Showing 481 - 500 results of 636 for search '(((( element method algorithm ) OR ( complement rast algorithm ))) OR ( level coding algorithm ))', query time: 0.47s Refine Results
  1. 481

    Quantitative results on WEDU dataset. by Dunlu Lu (19964225)

    Published 2024
    “…In comparative experiments on four plant datasets, MAR-YOLOv9 improved the mAP@0.5 accuracy by 39.18% compared to seven mainstream object detection algorithms, and by 1.28% compared to the YOLOv9 model. …”
  2. 482

    Counting results on DRPD dataset. by Dunlu Lu (19964225)

    Published 2024
    “…In comparative experiments on four plant datasets, MAR-YOLOv9 improved the mAP@0.5 accuracy by 39.18% compared to seven mainstream object detection algorithms, and by 1.28% compared to the YOLOv9 model. …”
  3. 483

    Quantitative results on RFRB dataset. by Dunlu Lu (19964225)

    Published 2024
    “…In comparative experiments on four plant datasets, MAR-YOLOv9 improved the mAP@0.5 accuracy by 39.18% compared to seven mainstream object detection algorithms, and by 1.28% compared to the YOLOv9 model. …”
  4. 484

    Main module structure. by Dunlu Lu (19964225)

    Published 2024
    “…In comparative experiments on four plant datasets, MAR-YOLOv9 improved the mAP@0.5 accuracy by 39.18% compared to seven mainstream object detection algorithms, and by 1.28% compared to the YOLOv9 model. …”
  5. 485

    Counting results on MTDC-UAV dataset. by Dunlu Lu (19964225)

    Published 2024
    “…In comparative experiments on four plant datasets, MAR-YOLOv9 improved the mAP@0.5 accuracy by 39.18% compared to seven mainstream object detection algorithms, and by 1.28% compared to the YOLOv9 model. …”
  6. 486

    Quantitative results on DRPD dataset. by Dunlu Lu (19964225)

    Published 2024
    “…In comparative experiments on four plant datasets, MAR-YOLOv9 improved the mAP@0.5 accuracy by 39.18% compared to seven mainstream object detection algorithms, and by 1.28% compared to the YOLOv9 model. …”
  7. 487

    Architecture of MAR-YOLOv9. by Dunlu Lu (19964225)

    Published 2024
    “…In comparative experiments on four plant datasets, MAR-YOLOv9 improved the mAP@0.5 accuracy by 39.18% compared to seven mainstream object detection algorithms, and by 1.28% compared to the YOLOv9 model. …”
  8. 488

    Quantitative results on MTDC-UAV dataset. by Dunlu Lu (19964225)

    Published 2024
    “…In comparative experiments on four plant datasets, MAR-YOLOv9 improved the mAP@0.5 accuracy by 39.18% compared to seven mainstream object detection algorithms, and by 1.28% compared to the YOLOv9 model. …”
  9. 489

    Counting results on WEDU dataset. by Dunlu Lu (19964225)

    Published 2024
    “…In comparative experiments on four plant datasets, MAR-YOLOv9 improved the mAP@0.5 accuracy by 39.18% compared to seven mainstream object detection algorithms, and by 1.28% compared to the YOLOv9 model. …”
  10. 490

    Example images from four plant datasets. by Dunlu Lu (19964225)

    Published 2024
    “…In comparative experiments on four plant datasets, MAR-YOLOv9 improved the mAP@0.5 accuracy by 39.18% compared to seven mainstream object detection algorithms, and by 1.28% compared to the YOLOv9 model. …”
  11. 491

    Counting results on RFRB dataset. by Dunlu Lu (19964225)

    Published 2024
    “…In comparative experiments on four plant datasets, MAR-YOLOv9 improved the mAP@0.5 accuracy by 39.18% compared to seven mainstream object detection algorithms, and by 1.28% compared to the YOLOv9 model. …”
  12. 492

    Detection visualization results on WEDU dataset. by Dunlu Lu (19964225)

    Published 2024
    “…In comparative experiments on four plant datasets, MAR-YOLOv9 improved the mAP@0.5 accuracy by 39.18% compared to seven mainstream object detection algorithms, and by 1.28% compared to the YOLOv9 model. …”
  13. 493
  14. 494
  15. 495

    <b>Force-Position-Speed Planning and Roughness rediction for Robotic Polishing</b> by Ma Haohao (19780875)

    Published 2025
    “…The improved dung beetle optimization algorithm, back propagation neural network, finite element analysis and response surface method provide a strong guarantee for the selection of robotic polishing process parameters. …”
  16. 496

    High-Dimensional Variable Clustering based on Maxima of a Weakly Dependent Random Process by Alexis Boulin (20659921)

    Published 2025
    “…A data-driven selection method for the tuning parameter is also proposed. …”
  17. 497

    Data Sheet 1_Extraction of exact symbolic stationary probability formulas for Markov chains with finite space with application to production lines. Part I: description of methodolo... by Konstantinos S. Boulas (21709982)

    Published 2025
    “…</p>Results<p>A general algorithm that commences with the Markov chain transition matrix as an input element and forms the state transition diagram. …”
  18. 498

    Video 1_Extraction of exact symbolic stationary probability formulas for Markov chains with finite space with application to production lines. Part I: description of methodology.mp... by Konstantinos S. Boulas (21709982)

    Published 2025
    “…</p>Results<p>A general algorithm that commences with the Markov chain transition matrix as an input element and forms the state transition diagram. …”
  19. 499

    Multi-Task Learning for Gaussian Graphical Regressions with High Dimensional Covariates by Jingfei Zhang (580874)

    Published 2024
    “…We also develop an efficient augmented Lagrangian algorithm for computation, which solves subproblems with a semi-smooth Newton method. …”
  20. 500

    Practical implementation of an End-to-end methodology for SPC of 3-D part geometry: A case study by Yulin An (833223)

    Published 2025
    “…The approach is based on monitoring the spectrum of the Laplace–Beltrami (LB) operator of each scanned part estimated using finite element methods (FEM). The spectrum of the LB operator is an intrinsic summary of the geometry of a part, independent of the ambient space. …”