一种基于特征的车辆识别的视听传感器融合方法

A. Klausner, A. Tengg, C. Leistner, Stefan Erb, B. Rinner
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引用次数: 14

摘要

在本文中,我们介绍了我们的嵌入式在线数据融合软件框架,称为I-SENSE。讨论了基于支持向量机的融合模型和决策建模方法。由于系统的复杂性和遗传方法,引入了一种面向数据的模型。本文的主要焦点是针对我们提取声学和视觉数据特征的技术。以“交通监控”为例进行了实验研究,结果证明了多级数据融合方法的可行性。
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An audio-visual sensor fusion approach for feature based vehicle identification
In this article we present our software framework for embedded online data fusion, called I-SENSE. We discuss the fusion model and the decision modeling approach using support vector machines. Due to the system complexity and the genetic approach a data oriented model is introduced. The main focus of the article is targeted at our techniques for extracting features of acoustic-and visual-data. Experimental results of our "traffic surveillance" case study demonstrate the feasibility of our multi-level data fusion approach.
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