Nanyi Fei
13 papers · 2021–2025 · 7 conferences · across top CS/AI conferences
Achievements
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🐝 Cross-Pollinator (4) 🌉 Interdisciplinary Bridge 🧭 Keyword Pioneer 🌍 Conference Polyglot (7) 🌈 Renaissance Researcher (6)
🌍
Conference Polyglot
(7)
🌈
Renaissance Researcher
(6)
🤝
Dynamic Duo
(13)
🏆
Keyword Champion
(2)
💎
Century Club
(13)
⚡
Prolific Year
(5)
🗃️
Keyword Collector
(57)
🔥
Unstoppable
(5)
Conferences
NIPS (4)
CVPR (2)
ICLR (2)
UAI (2)
AAAI (1)
COLING (1)
ICCV (1)
Top co-authors
Keywords
few-shot learning
(3)
vision-language model
(3)
contrastive learning
(3)
multimodal learning
(2)
video-language modeling
(2)
image-text retrieval
(2)
multi-task learning
(1)
cross-modal learning
(1)
zero-shot learning
(1)
self-supervised learning
(1)
text classification
(1)
catastrophic forgetting
(1)
feature embedding
(1)
video understanding
(1)
disentangled representation
(1)
image generation
(1)
nearest neighbor classification
(1)
cross-modal alignment
(1)
latent space
(1)
cross-modal retrieval
(1)
Papers
Leveraging Large Vision-Language Model as User Intent-Aware Encoder for Composed Image Retrieval
AAAI 2025
FineCLIP: Self-distilled Region-based CLIP for Better Fine-grained Understanding
NIPS 2024
VDT: General-purpose Video Diffusion Transformers via Mask Modeling
ICLR 2024
Improvable Gap Balancing for Multi-Task Learning
UAI 2023
COTS: Collaborative Two-Stream Vision-Language Pre-Training Model for Cross-Modal Retrieval
CVPR 2022
Visual Prompt Tuning for Few-Shot Text Classification
COLING 2022
BMU-MoCo: Bidirectional Momentum Update for Continual Video-Language Modeling
NIPS 2022
LGDN: Language-Guided Denoising Network for Video-Language Modeling
NIPS 2022
L2M-GAN: Learning To Manipulate Latent Space Semantics for Facial Attribute Editing
CVPR 2021
Compressed Video Contrastive Learning
NIPS 2021
Z-Score Normalization, Hubness, and Few-Shot Learning
ICCV 2021
MELR: Meta-Learning via Modeling Episode-Level Relationships for Few-Shot Learning
ICLR 2021
Contrastive prototype learning with augmented embeddings for few-shot learning
UAI 2021