On a Class of Orthonormal Algorithms for Principal and Minor Subspace Tracking

Journal of VLSI signal processing systems for signal, image and video technology(2024)

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摘要
This paper elaborates on a new class of orthonormal power-based algorithms for fast estimation and tracking of the principal or minor subspace of a vector sequence. The proposed algorithms are closely related to the natural power method that has the fastest convergence rate among many power-based methods such as the Oja method, the projection approximation subspace tracking (PAST) method, and the novel information criterion (NIC) method. A common feature of the proposed algorithms is the exact orthonormality of the weight matrix at each iteration. The orthonormality is implemented in a most efficient way. Besides the property of orthonormality, the new algorithms offer, as compared to other power based algorithms, a better numerical stability and a linear computational complexity.
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关键词
adaptive algorithm,orthonormality,principal & minor component analysis,subspace tracking
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