DocumentCode :
36291
Title :
Algorithms for Crowd Surveillance Using Passive Acoustic Sensors Over a Multimodal Sensor Network
Author :
Agarwal, Rohit ; Kumar, Sudhakar ; Hegde, Rajesh M.
Author_Institution :
Boston Consulting Group, Gurgaon, India
Volume :
15
Issue :
3
fYear :
2015
fDate :
Mar-15
Firstpage :
1920
Lastpage :
1930
Abstract :
Crowd detection and monitoring is an active area of research because of its significance in many areas, especially law enforcement. Various sensor modalities, such as infrared imaging, video feed, received signal strength indicator, Radio-frequency identification, GPS signals, and audio tones through mobiles have been used in earlier work. In this paper, a method that uses passive acoustic sensors in a multimodal sensor network for crowd monitoring is described. This multimodal system uses three modalities, namely, carbon dioxide level, sound intensity level, and received signal strength for crowd detection and monitoring. The first two modalities are sensed using passive sensors, whereas the last one is an active sensor. This combination makes the proposed algorithms energy efficient and computationally less complex. The proposed multimodal crowd monitoring algorithm requires an effective clustering method. Hence, three clustering algorithms that utilize temporal, spatial, and spatio-temporal information are also proposed. Subsequently, an algorithm that fuses the information in different modalities is also proposed for efficient crowd monitoring. Additional contributions of this paper are the development of attenuation, reverberation, and additivity models, using real sensor deployments. Both simulation and real field experiments are conducted to evaluate the performance of the proposed algorithms in indoor and outdoor spaces. The results of crowd detection and monitoring obtained from these methods are motivating enough to use the proposed method in real small-scale deployment scenarios.
Keywords :
acoustic transducers; modal analysis; pattern clustering; reverberation; sensor fusion; GPS signal; audio tone; carbon dioxide level; crowd surveillance algorithm; effective clustering method; infrared imaging; multimodal crowd monitoring algorithm; multimodal sensor network; passive acoustic sensor; radiofrequency identification; received signal strength indicator; sound intensity level; spatiotemporal information; video feed; Clustering algorithms; Measurement; Microphones; Noise; Sensors; Surveillance; Attenuation Modeling; Attenuation modeling; Crowd Monitoring; Multi-modal Sensor Network; Spatial-Temporal Clustering; crowd monitoring; multi-modal sensor network; spatial-temporal clustering;
fLanguage :
English
Journal_Title :
Sensors Journal, IEEE
Publisher :
ieee
ISSN :
1530-437X
Type :
jour
DOI :
10.1109/JSEN.2014.2369474
Filename :
6953090
Link To Document :
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