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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Incremental subspace learning via non-negative matrix factorization
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Incremental subspace learning via non-negative matrix factorization

机译:通过非负矩阵分解进行增量子空间学习

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摘要

In this paper we introduce an incremental non-negative matrix factorization (INMF) scheme in order to overcome the difficulties that conventional NMF has in online processing of large data sets. The proposed scheme enables incrementally updating its factors by reflecting the influence of each observation on the factorization appropriately. This is achieved via a weighted cost function which also allows controlling the memorylessness of the factorization. Unlike conventional NMF, with its incremental nature and weighted cost function the INMF scheme successfully utilizes adaptability to dynamic data content changes with a lower computational complexity. Test results reported for two video applications, namely background modeling in video surveillance and clustering, demonstrate that INMF is capable of online representing data content while reducing dimension significantly.
机译:在本文中,我们介绍了一种增量式非负矩阵分解(INMF)方案,以克服传统NMF在处理大数据集时遇到的困难。所提出的方案能够通过适当地反映每个观察对因式分解的影响来逐步更新其因数。这是通过加权成本函数实现的,该函数还可以控制分解的无记忆性。与常规NMF不同,INMF方案具有增量性质和加权成本函数,它以较低的计算复杂度成功地利用了对动态数据内容变化的适应性。针对两个视频应用(即视频监视和群集中的背景建模)报告的测试结果表明,INMF能够在线表示数据内容,同时显着减小尺寸。

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