战场文本信息的稀疏表示分类

Jingzhi Liu, Xu Shun, Wang Kai, Zhichun Gan
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引用次数: 3

摘要

近年来,基于稀疏表示的分类在许多目标识别和分类任务中取得了优异的成绩。然而,高计算成本是限制这些方法在处理时间和计算能力受到限制的战场信息处理场景中的适用性的主要障碍。本文研究了一种快速高效的战场文本信息稀疏表示分类方案,该方案利用了稀疏系数的块稀疏性。针对这种低复杂度的分类方法,提出了一种新的稀疏逼近算法。实验结果表明,利用文本信息的稀疏结构的分类算法在分类精度和计算效率上都优于普通稀疏表示分类方法。
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Sparse representation classification for battlefield textual information
Sparse representation based classification has recently been shown to provide excellent results in many object recognition and classification tasks. The high cost of computing, however, is a major obstacle that limits the applicability of these methods in battlefield information process scenarios where process time and computational power is restricted. In this paper, we study a fast and computationally efficient sparse representation classification scheme for battlefield textual information in which the block sparsity of sparse coefficients is exploited. A novel sparse approximation algorithm tailored for this low complexity classification method is proposed. Experiment results show that our classification algorithm that leverages the sparse structure of the textual information outperforms plain sparse representation classification procedures in both classification accuracy and computationally efficiency.
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