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D-Index & Metrics

Computer Science

D-Index
48
Citations
8580
World Ranking
6213
National Ranking
822

Overview

Boxin Shi is affiliated with Peking University in China and has a significant body of work in the fields of computer science and engineering. Their research primarily focuses on computer vision and pattern recognition, with contributions also spanning computer graphics, electrical and electronic engineering, computational mechanics, and artificial intelligence.

The scientist's extensive research output includes important topics such as advanced vision and imaging, image enhancement techniques, computer graphics and visualization techniques, advanced image processing techniques, advanced memory and neural computing, 3D shape modeling and analysis, and image and signal denoising methods.

Boxin Shi has contributed to a number of publications, frequently appearing in well-known venues:

  • arXiv (Cornell University)
  • IEEE Transactions on Pattern Analysis and Machine Intelligence
  • Proceedings of the AAAI Conference on Artificial Intelligence
  • International Journal of Computer Vision
  • IEEE Transactions on Multimedia

Some of their recent papers include:

  • "Deep Photometric Stereo for Non-Lambertian Surfaces" (2020), published in IEEE Transactions on Pattern Analysis and Machine Intelligence
  • "Multi-View Photometric Stereo: A Robust Solution and Benchmark Dataset for Spatially Varying Isotropic Materials" (2020), published in IEEE Transactions on Image Processing
  • "Distilling Portable Generative Adversarial Networks for Image Translation" (2020), published in Proceedings of the AAAI Conference on Artificial Intelligence
  • "1000× Faster Camera and Machine Vision with Ordinary Devices" (2022), published in Engineering
  • "NormAttention-PSN: A High-frequency Region Enhanced Photometric Stereo Network with Normalized Attention" (2022), published in International Journal of Computer Vision

Collaborations form a key aspect of their research, with frequent co-authors including Si Li, Tiejun Huang, Shuchen Weng, Renjie Wan, and Chao Xu.

Best Publications

  • Active Printed Materials for Complex Self-Evolving Deformations

    Dan Raviv;Wei Zhao;Carrie McKnelly;Athina Papadopoulou

  • Robust photometric stereo via low-rank matrix completion and recovery

    Lun Wu;Arvind Ganesh;Boxin Shi;Yasuyuki Matsushita

  • Data-Free Learning of Student Networks

    Hanting Chen;Yunhe Wang;Chang Xu;Zhaohui Yang

  • DIST: Rendering Deep Implicit Signed Distance Function With Differentiable Sphere Tracing

    Shaohui Liu;Yinda Zhang;Songyou Peng;Boxin Shi

  • CARS: Continuous Evolution for Efficient Neural Architecture Search

    Zhaohui Yang;Yunhe Wang;Xinghao Chen;Boxin Shi

  • Polarized 3D: High-Quality Depth Sensing with Polarization Cues

    Achuta Kadambi;Vage Taamazyan;Boxin Shi;Ramesh Raskar

  • Real-Time Intermediate Flow Estimation for Video Frame Interpolation

    Unknown

  • A Benchmark Dataset and Evaluation for Non-Lambertian and Uncalibrated Photometric Stereo

    Boxin Shi;Zhe Wu;Zhipeng Mo;Dinglong Duan

  • A Benchmark Dataset and Evaluation for Non-Lambertian and Uncalibrated Photometric Stereo

    Boxin Shi;Zhipeng Mo;Zhe Wu;Dinglong Duan

  • AdderNet: Do We Really Need Multiplications in Deep Learning?

    Hanting Chen;Yunhe Wang;Chunjing Xu;Boxin Shi

  • Benchmarking Single-Image Reflection Removal Algorithms

    Renjie Wan;Boxin Shi;Ling-Yu Duan;Ah-Hwee Tan

  • Self-calibrating photometric stereo

    Boxin Shi;Yasuyuki Matsushita;Yichen Wei;Chao Xu

  • Deep Photometric Stereo Network

    Hiroaki Santo;Masaki Samejima;Yusuke Sugano;Boxin Shi

  • Occluded Imaging with Time-of-Flight Sensors

    Achuta Kadambi;Hang Zhao;Boxin Shi;Ramesh Raskar

  • Polarimetric Multi-view Stereo

    Zhaopeng Cui;Jinwei Gu;Boxin Shi;Ping Tan

  • Bi-Polynomial Modeling of Low-Frequency Reflectances

    Boxin Shi;Ping Tan;Yasuyuki Matsushita;Katsushi Ikeuchi

  • Depth of field guided reflection removal

    Renjie Wan;Boxin Shi;Tan Ah Hwee;Alex C. Kot

  • CRRN: Multi-scale Guided Concurrent Reflection Removal Network

    Renjie Wan;Boxin Shi;Ling-Yu Duan;Ah-Hwee Tan

  • Self-Calibrating Deep Photometric Stereo Networks

    Guanying Chen;Kai Han;Boxin Shi;Yasuyuki Matsushita

  • SSF-CNN: Spatial and Spectral Fusion with CNN for Hyperspectral Image Super-Resolution

    Xian-Hua Han;Boxin Shi;YinQiang Zheng

  • Self-Similarity Constrained Sparse Representation for Hyperspectral Image Super-Resolution

    Xian-Hua Han;Boxin Shi;Yinqiang Zheng

  • Joint Filtering of Intensity Images and Neuromorphic Events for High-Resolution Noise-Robust Imaging

    Zihao W. Wang;Peiqi Duan;Oliver Cossairt;Aggelos Katsaggelos

  • RIFE: Real-Time Intermediate Flow Estimation for Video Frame Interpolation.

    Zhewei Huang;Tianyuan Zhang;Wen Heng;Boxin Shi

Frequent Co-Authors

Chang Xu
Chang Xu University of Sydney
Alex C. Kot
Alex C. Kot Nanyang Technological University
Ling-Yu Duan
Ling-Yu Duan Peking University
Yasuyuki Matsushita
Yasuyuki Matsushita Microsoft Research Asia Tokyo
Chao Xu
Chao Xu Peking University
Ping Tan
Ping Tan Simon Fraser University
Sai-Kit Yeung
Sai-Kit Yeung Hong Kong University of Science and Technology
Qi Tian
Qi Tian Huawei Technologies (China)
Yinqiang Zheng
Yinqiang Zheng National Institute of Informatics

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