GRLGApr 2, 2025

Gen-C: Populating Virtual Worlds with Generative Crowds

arXiv:2504.01924v31 citationsh-index: 11
Originality Highly original
AI Analysis

This addresses the need for more realistic crowd simulations in virtual environments, though it is incremental by building on existing agent-based methods with a novel generative approach.

The paper tackles the problem of simulating realistic high-level crowd behaviors in virtual worlds by introducing Gen-C, a generative framework that produces coherent crowd scenarios with agent-agent and agent-environment interactions, demonstrating effectiveness in diverse scenarios like a University Campus and Train Station.

Over the past two decades, researchers have made significant steps in simulating agent-based human crowds, yet most efforts remain focused on low-level tasks such as collision avoidance, path following, and flocking. Realistic simulations, however, require modeling high-level behaviors that emerge from agents interacting with each other and with their environment over time. We introduce Generative Crowds (Gen-C), a generative framework that produces crowd scenarios capturing agent-agent and agent-environment interactions, shaping coherent high-level crowd plans. To avoid the labor-intensive process of collecting and annotating real crowd video data, we leverage large language models (LLMs) to bootstrap synthetic datasets of crowd scenarios. We propose a time-expanded graph representation, encoding actions, interactions, and spatial context. Gen-C employs a dual Variational Graph Autoencoder (VGAE) architecture that jointly learns connectivity patterns and node features conditioned on textual and structural signals, overcoming the limitations of direct LLM generation to enable scalable, environment-aware multi-agent crowd simulations. We demonstrate the effectiveness of Gen-C on scenarios with diverse behaviors such as a University Campus and a Train Station, showing that it generates heterogeneous crowds, coherent interactions, and high-level decision-making patterns consistent with real-world crowd dynamics.

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