Ziming Zhang
28 papers · 2011–2025 · 8 conferences · across top CS/AI conferences
Achievements
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π Academic Marathon (14) π Conference Polyglot (8) π Interdisciplinary Bridge π§ Keyword Pioneer π Cross-Pollinator (12)
π
Cross-Pollinator
(12)
π
Renaissance Researcher
(6)
πΊοΈ
Taxonomy Completionist
(46)
π
Keyword Champion
π
Grand Slam
β‘
Prolific Year
(6)
π
Conference Pioneer
ποΈ
Keyword Collector
(137)
π
Trend Setter
π
Century Club
(28)
π₯
Unstoppable
(6)
β
The Questioner
Conferences
CVPR (8)
ICCV (5)
NIPS (5)
WACV (5)
ICLR (2)
AAAI (1)
ECCV (1)
ICML (1)
Top co-authors
Keywords
convolutional neural network
(4)
deep learning
(3)
representation learning
(2)
homography estimation
(2)
contrastive learning
(2)
point cloud
(2)
image alignment
(2)
3d vision
(2)
bilevel optimization
(2)
deep neural network
(2)
gradient descent
(2)
point cloud completion
(2)
neural network optimization
(2)
chamfer distance
(2)
neural network training
(1)
feature learning
(1)
stochastic gradient descent
(1)
vision transformer
(1)
robust optimization
(1)
dimensionality reduction
(1)
Papers
Active feature acquisition via explainability-driven ranking
ICML 2025
GPS: A Probabilistic Distributional Similarity with Gumbel Priors for Set-to-Set Matching
ICLR 2025
Understanding Hyperbolic Metric Learning Through Hard Negative Sampling
WACV 2024
Learning Lightweight Neural Networks via Channel-Split Recurrent Convolution
WACV 2023
PRISE: Demystifying Deep Lucas-Kanade With Strongly Star-Convex Constraints for Multimodel Image Alignment
CVPR 2023
InfoCD: A Contrastive Chamfer Distance Loss for Point Cloud Completion
NIPS 2023
Hyperbolic Chamfer Distance for Point Cloud Completion
ICCV 2023
Robust Object Detection with Inaccurate Bounding Boxes
ECCV 2022
Robust Structured Declarative Classifiers for 3D Point Clouds: Defending Adversarial Attacks With Implicit Gradients
CVPR 2022
EllipsoidNet: Ellipsoid Representation for Point Cloud Classification and Segmentation
WACV 2022
SBO-RNN: Reformulating Recurrent Neural Networks via Stochastic Bilevel Optimization
NIPS 2021
Deep Lucas-Kanade Homography for Multimodal Image Alignment
CVPR 2021
Self-Supervised Geometric Features Discovery via Interpretable Attention for Vehicle Re-Identification and Beyond
ICCV 2021
RNNs Incrementally Evolving on an Equilibrium Manifold: A Panacea for Vanishing and Exploding Gradients?
ICLR 2020
Towards Learning Affine-Invariant Representations via Data-Efficient CNNs
WACV 2020
Automatic Building and Labeling of HD Maps with Deep Learning
AAAI 2020
Self-Orthogonality Module: A Network Architecture Plug-in for Learning Orthogonal Filters
WACV 2020
f-GAIL: Learning f-Divergence for Generative Adversarial Imitation Learning
NIPS 2020
Learning to Segment 3D Point Clouds in 2D Image Space
CVPR 2020
BPGrad: Towards Global Optimality in Deep Learning via Branch and Pruning
CVPR 2018
Attention-Based Multimodal Fusion for Video Description
ICCV 2017
Convergent Block Coordinate Descent for Training Tikhonov Regularized Deep Neural Networks
NIPS 2017
Zero-Shot Learning via Joint Latent Similarity Embedding
CVPR 2016
Efficient Training of Very Deep Neural Networks for Supervised Hashing
CVPR 2016
Zero-Shot Learning via Semantic Similarity Embedding
ICCV 2015
Group Membership Prediction
ICCV 2015
BING: Binarized Normed Gradients for Objectness Estimation at 300fps
CVPR 2014
Learning Anchor Planes for Classification
NIPS 2011