Showing 821 - 840 results of 3,382 for search '(difference OR different) convolutional', query time: 0.14s Refine Results
  1. 821

    Underwater Acoustic Signal LOFAR Spectrogram Denoising Based on Enhanced Simulation by Tianxiang He, Sheng Feng, Jie Yang, Kun Yu, Junlin Zhou, Duanbing Chen

    Published 2024-11-01
    “…Furthermore, the experiments demonstrate that the proposed convolutional denoising model has transferability and generalization, making it suitable for denoising underwater acoustic signal in different marine areas.…”
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  2. 822

    HyperKAN: Kolmogorov–Arnold Networks Make Hyperspectral Image Classifiers Smarter by Nikita Firsov, Evgeny Myasnikov, Valeriy Lobanov, Roman Khabibullin, Nikolay Kazanskiy, Svetlana Khonina, Muhammad A. Butt, Artem Nikonorov

    Published 2024-11-01
    “…Specifically, six cutting-edge neural networks were modified, including 1D (1DCNN), 2D (2DCNN), and 3D convolutional networks (two different 3DCNNs, NM3DCNN), as well as transformer (SSFTT). …”
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  3. 823
  4. 824

    DroneSilient (drone + resilient): an anti-drone system by Meghna Manoj Nair, Harini Sriraman, Gadiparthy Harika Sai, V. Pattabiraman

    Published 2024-10-01
    “…In this study, we present the DroneSilient System, a novel anti-drone system that combines different parts. The DroneSilient system includes components that connect to RF identification technology and image-capture technology. …”
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  5. 825

    Nameplate Detection and Recognition of Smart Meter Communication Module Based on ResSE-SegNet by ZHAI Xiaohui, SUN Kai, ZHAO Jifu, SUN Yanling, XING Yu, GUO Kaixuan, WANG Haiying

    Published 2023-04-01
    “…The region where the manufacturer′s name is located in the image is segmented using a deep codec network structure, and an end-to-end convolutional neural network (CNN) model is constructed and trained to identify different manufacturers.Finally, the data set of the communication module image is obtained through the full-dimensional smart meter detection system, and the detection and recognition experiment of the communication module nameplate is carried out. …”
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  6. 826

    Retrievals of Biomass Burning Aerosol and Liquid Cloud Properties from Polarimetric Observations Using Deep Learning Techniques by Michal Segal Rozenhaimer, Kirk Knobelspiesse, Daniel Miller, Dmitry Batenkov

    Published 2025-05-01
    “…We present a comparison between the different DL approaches, as well as their comparison to existing algorithms. …”
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  7. 827

    Research on UAV Jamming Signal Generation Based on Intelligent Jamming by Haonan Xue, Zhihai Zhuo, Weihao Yan, Yuexia Zhang

    Published 2025-01-01
    “…Simulation results show that, across different communication systems, the generated jamming signal waveforms exhibit strong similarity to the original signal waveforms. …”
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  8. 828

    The analysis of sculpture image classification in utilization of 3D reconstruction under K-means++ by Xuhui Wang

    Published 2025-05-01
    “…ResNet50 includes residual blocks, each containing multiple convolutional layers and a skip connection, enabling the network to learn differences between inputs and outputs rather than directly learning outputs, thus improving performance. …”
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  9. 829

    AI-Powered Object Detection in Radiology: Current Models, Challenges, and Future Direction by Abdussalam Elhanashi, Sergio Saponara, Qinghe Zheng, Nawal Almutairi, Yashbir Singh, Shiba Kuanar, Farzana Ali, Orhan Unal, Shahriar Faghani

    Published 2025-04-01
    “…Moreover, the need for strong applicable models across different populations and imaging modalities are addressed. …”
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  10. 830

    Cloud Computing Resource Scheduling Algorithm Based on Unsampled Collaborative Knowledge Graph Network by Haichuan Sun, Liang Gu, Chenni Dong, Xin Ma, Zeyu Liu, Zhenxi Li

    Published 2024-01-01
    “…The knowledge graph data fragments are processed based on class convolution and human-machine interaction attention mechanism, and different sizes of linear aggregators are used to capture deep level information, completing the design of cloud computing resource scheduling algorithm. …”
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  11. 831

    PV Module Soiling Detection Using Visible Spectrum Imaging and Machine Learning by Boris I. Evstatiev, Dimitar T. Trifonov, Katerina G. Gabrovska-Evstatieva, Nikolay P. Valov, Nicola P. Mihailov

    Published 2024-10-01
    “…One of these factors is the soiling of the PV surface, which could be observed in different forms, such as dust and bird droppings. In this study, visible spectrum data and machine learning algorithms were used for the identification of soiling. …”
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  12. 832

    Review on Hybrid Deep Learning Models for Enhancing Encryption Techniques Against Side Channel Attacks by Amjed A. Ahmed, Mohammad Kamrul Hasan, Azana H. Aman, Nurhizam Safie, Shayla Islam, Fatima A. Ahmed, Thowiba E. Ahmed, Bishwajeet Pandey, Leila Rzayeva

    Published 2024-01-01
    “…Deep learning is being used in many different fields in the past several years. Convolutional neural networks and recurrent neural networks, for instance, have demonstrated efficacy in text generation and object detection in images, respectively. …”
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  13. 833
  14. 834

    Real-Time Human Action Recognition With Dynamical Frame Processing via Modified ConvLSTM and BERT by Raden Hadapiningsyah Kusumoseniarto, Zhi-Yuan Lin, Shun-Feng Su, Pei-Jun Lee

    Published 2025-01-01
    “…The effects of ModConvLSTM are verified at different depths. In our proposed architecture, we replace global average pooling (GAP) with Bidirectional Encoder Representations from Transformers (BERT) to address the limitations of temporal processing in a two-dimensional convolutional neural network (2D-CNN). …”
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  15. 835

    Application of artificial intelligence in insect pest identification - A review by Sourav Chakrabarty, Chandan Kumar Deb, Sudeep Marwaha, Md. Ashraful Haque, Deeba Kamil, Raju Bheemanahalli, Pathour Rajendra Shashank

    Published 2026-03-01
    “…These methods have revolutionized insect identification by analyzing large databases of insect images and identifying distinct patterns and features linked to different species. AI-powered systems can improve insect pest identification by utilizing other data modalities. …”
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  16. 836

    ResWLI: a new method to retrieve water levels in coastal zones by integrating optical remote sensing and deep learning by Nan Xu, Huichao Xin, Jiarui Wu, Jiaqi Yao, He Ren, Han-Su Zhang, Hao Xu, Hong Luan, Dong Xu, Yongze Song

    Published 2025-12-01
    “…Although two stations had RMSE values exceeding 0.20 m, the ResWLI proved to be a reliable and accurate method for water level estimation across different tide conditions. Future works could further explore other sources of satellite imagery for high-frequent monitoring of water level changes on a larger scale, potentially on a global scale. …”
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  17. 837
  18. 838

    AI-Powered Dental Forensics in Transforming Age Estimation Techniques: A Narrative Review by Parul Khare, Kalyani Bhargava, M Siddharth, Deepak Bhargava, Anoushka Chauhan

    Published 2025-08-01
    “…This review highlights how combining AI with different imaging techniques can enhance accuracy, reduce human error and address population-specific variations in forensic age estimation.…”
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  19. 839

    BCSnet: A U-Net-Based Model for Segmentation of Brain Cells in Trypan Blue Images by Aleksei A. Kudryavtsev, Ivan V. Simkin, Maksim A. Dragun, Olga P. Alexandrova, Ivan P. Malashin, Denis A. Sukhanov, Vladimir A. Nelyub, Aleksei S. Borodulin, Stanislav O. Yurchenko, Vadim S. Tynchenko

    Published 2024-01-01
    “…This method requires a lot of time and effort associated with the need for manual cell counting and qualification in histology to detect visual differences between alive neuron cells and non-alive ones. …”
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  20. 840

    Neural network pruning based on channel attention mechanism by Jianqiang Hu, Yang Liu, Keshou Wu

    Published 2022-12-01
    “…However, most of the existing methods ignore the differences in the contributions of the output feature maps. …”
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