CVDec 19, 2025

Generative Human-Object Interaction Detection via Differentiable Cognitive Steering of Multi-modal LLMs

arXiv:2512.17640v1h-index: 50
Originality Highly original
AI Analysis

This addresses the limitation of existing methods in generalizing to unseen interactions in open-world scenarios, offering a unified paradigm for HOI detection.

The paper tackles the problem of human-object interaction detection by reformulating it from closed-set classification to open-vocabulary generation, using a framework that injects visual evidence into a frozen multi-modal LLM, achieving state-of-the-art closed-set performance and strong zero-shot generalization.

Human-object interaction (HOI) detection aims to localize human-object pairs and the interactions between them. Existing methods operate under a closed-world assumption, treating the task as a classification problem over a small, predefined verb set, which struggles to generalize to the long-tail of unseen or ambiguous interactions in the wild. While recent multi-modal large language models (MLLMs) possess the rich world knowledge required for open-vocabulary understanding, they remain decoupled from existing HOI detectors since fine-tuning them is computationally prohibitive. To address these constraints, we propose \GRASP-HO}, a novel Generative Reasoning And Steerable Perception framework that reformulates HOI detection from the closed-set classification task to the open-vocabulary generation problem. To bridge the vision and cognitive, we first extract hybrid interaction representations, then design a lightweight learnable cognitive steering conduit (CSC) module to inject the fine-grained visual evidence into a frozen MLLM for effective reasoning. To address the supervision mismatch between classification-based HOI datasets and open-vocabulary generative models, we introduce a hybrid guidance strategy that coupling the language modeling loss and auxiliary classification loss, enabling discriminative grounding without sacrificing generative flexibility. Experiments demonstrate state-of-the-art closed-set performance and strong zero-shot generalization, achieving a unified paradigm that seamlessly bridges discriminative perception and generative reasoning for open-world HOI detection.

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