Showing 1 - 20 results of 15,662 for search '(((( algorithm pre function ) OR ( algorithm wave function ))) OR ( algorithm a function ))', query time: 0.89s Refine Results
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    Comparison of deconvolution and optimization algorithms on a batch of data. by Ali-Kemal Aydin (10968731)

    Published 2021
    “…Both experimental data have been resampled at 50ms and used to compute a set of TFs (in orange) either with direct deconvolution approaches (Fourier or Toeplitz methods, middle-upper panel TFs) or with 1-Γ function optimization performed by 3 different algorithms (middle-lower panel TFs). …”
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    Prediction performance of different optimization algorithms. by Ali-Kemal Aydin (10968731)

    Published 2021
    “…<p>(A) 3 algorithms were compared in terms of the residuals of the cost function of the optimized TF on 7 mice datasets (Derivative free algorithm failed in optimizing a TF in a mouse). …”
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    The SSIM for the different algorithms. by Bingbing Li (461702)

    Published 2024
    “…Unlike traditional threshold functions, the improved threshold function is a continuous function that can avoid the pseudo Gibbs effect after image denoising and improve image quality. …”
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    Ridge wave transformation flowchart. by Bingbing Li (461702)

    Published 2024
    “…Unlike traditional threshold functions, the improved threshold function is a continuous function that can avoid the pseudo Gibbs effect after image denoising and improve image quality. …”
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    Gillespie algorithm simulation parameters. by Nicholas H. Vitale (20469289)

    Published 2024
    “…<div><p>We present a model for the noise and inherent stochasticity of fluorescence signals in both continuous wave (CW) and time-gated (TG) conditions. …”
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    Block ridge wave denoising flowchart. by Bingbing Li (461702)

    Published 2024
    “…Unlike traditional threshold functions, the improved threshold function is a continuous function that can avoid the pseudo Gibbs effect after image denoising and improve image quality. …”
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    Feature selection algorithm. by Mahmoud Zeydabadinezhad (12289570)

    Published 2023
    “…Our analysis pipeline included pre-processing steps, feature extraction from both time and frequency domains, a voting algorithm for selecting features, and model training and validation. …”
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    Schematic diagrams of M-shaped wave. by Dapeng Wang (250459)

    Published 2023
    “…Finally, an optimization analysis of lining crack expansion and maintenance was carried out in a railway tunnel. The results show that the stress intensity factor at the tip of the lining cracks is the same as the train load waveform; the magnitude of the stress intensity factor approximately satisfies the exponential function relationship with the depth of cracks; the fatigue service life of cracked lining is positively correlated with the cost of inspection and maintenance; the adoption of the necessary maintenance and the increase in the number of inspections and maintenance have a better economy while meeting the expectation of the service life. …”
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    As for Fig 2, we present failure rates as a function of the cohort size (vertical axis) versus the number of distractors (horizontal axis), for the Smyth and McClave baseline algorithm from [76]. by Daniela Huppenkothen (9174507)

    Published 2020
    “…We note that the middle row is a special case: here, <i>f</i><sub>target</sub> only corresponds to the proportions of the embedded cohort, while “success” for these two panels is defined as recovering maximally diverse cohorts, as this particular algorithm is designed to do. …”
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