Multi-objects recognition for distributed intelligent sensor networks

Haibo He, Sheng Chen, Yuan Cao, S. Desai, Myron E. Hohil
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引用次数: 1

Abstract

This paper proposes an innovative approach for multi-objects recognition for homeland security and defense based intelligent sensor networks. Unlike the conventional way of information analysis, data mining in such networks is typically characterized with high information ambiguity/uncertainty, data redundancy, high dimensionality and real-time constrains. Furthermore, since a typical military based network normally includes multiple mobile sensor platforms, ground forces, fortified tanks, combat flights, and other resources, it is critical to develop intelligent data mining approaches to fuse different information resources to understand dynamic environments, to support decision making processes, and finally to achieve the goals. This paper aims to address these issues with a focus on multi-objects recognition. Instead of classifying a single object as in the traditional image classification problems, the proposed method can automatically learn multiple objectives simultaneously. Image segmentation techniques are used to identify the interesting regions in the field, which correspond to multiple objects such as soldiers or tanks. Since different objects will come with different feature sizes, we propose a feature scaling method to represent each object in the same number of dimensions. This is achieved by linear/nonlinear scaling and sampling techniques. Finally, support vector machine (SVM) based learning algorithms are developed to learn and build the associations for different objects, and such knowledge will be adaptively accumulated for objects recognition in the testing stage. We test the effectiveness of proposed method in different simulated military environments.
分布式智能传感器网络的多目标识别
提出了一种基于国土安全与国防智能传感器网络的多目标识别创新方法。与传统的信息分析方式不同,此类网络中的数据挖掘具有信息模糊性/不确定性高、数据冗余、高维性和实时性约束等特点。此外,由于典型的军事网络通常包括多个移动传感器平台、地面部队、强化坦克、战斗飞行和其他资源,因此开发智能数据挖掘方法来融合不同的信息资源以了解动态环境、支持决策过程并最终实现目标至关重要。本文旨在解决这些问题,重点是多目标识别。与传统图像分类问题中对单个目标进行分类不同,该方法可以同时自动学习多个目标。图像分割技术用于识别田野中有趣的区域,这些区域对应于多个目标,如士兵或坦克。由于不同的对象会有不同的特征大小,我们提出了一种特征缩放方法来表示相同维数的每个对象。这是通过线性/非线性缩放和采样技术实现的。最后,开发基于支持向量机(SVM)的学习算法来学习和构建不同对象之间的关联,并在测试阶段自适应地积累这些知识用于对象识别。我们在不同的模拟军事环境中测试了该方法的有效性。
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