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Computer Science

D-Index
42
Citations
11875
World Ranking
8189
National Ranking
493

Overview

Paolo Remagnino is affiliated with Durham University in the United Kingdom. Their research spans multiple fields, including Medicine, Computer Science, and Engineering, with a notable focus on subfields such as Computer Vision and Pattern Recognition, Otorhinolaryngology, Periodontics, Radiology, Nuclear Medicine and Imaging, and Ophthalmology.

The primary topics addressed in their work include:

  • Head and Neck Cancer Studies
  • Oral Health Pathology and Treatment
  • AI in cancer detection
  • Retinal Diseases and Treatments
  • Retinal Imaging and Analysis
  • Species Distribution and Climate Change
  • Smart Agriculture and AI

Paolo Remagnino has contributed to several recent papers, reflecting their research interests and collaboration network. Notable publications include:

  • Automated Detection and Classification of Oral Lesions Using Deep Learning for Early Detection of Oral Cancer, 2020, IEEE Access
  • Robotic Monitoring of Habitats: The Natural Intelligence Approach, 2023, IEEE Access
  • Enhanced Single Shot Small Object Detector for Aerial Imagery Using Super-Resolution, Feature Fusion and Deconvolution, 2022, Sensors
  • A Distributed Gamified System Based on Automatic Assessment of Physical Exercises to Promote Remote Physical Rehabilitation, 2020, IEEE Access
  • Action recognition on continuous video, 2020, Neural Computing and Applications

Their frequent co-authors include:

  • Roshan A. Welikala
  • Sarah Barman
  • Chee Seng Chan
  • Jian Han Lim
  • Senthilmani Rajendran

Paolo Remagnino's publications are often found in venues such as:

  • IEEE Access
  • Sensors
  • BMJ Open Diabetes Research & Care
  • Neural Computing and Applications
  • Expert Systems

Best Publications

  • The Visual Object Tracking VOT2013 Challenge Results

    Matej Kristan;Roman Pflugfelder;Ale Leonardis;Jiri Matas

  • Blood vessel segmentation methodologies in retinal images - A survey

    M.M. Fraz;P. Remagnino;A. Hoppe;B. Uyyanonvara

  • An Ensemble Classification-Based Approach Applied to Retinal Blood Vessel Segmentation

    Muhammad Moazam Fraz;Paolo Remagnino;Andreas Hoppe;Bunyarit Uyyanonvara

  • Crowd analysis: a survey

    Beibei Zhan;Dorothy N. Monekosso;Paolo Remagnino;Sergio A. Velastin

  • How deep learning extracts and learns leaf features for plant classification

    Sue Han Lee;Chee Seng Chan;Simon Joseph Mayo;Paolo Remagnino

  • Review: Plant species identification using digital morphometrics: A review

    James S. Cope;David Corney;Jonathan Y. Clark;Paolo Remagnino

  • Deep-plant: Plant identification with convolutional neural networks

    Sue Han Lee;Chee Seng Chan;Paul Wilkin;Paolo Remagnino

  • An approach to localize the retinal blood vessels using bit planes and centerline detection

    M. M. Fraz;S. A. Barman;P. Remagnino;A. Hoppe

  • Automated Detection and Classification of Oral Lesions Using Deep Learning for Early Detection of Oral Cancer

    Roshan Alex Welikala;Paolo Remagnino;Jian Han Lim;Chee Seng Chan

  • Ambient Intelligence: A New Multidisciplinary Paradigm

    P. Remagnino;G.L. Foresti

  • A review of ant algorithms

    R.J. Mullen;D. Monekosso;S. Barman;P. Remagnino

  • Active video-based surveillance system: the low-level image and video processing techniques needed for implementation

    G.L. Foresti;C. Micheloni;L. Snidaro;P. Remagnino

  • Summarizing videos with attention

    Jiri Fajtl;Hajar Sadeghi Sokeh;Vasileios Argyriou;Dorothy Monekosso

  • Model-based vehicle detection and classification using orthographic approximations

    Geoffrey D. Sullivan;Keith D. Baker;Anthony D. Worrall;C. I. Attwood

  • Shape and texture based plant leaf classification

    Thibaut Beghin;James S Cope;Paolo Remagnino;Sarah Barman

  • Video-Based Surveillance Systems: Computer Vision and Distributed Processing

    Paolo Remagnino;Carlo S. Regazzoni;Graeme A. Jones;Nikos Paragios

  • An integrated traffic and pedestrian model-based vision system

    Paolo Remagnino;Adam Baumberg;T. Grove;David C. Hogg

  • Distributed intelligence for multi-camera visual surveillance

    Paolo Remagnino;A. I. Shihab;Graeme A. Jones

  • Multi-camera colour tracking

    J. Orwell;P. Remagnino;G.A. Jones

  • Agent orientated annotation in model based visual surveillance

    P. Remagnino;T. Tan;K. Baker

  • Video-Based Surveillance Systems

    Paolo Remagnino;Graeme A. Jones;Nikos Paragios;Carlo S. Regazzoni

Frequent Co-Authors

Sergio A. Velastin
Sergio A. Velastin Queen Mary University of London
Yoshinori Kuno
Yoshinori Kuno Saitama University
Gian Luca Foresti
Gian Luca Foresti University of Udine
Tim Ellis
Tim Ellis Kingston University
John Illingworth
John Illingworth University of Surrey
George Bebis
George Bebis University of Nevada Reno
Luca Iocchi
Luca Iocchi Sapienza University of Rome
Josef Kittler
Josef Kittler University of Surrey
Jiri Matas
Jiri Matas Czech Technical University in Prague
Mohan M. Trivedi
Mohan M. Trivedi University of California, San Diego

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