Showing 81 - 100 results of 149 for search 'Index machine module', query time: 0.06s Refine Results
  1. 81

    A Framework for Segmentation and Classification of Cervical Cells Under Long-tailed Distribution by YANG Xiao na, LI Chao wei, SHAO Hui li, HE Yong jun

    Published 2023-12-01
    “…This framework first performs cell nucleus segmentation, uses U-Net as the base model for layer reduction, adds AG module, and uses ACBlock module instead of traditional standard convolutional blocks; then uses ResNeSt for coarse classification of segmented data, fuses manual features extracted based on physicians ′ experience and machine features extracted by ResNeSt network for fine classification , and uses active learning iteratively to expand the cervical cell categories and fuse the ACBlock module in the BBN model to process the long-tail data; finally, the diagnostic indexes of abnormal cells are refined and abnormal cells are screened according to the TBS diagnostic criteria and the physician ′s diagnostic experience. …”
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  2. 82

    OPTIMIZATION STRATEGIES AND COMPUTATIONAL MODELING IN THE DESIGN AND PERFORMANCE EVALUATION OF GREEN POROUS OIL ADSORBENT MATERIALS by Haoran Zhang, Sagdat Mederbekovna Tazhibayeva

    Published 2025-03-01
    “…The surface area, pore size, surface functionalization, and hydrophobicity index of green porous adsorbents were examined. Multiphysics (v5.6, Subsurface Flow Module) and ANSYS Simulated oil-water adsorption in fluid porous media. …”
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  3. 83

    OPTIMIZATION STRATEGIES AND COMPUTATIONAL MODELING IN THE DESIGN AND PERFORMANCE EVALUATION OF GREEN POROUS OIL ADSORBENT MATERIALS by Haoran Zhang, Sagdat Mederbekovna Tazhibayeva

    Published 2025-03-01
    “…The surface area, pore size, surface functionalization, and hydrophobicity index of green porous adsorbents were examined. Multiphysics (v5.6, Subsurface Flow Module) and ANSYS Simulated oil-water adsorption in fluid porous media. …”
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    Article
  4. 84
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    A Method of Measurement Parameters Programmatically Configuring for Traction Inverter Based on LabVIEW by 陈明奎, 谭利红

    Published 2011-01-01
    “…The technique of modifying measurement parameter in human machine interface was discussed in detail, in which many advanced programming techniques, for example, applying VI reference, property node calling, controls references indexing, genetic reference converting to specific reference, were applied. …”
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    Business-to-Business Marketing / by Brennan, Ross, 1957-

    Published 2014
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    Book
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    MW-UNet: Multi-Scale Weighted Connection UNet for Identification and Classification of Non-Meteorological Clutter over Big Radar Data by Mengmeng Cui, Chen Zeng, Xiaolong Xu, Muhammad Bilal, Xiaoyu Xia

    Published 2025-02-01
    “…Experiments confirm that our proposed model outperforms the compared models in clutter identification with Critical Success Index (CSI) of 0.808.…”
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  16. 96

    AI-Based Identification and Redevelopment Prioritization of Inefficient Industrial Land Using Street View Imagery and Multi-Criteria Modeling by Yan Yu, Qiqi Yan, Yu Guo, Chenhe Zhang, Zhixiang Huang, Liangze Lin

    Published 2025-06-01
    “…For land identification we propose an improved YOLOv11 model with an AdditiveBlock module to enhance feature extraction in complex street view scenes, achieving an 80.1% mAP on a self-built dataset of abandoned industrial buildings. …”
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    Algae-Mamba: A Spatially Variable Mamba for Algae Extraction From Remote Sensing Images by Yaoteng Zhang, Shuaipeng Wang, Yanlong Chen, Shiqing Wei, Mingming Xu, Shanwei Liu

    Published 2025-01-01
    “…Traditional threshold-based methods and standard machine learning techniques often fall short in accurately and automatically distinguishing algae types. …”
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