Title
Concept Based Hybrid Fusion of Multimodal Event Signals
Abstract
Recent years have seen a significant increase in the number of sensors and resulting event related sensor data, allowing for a better monitoring and understanding of real-world events and situations. Event-related data come from not only physical sensors (e.g., CCTV cameras, webcams) but also from social or microblogging platforms (e.g., Twitter). Given the wide-spread availability of sensors, we observe that sensors of different modalities often independently observe the same events. We argue that fusing multimodal data about an event can be helpful for more accurate detection, localization and detailed description of events of interest. However, multimodal data often include noisy observations, varying information densities and heterogeneous representations, which makes the fusion a challenging task. In this paper, we propose a hybrid fusion approach that takes the spatial and semantic characteristics of sensor signals about events into account. For this, we first adopt the concept of an image-based representation that expresses the situation of particular visual concepts (e.g. "crowdedness", "people marching") called Cmage for both physical and social sensor data. Based on this Cmage representation, we model sparse sensor information using a Gaussian process, fuse multimodal event signals with a Bayesian approach, and incorporate spatial relations between the sensor and social observations. We demonstrate the effectiveness of our approach as a proof-of-concept over real-world data. Our early results show that the proposed approach can reliably reduce the sensor-related noise, locate the event place, improve event detection reliability, and add semantic context so that the fused data provides a better picture of the observed events.
Year
DOI
Venue
2016
10.1109/ISM.2016.0013
2016 IEEE International Symposium on Multimedia (ISM)
Keywords
Field
DocType
multimodal fusion,situation understanding,multisensor data analysis,events
Spatial relation,Modalities,Data mining,Computer science,Fusion,Gaussian process,Artificial intelligence,Fuse (electrical),Computer vision,Social media,Microblogging,Semantic context,Bayesian probability
Conference
ISBN
Citations 
PageRank 
978-1-5090-4572-3
1
0.35
References 
Authors
13
6
Name
Order
Citations
PageRank
Yuhui Wang1141.46
Christian von der Weth233.42
Yehong Zhang361.08
Kian Hsiang Low443732.78
Vivek Singh5224.46
Mohan Kankanhalli63825299.56