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
From WSI-level to Patch-level: Structure Prior Guided Binuclear Cell Fine-grained Detection
Baomin Wang, Geng Hu, Dan Chen, Lihua Hu, Cheng Li, Yu An, Guiping Hu, Guang Jia
Arbitrary Shape Text Detection via Segmentation with Probability Maps
Shi-Xue Zhang, Xiaobin Zhu, Lei Chen, Jie-Bo Hou, Xu-Cheng Yin
KGxBoard: Explainable and Interactive Leaderboard for Evaluation of Knowledge Graph Completion Models
Haris Widjaja, Kiril Gashteovski, Wiem Ben Rim, Pengfei Liu, Christopher Malon, Daniel Ruffinelli, Carolin Lawrence, Graham Neubig
CLOWER: A Pre-trained Language Model with Contrastive Learning over Word and Character Representations
Borun Chen, Hongyin Tang, Jiahao Bu, Kai Zhang, Jingang Wang, Qifan Wang, Hai-Tao Zheng, Wei Wu, Liqian Yu
Conviformers: Convolutionally guided Vision Transformer
Mohit Vaishnav, Thomas Fel, Ivań Felipe Rodríguez, Thomas Serre
Towards Open-vocabulary Scene Graph Generation with Prompt-based Finetuning
Tao He, Lianli Gao, Jingkuan Song, Yuan-Fang Li
SelF-Eval: Self-supervised Fine-grained Dialogue Evaluation
Longxuan Ma, Ziyu Zhuang, Weinan Zhang, Mingda Li, Ting Liu