Showing 2,521 - 2,540 results of 9,629 for search 'significantly ((((((lower decrease) OR (larger decrease))) OR (we decrease))) OR (linear decrease))', query time: 0.45s Refine Results
  1. 2521

    S1 Dataset - by Junxia Zhou (14381598)

    Published 2024
    “…BET and SEM analyses demonstrated that the specific surface area and porosity (most probable pore size) gradually decreased over time. At various ages, mesopores (cumulative pore diameter, median pore diameter) initially increased and then decreased. …”
  2. 2522

    Mineral content of raw materials. by Junxia Zhou (14381598)

    Published 2024
    “…BET and SEM analyses demonstrated that the specific surface area and porosity (most probable pore size) gradually decreased over time. At various ages, mesopores (cumulative pore diameter, median pore diameter) initially increased and then decreased. …”
  3. 2523

    Technical parameters of ultrafine cement. by Junxia Zhou (14381598)

    Published 2024
    “…BET and SEM analyses demonstrated that the specific surface area and porosity (most probable pore size) gradually decreased over time. At various ages, mesopores (cumulative pore diameter, median pore diameter) initially increased and then decreased. …”
  4. 2524

    Technical parameters of PVA fiber. by Junxia Zhou (14381598)

    Published 2024
    “…BET and SEM analyses demonstrated that the specific surface area and porosity (most probable pore size) gradually decreased over time. At various ages, mesopores (cumulative pore diameter, median pore diameter) initially increased and then decreased. …”
  5. 2525

    Sample preparation and testing flow chart. by Junxia Zhou (14381598)

    Published 2024
    “…BET and SEM analyses demonstrated that the specific surface area and porosity (most probable pore size) gradually decreased over time. At various ages, mesopores (cumulative pore diameter, median pore diameter) initially increased and then decreased. …”
  6. 2526

    XRD patterns of MUCG at different curing age. by Junxia Zhou (14381598)

    Published 2024
    “…BET and SEM analyses demonstrated that the specific surface area and porosity (most probable pore size) gradually decreased over time. At various ages, mesopores (cumulative pore diameter, median pore diameter) initially increased and then decreased. …”
  7. 2527

    FTIR spectra of MUCG at different curing age. by Junxia Zhou (14381598)

    Published 2024
    “…BET and SEM analyses demonstrated that the specific surface area and porosity (most probable pore size) gradually decreased over time. At various ages, mesopores (cumulative pore diameter, median pore diameter) initially increased and then decreased. …”
  8. 2528

    Description of fitting models. by Junxia Zhou (14381598)

    Published 2024
    “…BET and SEM analyses demonstrated that the specific surface area and porosity (most probable pore size) gradually decreased over time. At various ages, mesopores (cumulative pore diameter, median pore diameter) initially increased and then decreased. …”
  9. 2529

    Mineral composition of UFC, B, and SF. by Junxia Zhou (14381598)

    Published 2024
    “…BET and SEM analyses demonstrated that the specific surface area and porosity (most probable pore size) gradually decreased over time. At various ages, mesopores (cumulative pore diameter, median pore diameter) initially increased and then decreased. …”
  10. 2530
  11. 2531

    Summary of previous work. 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. …”
  12. 2532

    Comparison of MAP@0.5 results from 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. …”
  13. 2533

    YOLO11. 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. …”
  14. 2534

    Structure of the SCI-YOLO11 network. 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. …”
  15. 2535

    Comparative experimental 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. …”
  16. 2536

    Algorithm operation steps. 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. …”
  17. 2537

    SCI-YOLO11. 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. …”
  18. 2538

    Dataset for insulator defect detection. 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. …”
  19. 2539

    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. …”
  20. 2540

    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. …”