Title
Ensemble detection: A new architecture for multisensor data fusion with ensemble learning for object detection
Abstract
In this work, we propose a framework for multimodal data fusion at decision level under a multilayer hierarchical ensemble learning architecture. The architecture provides a generative discriminative model for probability density estimations and decreases the entropy of the data throughout the vector spaces. The architecture is implemented for human motion detection problem, where the motion analysis problem is formulated as a multi-class classification problem on audio-visual data. The vector space transformations are analyzed by the investigation of probability density and entropy transitions of data across the levels. The architecture provides an efficient sensor fusion framework for the robotics research, object classification, target detection and tracking applications.
Year
DOI
Venue
2009
10.1109/ISCIS.2009.5291800
Guzelyurt
Keywords
Field
DocType
image classification,image motion analysis,learning (artificial intelligence),object detection,sensor fusion,audio-visual data,ensemble detection,generative discriminative model,human motion detection problem,motion analysis problem,multi-class classification problem,multilayer hierarchical ensemble learning architecture,multisensor data fusion,object detection,probability density estimation,Ensemble learning,data fusion,kernel methods,object detection,probabilistic models
Object detection,Pattern recognition,Computer science,Feature extraction,Sensor fusion,Artificial intelligence,Statistical classification,Kernel method,Contextual image classification,Ensemble learning,Discriminative model
Conference
ISBN
Citations 
PageRank 
978-1-4244-5023-7
0
0.34
References 
Authors
4
3
Name
Order
Citations
PageRank
Mete Ozay110614.50
Okan Akalin200.34
Yarman-Vural, F.T.3514.06