DocumentCode
254039
Title
Socially-Aware Large-Scale Crowd Forecasting
Author
Alahi, Alexandre ; Ramanathan, Vignesh ; Li Fei-Fei
fYear
2014
fDate
23-28 June 2014
Firstpage
2211
Lastpage
2218
Abstract
In crowded spaces such as city centers or train stations, human mobility looks complex, but is often influenced only by a few causes. We propose to quantitatively study crowded environments by introducing a dataset of 42 million trajectories collected in train stations. Given this dataset, we address the problem of forecasting pedestrians´ destinations, a central problem in understanding large-scale crowd mobility. We need to overcome the challenges posed by a limited number of observations (e.g. sparse cameras), and change in pedestrian appearance cues across different cameras. In addition, we often have restrictions in the way pedestrians can move in a scene, encoded as priors over origin and destination (OD) preferences. We propose a new descriptor coined as Social Affinity Maps (SAM) to link broken or unobserved trajectories of individuals in the crowd, while using the OD-prior in our framework. Our experiments show improvement in performance through the use of SAM features and OD prior. To the best of our knowledge, our work is one of the first studies that provides encouraging results towards a better understanding of crowd behavior at the scale of million pedestrians.
Keywords
computer vision; image sensors; pedestrians; OD; SAM; cameras; city centers; crowded spaces; human mobility; large-scale crowd mobility; origin and destination preferences; pedestrian appearance cues; pedestrian destination forecasting; social affinity maps; socially-aware large-scale crowd forecasting; train stations; Cameras; Forecasting; Greedy algorithms; Monitoring; Optimization; Tracking; Trajectory; crowd; detection; forecasting; od matrix; pedestrian; tracking;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Vision and Pattern Recognition (CVPR), 2014 IEEE Conference on
Conference_Location
Columbus, OH
Type
conf
DOI
10.1109/CVPR.2014.283
Filename
6909680
Link To Document