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Accelerated Proximal Algorithm for Finding the Dantzig Selector and Source Separation Using Dictionary Learning

机译:加速近端算法用于查找Dantzig选择器和使用字典学习的源分离

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In most of the applications, signals acquired from different sensors are composite and are corrupted by some noise. In the presence of noise, separation of composite signals into its components without losing information is quite challenging. Separation of signals becomes more difficult when only a few samples of the noisy undersampled composite signals are given. In this paper, we aim to find Dantzig selector with overcomplete dictionaries using Accelerated Proximal Gradient Algorithm (APGA) for recovery and separation of undersampled composite signals. We have successfully diagnosed leukemia disease using our model and compared it with Alternating Direction Method of Multipliers (ADMM). As a test case, we have also recovered Electrocardiogram (ECG) signal with great accuracy from its noisy version using this model along with Proximity Operator based Algorithm (POA) for comparison. With less computational complexity compared with ADMM and POA, APGA has a good clustering capability depicted from the leukemia diagnosis.
机译:在大多数应用中,从不同传感器获取的信号是复合材料,并通过一些噪声损坏。在存在噪声的情况下,将复合信号分离到其组件中而不会失去信息是非常具有挑战性的。当仅给出嘈杂的噪声的未采样信号的少数样本时,信号的分离变得更加困难。在本文中,我们的目的是使用加速近端梯度算法(APGA)来找到Dantzig选择器,用于恢复和分离下取样复合信号。我们使用我们的模型成功地诊断出白血病疾病,并将其与乘数(ADMM)的交替方向方法进行比较。作为测试用例,我们还使用该模型与其嘈杂的版本一起恢复了心电图(ECG)信号,以及基于接近的操作员的算法(POA)进行比较。与ADMM和POA相比,具有较少的计算复杂性,APGA具有从白血病诊断中描述的良好聚类能力。

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