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
Fine-Grained VR Sketching: Dataset and Insights
Ling Luo, Yulia Gryaditskaya, Yongxin Yang, Tao Xiang, Yi-Zhe Song
Fine-grained Classification of Solder Joints with {\alpha}-skew Jensen-Shannon Divergence
Furkan Ulger, Seniha Esen Yuksel, Atila Yilmaz, Dincer Gokcen
Data-Centric AI Paradigm Based on Application-Driven Fine-Grained Dataset Design
Huan Hu, Yajie Cui, Zhaoxiang Liu, Shiguo Lian
MGG: Accelerating Graph Neural Networks with Fine-grained intra-kernel Communication-Computation Pipelining on Multi-GPU Platforms
Yuke Wang, Boyuan Feng, Zheng Wang, Tong Geng, Kevin Barker, Ang Li, Yufei Ding
Learning Deep Optimal Embeddings with Sinkhorn Divergences
Soumava Kumar Roy, Yan Han, Mehrtash Harandi, Lars Petersson
MAFormer: A Transformer Network with Multi-scale Attention Fusion for Visual Recognition
Yunhao Wang, Huixin Sun, Xiaodi Wang, Bin Zhang, Chao Li, Ying Xin, Baochang Zhang, Errui Ding, Shumin Han
Fine-Grained Distribution-Dependent Learning Curves
Olivier Bousquet, Steve Hanneke, Shay Moran, Jonathan Shafer, Ilya Tolstikhin
SIM-Trans: Structure Information Modeling Transformer for Fine-grained Visual Categorization
Hongbo Sun, Xiangteng He, Yuxin Peng