LCrowdV: Generating Labeled Videos for Simulation-Based Crowd Behavior Learning
نویسندگان
چکیده
We present a novel procedural framework to generate an arbitrary number of labeled crowd videos (LCrowdV). The resulting crowd video datasets are used to design accurate algorithms or training models for crowded scene understanding. Our overall approach is composed of two components: a procedural simulation framework for generating crowd movements and behaviors, and a procedural rendering framework to generate different videos or images. Each video or image is automatically labeled based on the environment, number of pedestrians, density, behavior (agent personality), flow, lighting conditions, viewpoint, noise, etc. Furthermore, we can increase the realism by combining syntheticallygenerated behaviors with real-world background videos. We demonstrate the benefits of LCrowdV over prior lableled crowd datasets, by augmenting real dataset with it and improving the accuracy in pedestrian detection. LCrowdV has been made available as an online resource.
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