Fine Grained Object
Fine-grained object recognition focuses on distinguishing subtle visual differences between highly similar objects within a category, a challenge exceeding the capabilities of general object recognition systems. Current research emphasizes developing robust models, often employing transformer-based architectures and graph neural networks, to handle limited data and intra-class variations, with a focus on improving data efficiency through techniques like data augmentation and model editing. This field is crucial for advancing applications such as automated visual inspection, medical image analysis, and environmental monitoring, where precise identification of specific objects is paramount.
Papers
OpticalRS-4M: Scaling Efficient Masked Autoencoder Learning on Large Remote Sensing Dataset
Fengxiang Wang, Hongzhen Wang, Di Wang, Zonghao Guo, Zhenyu Zhong, Long Lan, Jing Zhang, Zhiyuan Liu, Maosong Sun
Understanding Multi-Granularity for Open-Vocabulary Part Segmentation
Jiho Choi, Seonho Lee, Seungho Lee, Minhyun Lee, Hyunjung Shim
EgoObjects: A Large-Scale Egocentric Dataset for Fine-Grained Object Understanding
Chenchen Zhu, Fanyi Xiao, Andres Alvarado, Yasmine Babaei, Jiabo Hu, Hichem El-Mohri, Sean Chang Culatana, Roshan Sumbaly, Zhicheng Yan
Detail Reinforcement Diffusion Model: Augmentation Fine-Grained Visual Categorization in Few-Shot Conditions
Tianxu Wu, Shuo Ye, Shuhuang Chen, Qinmu Peng, Xinge You