Showing 1,741 - 1,760 results of 18,354 for search 'significantly ((((greater decrease) OR (((we decrease) OR (a decrease))))) OR (linear decrease))', query time: 0.73s Refine Results
  1. 1741

    YOLOV8. by Junyan Wang (4738518)

    Published 2025
    “…However, small object detection faces numerous challenges, such as significant difficulty, substantial interference from complex backgrounds, and inconsistent annotation quality. …”
  2. 1742

    Faster-RCNN. by Junyan Wang (4738518)

    Published 2025
    “…However, small object detection faces numerous challenges, such as significant difficulty, substantial interference from complex backgrounds, and inconsistent annotation quality. …”
  3. 1743

    Results of ablation experiments. by Junyan Wang (4738518)

    Published 2025
    “…However, small object detection faces numerous challenges, such as significant difficulty, substantial interference from complex backgrounds, and inconsistent annotation quality. …”
  4. 1744

    Structure diagram of SPDConv. by Junyan Wang (4738518)

    Published 2025
    “…However, small object detection faces numerous challenges, such as significant difficulty, substantial interference from complex backgrounds, and inconsistent annotation quality. …”
  5. 1745

    Wise-IOU regression diagram. by Junyan Wang (4738518)

    Published 2025
    “…However, small object detection faces numerous challenges, such as significant difficulty, substantial interference from complex backgrounds, and inconsistent annotation quality. …”
  6. 1746

    Visualization of detection results. by Junyan Wang (4738518)

    Published 2025
    “…However, small object detection faces numerous challenges, such as significant difficulty, substantial interference from complex backgrounds, and inconsistent annotation quality. …”
  7. 1747

    Structure diagram of the SE attention mechanism. by Junyan Wang (4738518)

    Published 2025
    “…However, small object detection faces numerous challenges, such as significant difficulty, substantial interference from complex backgrounds, and inconsistent annotation quality. …”
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  16. 1756

    Top 10 significant functional annotations of up-regulated DEGs. by Meitner Cadena (22216261)

    Published 2025
    “…Functional annotations are ordered by decreasing significance, with color indicating significance according to the legend’s color scale, the ratio of genes on the horizontal axis, and DEG count represented by circle size.…”
  17. 1757

    Top 10 significant functional annotations of down-regulated DEGs. by Meitner Cadena (22216261)

    Published 2025
    “…Functional annotations are ordered by decreasing significance, with color indicating significance level based on the legend’s color scale, the ratio of genes on the horizontal axis, and DEG count represented by circle size.…”
  18. 1758
  19. 1759

    Major hyperparameters of RF-SVR. by Jintao Li (448681)

    Published 2024
    “…For instance, the RF-MLPR model achieved a 3.7%–6.5% improvement in the Nash-Sutcliffe efficiency (NSE) metric across four hydrological stations compared to the RF-SVR model. (4) Prediction accuracy decreased with longer forecast periods, with the R<sup>2</sup> value dropping from 0.8886 for a 1-month forecast to 0.6358 for a 12-month forecast, indicating the increasing challenge of long-term predictions due to greater uncertainty and the accumulation of influencing factors over time. (5) The RF-MLPR model outperformed the RF-SVR model, demonstrating a superior ability to capture the complex, nonlinear relationships inherent in the data. …”
  20. 1760

    Pseudo code for coupling model execution process. by Jintao Li (448681)

    Published 2024
    “…For instance, the RF-MLPR model achieved a 3.7%–6.5% improvement in the Nash-Sutcliffe efficiency (NSE) metric across four hydrological stations compared to the RF-SVR model. (4) Prediction accuracy decreased with longer forecast periods, with the R<sup>2</sup> value dropping from 0.8886 for a 1-month forecast to 0.6358 for a 12-month forecast, indicating the increasing challenge of long-term predictions due to greater uncertainty and the accumulation of influencing factors over time. (5) The RF-MLPR model outperformed the RF-SVR model, demonstrating a superior ability to capture the complex, nonlinear relationships inherent in the data. …”