.6.

📊Volume 7 starts off with an editorial by Willner et al. (2026), exploring why #synoptic tables are the essential, informative backbone of #vegetation #classification systems.

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Original post on globalfintechseries.com

How AI and Lean Financial Operations Will Close Finance’s Execution Gap in 2026 As we head into 2026, finance leaders are confronting a persistent disconnect. CFO ambition has never been higher, ...

#Artificial #Intelligence #Finance #Fintech #Guest […]

[Original post on globalfintechseries.com]

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Text classification with Python 3.14's zstd module Python 3.14 introduced the compression.zstd module. It is a standard library implementation of Facebook’s Zstandard (Zstd) compression algorithm. It was developed a decade ago by Yann Collet, who hold...

Interesting blog post about text classification using compression, specifically the new "compression.zstd" module contributed by @emmatyping.dev

maxhalford.github.io/blog/text-cl...

#compression #zstd #zstandard #classification

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#Information #Architecture (IA) the #classification of #information Part 2 - Karl A L Smith Karl A L Smith Blog, UX, CX, Agility, AI, IoT. Leadership, Author, Agile World

#InformationArchitecture #IA the #classification of #information Part 2. #Educational publishing Information Architecture #EdIA

karlsmith.info/information-...

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#Information Architecture (IA) the #classification of #information

#Information Architecture (IA) the #classification of #information

#InformationArchitecture #IA the #classification of #information. A simple website may only include 8 top level pages, 50 secondary and perhaps only 300 tertiary labelled (taxonomy) navigation elements, that’s only 358 entities.

karlsmith.info/information-...

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How genus-splitting #taxonomy works in real life - an analogy.

#systematics #classification #nomenclature 🐍😎

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Original post on openbiblio.social

"Visual Signage and Academic Library Wayfinding"
https://doi.org/10.53377/lq.19168
"Many academic libraries use the Library of Congress #Classification (#LCC) system to organise their collections, but few academic library users are familiar with the LCC system or, in libraries with open stacks […]

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Enquête classifications : les résultats – CGT Airbus Commercial Aircraft

Nous publions aujourd'hui notre analyse des résultats de l'enquête sur les classifications RELOAD réalisée auprès des salarié-es à partir du 13 janvier.
avions.cgtairbus.com/classificati... #airbus #reload #convention #collective #métallurgie #toulouse #classification #emploi #cgt #ugict

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