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D-Index & Metrics

Computer Science

D-Index
70
Citations
29466
World Ranking
1830
National Ranking
34

Overview

Dani Lischinski is affiliated with the Hebrew University of Jerusalem in Israel. Their research primarily spans the field of Computer Science, with a focus on Computer Vision and Pattern Recognition.

Their research contributions include work across several subfields such as:

  • Computer Vision and Pattern Recognition
  • Artificial Intelligence
  • Computer Graphics and Computer-Aided Design
  • Computational Mechanics
  • Control and Systems Engineering

Main topics in their work cover:

  • Generative Adversarial Networks and Image Synthesis
  • Multimodal Machine Learning Applications
  • Computer Graphics and Visualization Techniques
  • Domain Adaptation and Few-Shot Learning
  • 3D Shape Modeling and Analysis
  • Video Analysis and Summarization
  • Advanced Neural Network Applications

They have published papers in several notable venues, including:

  • arXiv (Cornell University)
  • ACM Transactions on Graphics
  • 2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)
  • 2021 IEEE/CVF International Conference on Computer Vision (ICCV)
  • Proceedings of the AAAI Conference on Artificial Intelligence

Recent significant papers include:

  • "Blended Diffusion for Text-driven Editing of Natural Images" (2022), published at the 2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)
  • "Blended Latent Diffusion" (2023), published in ACM Transactions on Graphics
  • "DO-Conv: Depthwise Over-Parameterized Convolutional Layer" (2022), published in IEEE Transactions on Image Processing
  • "ShapeConv: Shape-aware Convolutional Layer for Indoor RGB-D Semantic Segmentation" (2021), published at the 2021 IEEE/CVF International Conference on Computer Vision (ICCV)
  • "Unpaired motion style transfer from video to animation" (2020), published in ACM Transactions on Graphics

Frequent co-authors collaborating with Lischinski include:

  • Daniel Cohen-Or
  • Omri Avrahami
  • Ohad Fried
  • Hui Huang
  • Matan Levy

Best Publications

  • A Closed-Form Solution to Natural Image Matting

    A. Levin;D. Lischinski;Y. Weiss

  • Colorization using optimization

    Anat Levin;Dani Lischinski;Yair Weiss

  • Gradient domain high dynamic range compression

    Raanan Fattal;Dani Lischinski;Michael Werman

  • Edge-preserving decompositions for multi-scale tone and detail manipulation

    Zeev Farbman;Raanan Fattal;Dani Lischinski;Richard Szeliski

  • A Closed Form Solution to Natural Image Matting

    A. Levin;D. Lischinski;Y. Weiss

  • Joint bilateral upsampling

    Johannes Kopf;Michael F. Cohen;Dani Lischinski;Matt Uyttendaele

  • Synthesizing realistic facial expressions from photographs

    Frédéric Pighin;Jamie Hecker;Dani Lischinski;Richard Szeliski

  • Crowds by Example

    Alon Lerner;Yiorgos Chrysanthou;Dani Lischinski

  • Deep photo: model-based photograph enhancement and viewing

    Johannes Kopf;Boris Neubert;Billy Chen;Michael Cohen

  • Blended Diffusion for Text-driven Editing of Natural Images.

    Omri Avrahami;Dani Lischinski;Ohad Fried

  • Synthesizing realistic facial expressions from photographs

    Unknown

  • Spectral Matting

    A. Levin;A. Rav Acha;D. Lischinski

  • Spectral Matting

    A. Levin;A. Rav-Acha;D. Lischinski

  • Interactive local adjustment of tonal values

    Dani Lischinski;Zeev Farbman;Matt Uyttendaele;Richard Szeliski

  • Hierarchical image caching for accelerated walkthroughs of complex environments

    Jonathan Shade;Dani Lischinski;David H. Salesin;Tony DeRose

  • Non-rigid dense correspondence with applications for image enhancement

    Yoav HaCohen;Eli Shechtman;Dan B. Goldman;Dani Lischinski

  • StyleSpace Analysis: Disentangled Controls for StyleGAN Image Generation

    Zongze Wu;Dani Lischinski;Eli Shechtman

  • Blended Latent Diffusion

    Unknown

  • Colorization by example

    Revital Irony;Daniel Cohen-Or;Dani Lischinski

  • Texture mixing and texture movie synthesis using statistical learning

    Z. Bar-Joseph;R. El-Yaniv;D. Lischinski;M. Werman

  • Joint Bi-layer Optimization for Single-Image Rain Streak Removal

    Lei Zhu;Chi-Wing Fu;Dani Lischinski;Pheng-Ann Heng

  • Solid texture synthesis from 2D exemplars

    Johannes Kopf;Chi-Wing Fu;Daniel Cohen-Or;Oliver Deussen

Frequent Co-Authors

Daniel Cohen-Or
Daniel Cohen-Or Tel Aviv University
Baoquan Chen
Baoquan Chen Peking University
Hui Huang
Hui Huang Shenzhen University
Johannes Kopf
Johannes Kopf Facebook (United States)
Michael Werman
Michael Werman Hebrew University of Jerusalem
David Salesin
David Salesin Google (United States)
Oliver Deussen
Oliver Deussen University of Konstanz
Anat Levin
Anat Levin Technion – Israel Institute of Technology
Eli Shechtman
Eli Shechtman Adobe Systems (United States)
Minglun Gong
Minglun Gong University of Guelph

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