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LOCALITY PRESERVING KSVD FOR NONLINEAR MANIFOLD LEARNING

机译:用于非线性流形学习的局部ksvd

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Discovering the intrinsic low-dimensional structure from high-dimensional observation space (e.g., images, videos), in many cases, is critical to successful recognition. However, many existing nonlinear manifold learning (NML) algorithms have quadratic or cubic complexity in the number of data, which makes these algorithms computationally exorbitant in processing real-world large-scale datasets. Randomly selecting a subset of data points is very likely to place NML algorithms at the risk of local optima, leading to poor performance. This paper proposes a novel algorithm called Locality Preserving KSVD (LP-KSVD), which can effectively learn a small number of dictionary atoms as locality-preserving landmark points on the nonlinear manifold. Based on the atoms, the computational complexity of NML algorithms can be greatly reduced while the low-dimensional embedding quality is improved. Experimental results show that LP-KSVD successfully preserves the geometric structure of various nonlinear manifolds and it outperforms state-of-the-art dictionary learning algorithms (MOD, K-SVD and LLC) in our preliminary study on face recognition.
机译:在许多情况下发现来自高维观察空间(例如,图像,视频)的内在的低维结构对于成功识别至关重要。然而,许多现有的非线性歧管学习(NML)算法在数据的数量中具有二次或立方体复杂性,这使得这些算法在处理现实世界的大规模数据集中计算出计算地过高。随机选择数据点子集很可能会在局部最佳的风险下放置NML算法,导致性能差。本文提出了一种名为局部性ksvd(lp-ksvd)的新颖算法,其可以有效地学习少量的字典原子作为非线性歧管上的位置保存的地标点。基于原子,在提高低维嵌入质量的同时,可以大大减少NML算法的计算复杂性。实验结果表明,LP-KSVD成功地保留了各种非线性歧管的几何结构,并且在我们对人脸识别的初步研究中优于最先进的字典学习算法(Mod,K-SVD和LLC)。

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