Lightweight Visual Reasoning for Socially-Aware Robots
Alessio Galatolo, Ronald Cumbal, Alexandros Rouchitsas, Katie Winkle, Didem G\"urd\"ur Broo, Ginevra Castellano

TL;DR
This paper introduces a lightweight feedback module that enhances vision-language models for social robot interactions by enabling scene reinterpretation through a second pass, improving performance on navigation, description, and human-robot interaction tasks.
Contribution
It presents a novel language-to-vision feedback mechanism that improves multimodal reasoning in robotic perception with minimal additional parameters.
Findings
Improved accuracy in navigation and human-robot interaction tasks.
Enhanced scene understanding through iterative reinterpretation.
Achieved these improvements with less than 3% increase in model parameters.
Abstract
Robots operating in shared human environments must not only navigate, interact, and detect their surroundings, they must also interpret and respond to dynamic, and often unpredictable, human behaviours. Although recent advances have shown promise in enhancing robotic perception and instruction-following using Vision-Language Models (VLMs), they remain limited in addressing the complexities of multimodal human-robot interactions (HRI). Motivated by this challenge, we introduce a lightweight language-to-vision feedback module that closes the loop between an LLM and the vision encoder in VLMs. The module projects image-token hidden states through a gated Multi-Layer Perceptron (MLP) back into the encoder input, prompting a second pass that reinterprets the scene under text context. We evaluate this approach on three robotics-centred tasks: navigation in a simulated environment (Habitat),…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Social Robot Interaction and HRI · Robot Manipulation and Learning
