Visual Representation
Visual representation research focuses on creating effective ways for computers to understand and utilize visual information, primarily aiming to bridge the gap between raw image data and higher-level semantic understanding. Current research emphasizes developing robust and efficient visual representations through various techniques, including contrastive learning, masked image modeling, and the integration of vision models with large language models (LLMs), often employing transformer-based architectures. These advancements have significant implications for numerous applications, such as robotic control, medical image analysis, and improving the capabilities of multimodal AI systems.
Papers
Evaluating Robustness of Visual Representations for Object Assembly Task Requiring Spatio-Geometrical Reasoning
Chahyon Ku, Carl Winge, Ryan Diaz, Wentao Yuan, Karthik Desingh
CAPro: Webly Supervised Learning with Cross-Modality Aligned Prototypes
Yulei Qin, Xingyu Chen, Yunhang Shen, Chaoyou Fu, Yun Gu, Ke Li, Xing Sun, Rongrong Ji