Showing 41 - 57 results of 57 for search 'Sportmax~', query time: 2.62s Refine Results
  1. 41

    Gait Perception via Actual and Estimated Pneumatic Physical Reservoir Output by Junyi Shen, Tetsuro Miyazaki, Swaninda Ghosh, Toshihiro Kawase, Kenji Kawashima

    Published 2025-01-01
    “…This enhanced clustering performance is subsequently leveraged in gait perception by incorporating Takagi–Sugeno fuzzy logic for joint angle estimation and a softmax activation function for walking condition recognition. …”
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  2. 42

    An interaction relational inference method for a coal-mining equipment system by Xiangang Cao, Jiajun Gao, Xin Yang, Fuyuan Zhao, Boyang Cheng

    Published 2025-01-01
    “…The interaction constructor of the CIRI interaction inference model in this method introduces Gumbel-softmax technology, which autonomously generates multiple types of interaction relations based on several probability matrices. …”
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  3. 43

    Dual Generative Network with Discriminative Information for Generalized Zero-Shot Learning by Tingting Xu, Ye Zhao, Xueliang Liu

    Published 2021-01-01
    “…Specifically, the model uses the discrimination information of visual features, according to the relevant semantic embedding, synthesizes the visual features of unseen categories by using the learned generator, and then trains the final softmax classifier by using the generated visual features, thus realizing the recognition of unseen categories. …”
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  4. 44

    Advanced retinal disease detection from OCT images using a hybrid squeeze and excitation enhanced model. by Gülcan Gencer, Kerem Gencer

    Published 2025-01-01
    “…<h4>Results</h4>The combined features from EfficientNetB0 and Xception are processed via fully connected layers and categorized using the Softmax algorithm. The methodology was tested on UCSD and Duke's OCT datasets and produced excellent results. …”
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  5. 45

    Generalizability of machine learning models for diabetes detection a study with nordic islet transplant and PIMA datasets by Dinesh Chellappan, Harikumar Rajaguru

    Published 2025-02-01
    “…Evaluated the performance of a system by using the following classifiers as Non-Linear Regression—NLR, Linear Regression—LR, Gaussian Mixture Model—GMM, Expectation Maximization—EM, Bayesian Linear Discriminant Analysis—BLDA, Softmax Discriminant Classifier—SDC, and Support Vector Machine with Radial Basis Function kernel—SVM-RBF classifier on two publicly available datasets namely the Nordic Islet Transplant Program (NITP) and the PIMA Indian Diabetes Dataset (PIDD). …”
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  6. 46

    Zaposlovanje vrhunskih športnikov v javni upravi na preizkušnji by Darko Repenšek

    Published 2011-06-01
    “…Članek ob pomenu vrhunskega športa za državo predstavlja pravne dileme in težave pri dosedanji realizaciji sporazuma in skozi proučevanje zaposlovanja vrhunskih športnikov v državni upravi nakaže potrebne rešitve, ki bi nedvomno dobremu ukrepu podpore države vrhunskemu športu dal stabilno in trajno sistemsko rešitev, ki ne bi bila odvisna od volje aktualne vlade ali ekonomskih razmer v državi. …”
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  7. 47

    Multiscale wildfire and smoke detection in complex drone forest environments based on YOLOv8 by Wenyu Zhu, Shanwei Niu, Jixiang Yue, Yangli Zhou

    Published 2025-01-01
    “…This module combines Softmax and linear attention to optimize feature extraction, improving the model’s accuracy and robustness. …”
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    Article
  8. 48

    Automatic Sleep Stage Classification Based on Convolutional Neural Network and Fine-Grained Segments by Zhihong Cui, Xiangwei Zheng, Xuexiao Shao, Lizhen Cui

    Published 2018-01-01
    “…Finally, the results from the full-connected layer of each segment in the input time sequence are put into the softmax classifier together to get a single most likely sleep stage. …”
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  9. 49

    Advanced sleep disorder detection using multi-layered ensemble learning and advanced data balancing techniques by Muhammad Mostafa Monowar, S. M. Nuruzzaman Nobel, Maharin Afroj, Md Abdul Hamid, Md Zia Uddin, Md Mohsin Kabir, M. F. Mridha

    Published 2025-01-01
    “…Techniques such as thresholding, predictive scoring, and the conversion of Softmax labels into multidimensional feature vectors improve interpretability. …”
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  10. 50

    Violence Detection From Industrial Surveillance Videos Using Deep Learning by Hamza Khan, Xiaohong Yuan, Letu Qingge, Kaushik Roy

    Published 2025-01-01
    “…Unlike traditional methods that process all frames indiscriminately, this targeted filtering mechanism allows computational resources to be allocated more effectively. Next, SoftMax classifier processes the extracted features to categorize frame sequences as violent or non-violent. …”
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  11. 51

    Mer enn konsepter: Utforsking av sammenheng mellom lærerstudenters praksiserfaringer og lærerforventninger med metrisk og ikke-metrisk analyse by Sigve Høgheim, Eirik S. Jenssen

    Published 2025-01-01
    “… Denne studien undersøker om tradisjonelle metoder for å analysere tallmateriale i utdanningsforskning, som måling, signifikanstesting og bruk av aggregerte estimater, er nødvendige for meningsfull tallanalyse. Vi stiller spørsmål ved om disse metodene, som ikke tester grunnleggende empiriske antakelser og ikke gir innsikt om personer eller teorier, virkelig er fordelaktige. …”
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  12. 52

    Deep Learning Algorithms for Detection and Classification of Gastrointestinal Diseases by Mosleh Hmoud Al-Adhaileh, Ebrahim Mohammed Senan, Waselallah Alsaade, Theyazn H. H Aldhyani, Nizar Alsharif, Ahmed Abdullah Alqarni, M. Irfan Uddin, Mohammed Y. Alzahrani, Elham D. Alzain, Mukti E. Jadhav

    Published 2021-01-01
    “…In the classification stage, pretrained convolutional neural network (CNN) models are tuned by transferring learning to perform new tasks. The softmax activation function receives the deep feature vector and classifies the input images into five classes. …”
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  14. 54

    “I can see a lady with a curly brown hair” - A Corpus-Based Investigation of Article Use in the Language of Young Norwegian EFL Learners by Sofie Larsen, Kristian A. Rusten

    Published 2021-12-01
    “…Våre kvantitative data fører til at vi tillater oss å stille spørsmål ved Bækkens påstand om at norske elever med engelsk som fremmedspråk har spesielle problemer med overbruk av bestemt artikkel og utelatelse av ubestemt artikkel. …”
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  15. 55

    Improving the experience of health services for trans and gender-diverse young people and their families: an exploratory qualitative study by Melissa Stepney, Samantha Martin, Magdalena Mikulak, Sara Ryan, Jay Stewart, Richard Ma, Adam Barnett

    Published 2025-02-01
    “…The recent decision to restructure gender services for young people, and close the long established Gender Identity Development Service at the Tavistock and Portman NHS Foundation Trust, is leading to further uncertainty. …”
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