Showing 161 - 180 results of 1,410 for search '(( algorithm allows function ) OR ((( algorithm python function ) OR ( algorithm fc function ))))', query time: 0.33s Refine Results
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    Overall concept and specific components for developing the cloud based solution. by Vlad Ploscaru (13767257)

    Published 2022
    Subjects: “…artificial intelligence algorithms…”
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    Fig 1 - by Vlad Ploscaru (13767257)

    Published 2022
    Subjects: “…artificial intelligence algorithms…”
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    Graphic processing unit instance orchestration on the cloud. by Vlad Ploscaru (13767257)

    Published 2022
    Subjects: “…artificial intelligence algorithms…”
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    Explained variance ration of the PCA algorithm. by Abeer Aljohani (18497914)

    Published 2025
    “…<div><p>Chest X-ray image classification plays an important role in medical diagnostics. Machine learning algorithms enhanced the performance of these classification algorithms by introducing advance techniques. …”
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    RMSE results. by YueSheng Jiang (19267984)

    Published 2024
    “…To overcome these limitations, this paper developed a simple and fast adaptive remote sensing image Spatio-Temporal fusion method based on Fit-FC, called Adapt Lasso-Fit-FC (AL-FF). Firstly, the sparse characteristics of time phase change between images are explored, and a time phase change estimation model based on sparse regression is constructed, which overcomes the fuzzy problem of fusion image caused by the failure of linear regression to capture complex nonlinear time phase transition in the weighted Function method, making the algorithm better at capturing details. …”
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    Results of the Kherson Area Visual Assessment. by YueSheng Jiang (19267984)

    Published 2024
    “…To overcome these limitations, this paper developed a simple and fast adaptive remote sensing image Spatio-Temporal fusion method based on Fit-FC, called Adapt Lasso-Fit-FC (AL-FF). Firstly, the sparse characteristics of time phase change between images are explored, and a time phase change estimation model based on sparse regression is constructed, which overcomes the fuzzy problem of fusion image caused by the failure of linear regression to capture complex nonlinear time phase transition in the weighted Function method, making the algorithm better at capturing details. …”
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    Work flow chart. by YueSheng Jiang (19267984)

    Published 2024
    “…To overcome these limitations, this paper developed a simple and fast adaptive remote sensing image Spatio-Temporal fusion method based on Fit-FC, called Adapt Lasso-Fit-FC (AL-FF). Firstly, the sparse characteristics of time phase change between images are explored, and a time phase change estimation model based on sparse regression is constructed, which overcomes the fuzzy problem of fusion image caused by the failure of linear regression to capture complex nonlinear time phase transition in the weighted Function method, making the algorithm better at capturing details. …”
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    Experimental data. by YueSheng Jiang (19267984)

    Published 2024
    “…To overcome these limitations, this paper developed a simple and fast adaptive remote sensing image Spatio-Temporal fusion method based on Fit-FC, called Adapt Lasso-Fit-FC (AL-FF). Firstly, the sparse characteristics of time phase change between images are explored, and a time phase change estimation model based on sparse regression is constructed, which overcomes the fuzzy problem of fusion image caused by the failure of linear regression to capture complex nonlinear time phase transition in the weighted Function method, making the algorithm better at capturing details. …”
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    Results of the PY area visual assessment. by YueSheng Jiang (19267984)

    Published 2024
    “…To overcome these limitations, this paper developed a simple and fast adaptive remote sensing image Spatio-Temporal fusion method based on Fit-FC, called Adapt Lasso-Fit-FC (AL-FF). Firstly, the sparse characteristics of time phase change between images are explored, and a time phase change estimation model based on sparse regression is constructed, which overcomes the fuzzy problem of fusion image caused by the failure of linear regression to capture complex nonlinear time phase transition in the weighted Function method, making the algorithm better at capturing details. …”
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