Fine Grained
Fine-grained analysis focuses on achieving high precision and detail in various domains, moving beyond coarse-grained classifications. Current research emphasizes developing models capable of handling nuanced distinctions, often employing techniques like multi-modal learning, transformer architectures, and diffusion models to achieve this fine-grained understanding in tasks ranging from image captioning and object detection to legal analysis and speech processing. This detailed level of analysis is crucial for advancing fields like medical diagnosis, legal technology, and scientific discovery, enabling more accurate and insightful interpretations of complex data. The development of robust and efficient fine-grained models is driving progress across numerous scientific and practical applications.
Papers
Video-Text as Game Players: Hierarchical Banzhaf Interaction for Cross-Modal Representation Learning
Peng Jin, Jinfa Huang, Pengfei Xiong, Shangxuan Tian, Chang Liu, Xiangyang Ji, Li Yuan, Jie Chen
Train/Test-Time Adaptation with Retrieval
Luca Zancato, Alessandro Achille, Tian Yu Liu, Matthew Trager, Pramuditha Perera, Stefano Soatto
CLIP for All Things Zero-Shot Sketch-Based Image Retrieval, Fine-Grained or Not
Aneeshan Sain, Ayan Kumar Bhunia, Pinaki Nath Chowdhury, Subhadeep Koley, Tao Xiang, Yi-Zhe Song
TAPS3D: Text-Guided 3D Textured Shape Generation from Pseudo Supervision
Jiacheng Wei, Hao Wang, Jiashi Feng, Guosheng Lin, Kim-Hui Yap
Open-Vocabulary Object Detection using Pseudo Caption Labels
Han-Cheol Cho, Won Young Jhoo, Wooyoung Kang, Byungseok Roh
Cascading Hierarchical Networks with Multi-task Balanced Loss for Fine-grained hashing
Xianxian Zeng, Yanjun Zheng
Coreset Sampling from Open-Set for Fine-Grained Self-Supervised Learning
Sungnyun Kim, Sangmin Bae, Se-Young Yun
Scene Graph Based Fusion Network For Image-Text Retrieval
Guoliang Wang, Yanlei Shang, Yong Chen