Learning Behavior Patterns from Video: A Data-driven Framework for Agent-based Crowd Modeling
نویسندگان
چکیده
This paper proposes a generic data-driven crowd modeling framework to generate crowd behaviors that can match the video data. The proposed framework uses a dual-layer mechanism to model the crowd behaviors. The bottom layer models the microscopic collision avoidance behaviors, while the top layer models the macroscopic crowd behaviors such as the goal selection patterns and the path navigation patterns. Based on the dual-layer mechanism, an automatic learning method is proposed to learn the model components from video data. To validate its effectiveness, the proposed framework is applied to generate the crowd behaviors in New York Grand Central Terminal. The simulation results demonstrate that the proposed method is able to construct effective model that can generate the desired emergent crowd behaviors and can offer promising prediction performance.
منابع مشابه
A Data-driven Method for Crowd Simulation using a Holonification Model
In this paper, we present a data-driven method for crowd simulation with holonification model. With this extra module, the accuracy of simulation will increase and it generates more realistic behaviors of agents. First, we show how to use the concept of holon in crowd simulation and how effective it is. For this reason, we use simple rules for holonification. Using real-world data, we model the...
متن کاملA Hyper-Heuristic Framework for Agent-Based Crowd Modeling and Simulation: (Extended Abstract)
This paper proposes a hyper-heuristic crowd modeling framework to generate realistic crowd dynamics that can match video data. In the proposed framework, motions of agents are driven by a high-level heuristic (HH) which intelligently selects way-points for agents based on the current situations. Three low-level heuristics are defined and used as building blocks of the HH. Based on the newly def...
متن کاملA Framework for Video-Driven Crowd Synthesis
We present a framework for video-driven crowd synthesis. Motion vectors extracted from input crowd video are processed to compute global motion paths. These paths encode the dominant motions observed in the input video. These paths are then fed into a behavior-based crowd simulation framework, which is responsible for synthesizing crowd animations that respect the motion patterns observed in th...
متن کاملLearning Crowd Behavior
We present here our ongoing work on learning crowd behavior. The steering behavior of crowds from various video sources is tracked and databases of examples are generated. These examples contain various stimuli (metrics) that could affect the persons behavior. These databases are used to learn rules for crowd steering in an agent based framework using regression algorithms and more specifically...
متن کاملA Clustering Based Approach for Realistic and Efficient Data-Driven Crowd Simulation
In this paper, we present a data-driven approach to generate realistic steering behaviors for virtual crowds in crowd simulation. We take advantage of both rule-based models and data-driven models by applying the interaction patterns discovered from crowd videos. Unlike existing example-based models in which current states are matched to states extracting from crowd videos directly, our approac...
متن کامل