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ELCVIA Electronic Letters on Computer Vision and Image Analysis

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Vol. 25#1
2026
Current Issue

Regular Issue

  • Preserving the Heritage: Evaluating the Character Segmentation Quality in Palm Leaf Manuscripts by Comparing the Classical and Noise2Void Denoising Techniques
    Deepa Unnikrishnan, Vignesh Radhakrishnan
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  • Optimized Deep Learning Architecture for Melanoma Detection Leveraging ResNet50V2.5 in Dermatological Imaging
    S. Shafeena, Vinod Kumar R. S., Kumar S. S., Shahi D.
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  • Enhanced Underwater Fish Image Processing by Noise Elimination, Saturation Adjustment, and Edge Sharpening Technique
    Samra Urooj Khan, Kamarul Hawari Ghazali, Sundas Faisal
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  • A Hybrid Feature Fusion for Retinal OCT Image Classification using Traditional and Deep Learning Methods
    Mithilesh Kumar Singh Yadav, Dr. Nagendra Pratap Singh
    • PDF
  • Self-Supervised Multimodal 3-D Garment Reconstruction from a Single Consumer Image for Energy-Efficient Virtual Try-On Systems
    Roman Chekhmestruk, Olena Voitsekhovska
    • PDF
  • Optimized Detection of Urdu Signatures in Real-World Images Using YOLO v7
    Muzammal Hussain, Muhammad Ahsan Rafiq
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  • Universitat Autònoma de Barcelona (UAB)
  • Centre de Visió per Computador (UAB)

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eISSN: 1577-5097  I  DOI: 10.5565/rev/elcvia  I  Privacy statement
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