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Recursive Least Squares Dictionary Learning Algorithm

机译:递推最小二乘字典学习算法

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We present the recursive least squares dictionary learning algorithm, RLS-DLA, which can be used for learning overcomplete dictionaries for sparse signal representation. Most DLAs presented earlier, for example ILS-DLA and K-SVD, update the dictionary after a batch of training vectors has been processed, usually using the whole set of training vectors as one batch. The training set is used iteratively to gradually improve the dictionary. The approach in RLS-DLA is a continuous update of the dictionary as each training vector is being processed. The core of the algorithm is compact and can be effectively implemented. The algorithm is derived very much along the same path as the recursive least squares (RLS) algorithm for adaptive filtering. Thus, as in RLS, a forgetting factor ¿ can be introduced and easily implemented in the algorithm. Adjusting ¿ in an appropriate way makes the algorithm less dependent on the initial dictionary and it improves both convergence properties of RLS-DLA as well as the representation ability of the resulting dictionary. Two sets of experiments are done to test different methods for learning dictionaries. The goal of the first set is to explore some basic properties of the algorithm in a simple setup, and for the second set it is the reconstruction of a true underlying dictionary. The first experiment confirms the conjectural properties from the derivation part, while the second demonstrates excellent performance.
机译:我们提出了递归最小二乘字典学习算法RLS-DLA,该算法可用于学习稀疏信号表示的过完备字典。较早提出的大多数DLA(例如ILS-DLA和K-SVD)在处理了一批训练向量后通常会使用整个训练向量集作为一批来更新字典。反复使用训练集来逐步改进字典。 RLS-DLA中的方法是在处理每个训练向量时不断更新字典。该算法的核心是紧凑的,可以有效地实现。该算法是沿着与用于自适应滤波的递归最小二乘(RLS)算法相同的路径非常推导的。因此,就像在RLS中一样,可以引入遗忘因子ƒ,并在算法中轻松实现。以适当的方式调整ƒƒâ€可使算法较少依赖初始字典,并且可以改善RLS-DLA的收敛性以及所得字典的表示能力。进行了两组实验以测试学习字典的不同方法。第一组的目的是在简单的设置中探索算法的一些基本属性,而第二组的目标是重建真正的基础字典。第一个实验从推导部分证实了猜想性质,而第二个实验则证明了出色的性能。

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