UP-VLA: A Unified Understanding and Prediction Model for Embodied Agent
This addresses the problem of poor spatial understanding in embodied agents for robotics, representing an incremental advance by integrating prediction into existing VLA frameworks.
The paper tackles the limitation of Vision-Language-Action models in capturing low-level spatial features for embodied control by introducing UP-VLA, a unified model with understanding and prediction objectives, achieving a 33% improvement on the Calvin ABC-D benchmark and better success in real-world manipulation tasks.
Recent advancements in Vision-Language-Action (VLA) models have leveraged pre-trained Vision-Language Models (VLMs) to improve the generalization capabilities. VLMs, typically pre-trained on vision-language understanding tasks, provide rich semantic knowledge and reasoning abilities. However, prior research has shown that VLMs often focus on high-level semantic content and neglect low-level features, limiting their ability to capture detailed spatial information and understand physical dynamics. These aspects, which are crucial for embodied control tasks, remain underexplored in existing pre-training paradigms. In this paper, we investigate the training paradigm for VLAs, and introduce \textbf{UP-VLA}, a \textbf{U}nified VLA model training with both multi-modal \textbf{U}nderstanding and future \textbf{P}rediction objectives, enhancing both high-level semantic comprehension and low-level spatial understanding. Experimental results show that UP-VLA achieves a 33% improvement on the Calvin ABC-D benchmark compared to the previous state-of-the-art method. Additionally, UP-VLA demonstrates improved success rates in real-world manipulation tasks, particularly those requiring precise spatial information.