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首页> 外文期刊>International Journal of Monitoring and Surveillance Technologies Research >Manifold Transfer Subspace Learning (MTSL) for Applications in Aided Target Recognition
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Manifold Transfer Subspace Learning (MTSL) for Applications in Aided Target Recognition

机译:用于辅助目标识别的应用程序的歧管传输子空间学习(MTSL)

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This article describes how transfer subspace learning has recently gained popularity for its ability to perform cross-dataset and cross-domain object recognition. The ability to leverage existing data without the need for additional data collections is attractive for monitoring and surveillance technology, specifically for aided target recognition applications. Transfer subspace learning enables the incorporation of sparse and dynamically collected data into existing systems that utilize large databases. Manifold learning has also gained popularity for its success at dimensionality reduction. In this contribution, Manifold learning and transfer subspace learning are combined to create a new system capable of achieving high target recognition rates. The manifold learning technique used in this contribution is diffusion maps, a nonlinear dimensionality reduction technique based on a heat diffusion analogy. The transfer subspace learning technique used is Transfer Fisher's Linear Discriminative Analysis. The new system, manifold transfer subspace learning, sequentially integrates manifold learning and transfer subspace learning. In this article, the ability of the new techniques to achieve high target recognition rates for cross-dataset and cross-domain applications is illustrated using a variety of diverse datasets.
机译:本文介绍了转移子空间学习如何最近获得跨DataSet和跨域对象识别的能力。在不需要其他数据收集的情况下利用现有数据的能力对于监控和监视技术具有吸引力,专门用于辅助目标识别应用。转移子空间学习使得能够将稀疏和动态收集的数据结合到利用大型数据库的现有系统中。随着维度减少,流畅的学习也得到了其成功的普及。在此贡献中,组合歧管学习和转移子空间学习以创建能够实现高目标识别率的新系统。本贡献中使用的歧管学习技术是扩散图,基于热扩散类比的非线性维度降低技术。使用的转移子空间学习技术是转移渔民的线性鉴别分析。新系统,歧管转移子空间学习,顺序地集成了多元化学习和转移子空间学习。在本文中,使用各种不同的数据集来说明新技术实现跨数据集和跨域应用的高目标识别率的能力。

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