UniT: Unified Geometry Learning with Group Autoregressive Transformer
Researchers have introduced UniT, a novel unified model designed to advance geometry perception by integrating various capabilities into a single framework. This model utilizes a Group Autoregressive Transformer, treating groups of sensor observations as autoregressive units to predict point maps in an anchor-free and scale-adaptive manner. UniT effectively unifies diverse view configurations for both online and offline settings, incorporates a KV caching mechanism for long-horizon scalability, and employs a scale-adaptive geometry loss for improved metric-scale generalization. The model demonstrates state-of-the-art performance across ten benchmarks and seven representative tasks. AI
IMPACT Establishes a unified framework for diverse geometry perception tasks, potentially improving efficiency and performance in 3D reconstruction and sensor data analysis.