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    Normalized Difference Vegetation Index Prediction for Blueberry Plant Health from RGB Images: A Clustering and Deep Learning Approach by A. G. M. Zaman, Kallol Roy, Jüri Olt

    Published 2024-12-01
    “…In precision agriculture (PA), monitoring individual plant health is crucial for optimizing yields and minimizing resources. The normalized difference vegetation index (NDVI), a widely used health indicator, typically relies on expensive multispectral cameras. …”
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    Research on Detection of Icing Cover Transmission Lines Under Different Weather Conditions Based on Wide-Field Dynamic Convolutional Network LDKA-NET by Xinsheng Dong, Yuanhao Wan, Yongcan Zhu, Chao Ji

    Published 2024-12-01
    “…To address the issue of low detection accuracy for icing transmission line defects with existing models, this paper proposes a defect detection algorithm for icing transmission line defects under different weather conditions based on a Large Dynamic Kernel Aggregation Net (LDKA-NET). …”
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    Comparing Different Data Partitioning Strategies for Segmenting Areas Affected by COVID-19 in CT Scans by Anne de Souza Oliveira, Marly Guimarães Fernandes Costa, João Pedro Guimarães Fernandes Costa, Cícero Ferreira Fernandes Costa Filho

    Published 2024-12-01
    “…Conclusions: The main conclusions were as follows: COVID-19 segmentation was slightly better for the slice strategy than for the CT-scan strategy; a comparison of the performance of the automatic COVID-19 segmentation and the interobserver agreement, in a group of 7 CT scans, revealed that there was no statistically significant difference between any metric.…”
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    Prediction of crystalline structure evolution during solidification of aluminum at different cooling rates using a hybrid neural network model by Rafi B. Dastagir, Shorup Chanda, Farsia K. Chowdhury, Shahereen Chowdhury, K. Arafat Rahman

    Published 2025-03-01
    “…The model was trained using a dataset generated from 240 molecular dynamics (MD) simulations conducted at 48 different cooling rates, with cooling rates, timesteps, and temperature as inputs. …”
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