Sensible Agent: A framework for unobtrusive interaction with proactive AR agents (opens in new tab)
Sensible Agent is a research prototype designed to move AR agents beyond explicit voice commands toward proactive, context-aware assistance. By leveraging real-time multimodal sensing of a user's environment and physical state, the framework ensures digital help is delivered unobtrusively through the most appropriate interaction modalities. This approach fundamentally reshapes human-computer interaction by anticipating user needs while minimizing cognitive and social disruption. ## Contextual Understanding via Multimodal Parsing The framework begins by analyzing the user's immediate surroundings to establish a baseline for assistance. * A Vision-Language Model (VLM) processes egocentric camera feeds from the AR headset to identify high-level activities and locations. * YAMNet, a pre-trained audio event classifier, monitors environmental noise levels to determine if audio feedback is appropriate. * The system synthesizes these inputs into a parsed context that accounts for situational impairments, such as when a user’s hands are occupied. ## Reasoning with Proactive Query Generation Once the context is established, the system determines the specific type of assistance required through a sophisticated reasoning process. * The framework uses chain-of-thought (CoT) reasoning to decompose complex problems into intermediate logical steps. * Few-shot learning, guided by examples from data collection studies, helps the model decide between actions like providing translations or displaying a grocery list. * The generator outputs a structured suggestion that includes the specific action, the query format (e.g., binary choice or icons), and the presentation modality (visual, audio, or both). ## Dynamic Modality and Interaction Management The final stage of the framework manages how the agent communicates with the user and how the user can respond without breaking their current flow. * The prototype, built on Android XR and WebXR, utilizes a UI Manager to render visual panels or generate text-to-speech (TTS) prompts based on the agent's decision. * An Input Modality Manager activates the most discreet response methods available, such as head gestures (nods), hand gestures (thumbs up), or gaze tracking. * This adaptive selection ensures that if a user is in a noisy room or a social setting, the agent can switch from verbal interaction to subtle visual cues and gesture-based confirmations. By prioritizing social awareness and context-sensitivity, Sensible Agent provides a blueprint for AR systems that feel like helpful companions rather than intrusive tools. Implementing such frameworks is essential for making proactive digital assistants practical and acceptable for long-term, everyday use in public and private spaces.