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D-Index & Metrics

Computer Science

D-Index
36
Citations
10418
World Ranking
10992
National Ranking
4572

Overview

Kristin J. Dana is affiliated with Rutgers, The State University of New Jersey in the United States. Their research spans primarily the fields of Computer Science and Engineering, with a notable focus on Computer Vision and Pattern Recognition. Other areas of study include Plant Science, Artificial Intelligence, Electrical and Electronic Engineering, and Geology.

The scientist's work addresses a range of topics, including:

  • Advanced Image and Video Retrieval Techniques
  • 3D Surveying and Cultural Heritage
  • Advanced Neural Network Applications
  • Video Surveillance and Tracking Methods
  • Robotics and Sensor-Based Localization
  • Horticultural and Viticultural Research
  • Smart Agriculture and AI

Recent publications by Kristin J. Dana include:

  • "Differential Viewpoints for Ground Terrain Material Recognition," 2020, IEEE Transactions on Pattern Analysis and Machine Intelligence
  • "Vision on the bog: Cranberry crop risk evaluation with deep learning," 2022, Computers and Electronics in Agriculture
  • "Towards Single Stage Weakly Supervised Semantic Segmentation," 2021, arXiv (Cornell University)
  • "Camera-Based Light Emitter Localization Using Correlation of Optical Pilot Sequences," 2022, IEEE Access
  • "Single Stage Weakly Supervised Semantic Segmentation of Complex Scenes," 2023, 2023 IEEE/CVF Winter Conference on Applications of Computer Vision (WACV)

The venues where Kristin J. Dana frequently publishes include:

  • arXiv (Cornell University)
  • IEEE Transactions on Pattern Analysis and Machine Intelligence
  • Computers and Electronics in Agriculture
  • IEEE Access
  • 2023 IEEE/CVF Winter Conference on Applications of Computer Vision (WACV)

Kristin J. Dana collaborates regularly with several coauthors, among whom are Faith Johnson, Ashwin Ashok, Peri Akiva, Peter V. Oudemans, and Shubham Jain. These collaborative efforts have contributed to a diverse set of publications and research projects over time.

Best Publications

  • Reflectance and texture of real-world surfaces

    Kristin J. Dana;Bram van Ginneken;Shree K. Nayar;Jan J. Koenderink

  • Reflectance and texture of real-world surfaces

    K.J. Dana;S.K. Nayar;B. van Ginneken;J.J. Koenderink

  • Context Encoding for Semantic Segmentation

    Hang Zhang;Kristin Dana;Jianping Shi;Zhongyue Zhang

  • Automated Crack Detection on Concrete Bridges

    Prateek Prasanna;Kristin J. Dana;Nenad Gucunski;Basily B. Basily

  • Real-time scene stabilization and mosaic construction

    M. Hansen;P. Anandan;K. Dana;G. van der Wal

  • Deep TEN: Texture Encoding Network

    Hang Zhang;Jia Xue;Kristin Dana

  • Compact representation of bidirectional texture functions

    O.G. Cula;K.J. Dana

  • 3D Texture Recognition Using Bidirectional Feature Histograms

    Oana G. Cula;Kristin J. Dana

  • BRDF/BTF measurement device

    K.J. Dana

  • Challenge: mobile optical networks through visual MIMO

    Ashwin Ashok;Marco Gruteser;Narayan Mandayam;Jayant Silva

  • Light Field Messaging With Deep Photographic Steganography

    Eric Wengrowski;Kristin Dana

  • Deep Texture Manifold for Ground Terrain Recognition

    Jia Xue;Hang Zhang;Kristin Dana

  • Multi-style Generative Network for Real-Time Transfer

    Hang Zhang;Kristin J. Dana

  • Automated GPR Rebar Analysis for Robotic Bridge Deck Evaluation

    Parneet Kaur;Kristin J. Dana;Francisco A. Romero;Nenad Gucunski

  • Device for convenient measurement of spatially varying bidirectional reflectance

    Kristin J. Dana;Jing Wang

  • Multi-style Generative Network for Real-time Transfer

    Hang Zhang;Kristin Dana

  • Reflectance and Texture of Real-World Surfaces Authors

    Kristin J. Dana;Shree K. Nayar;Bram Van Ginneken;Jan J. Koenderink

  • Bidirectional Reflection Distribution Function of Thoroughly Pitted Surfaces

    Jan J. Koenderink;Andrea J. Van Doorn;Kristin J. Dana;Shree Nayar

  • Bidirectional imaging and modeling of skin texture

    O.G. Cula;K.J. Dana;F.P. Murphy;F.P. Murphy;F.P. Murphy;B.K. Rao

  • Computer-vision based crack detection and analysis

    Prateek Prasanna;Kristin Dana;Nenad Gucunski;Basily Basily

  • Skin Texture Modeling

    Oana G. Cula;Kristin J. Dana;Frank P. Murphy;Babar K. Rao

Frequent Co-Authors

Marco Gruteser
Marco Gruteser Rutgers, The State University of New Jersey
Narayan B. Mandayam
Narayan B. Mandayam Rutgers, The State University of New Jersey
Ko Nishino
Ko Nishino Kyoto University
Shree K. Nayar
Shree K. Nayar Columbia University
Jan J. Koenderink
Jan J. Koenderink Delft University of Technology
Richard Howard
Richard Howard Rutgers, The State University of New Jersey
Padmanabhan Anandan
Padmanabhan Anandan Microsoft (United States)
Bram van Ginneken
Bram van Ginneken Radboud University
Yanyong Zhang
Yanyong Zhang University of Science and Technology of China
Hung Manh La
Hung Manh La University of Nevada Reno

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