Conventional sparse phase retrieval schemes can recover sparse signals from the magnitude of linear measurements only up to a global phase ambiguity. This work proposes a novel approach that instead utilizes the magnitude of affine measurements to achieve ambiguity-free signal reconstruction. The proposed method relies on two-stage approach that consists of support identification followed by the exact recovery of nonzero signal entries. In the noise-free case, perfect support identification using a simple counting rule is guaranteed subject to a mild condition on the signal sparsity, and subsequent exact recovery of the nonzero signal entries can be obtained in closed-form. The proposed approach is then extended to two noisy scenarios, namely, sparse noise (or outliers) and non-sparse bounded noise. For both cases, perfect support identification is still ensured under mild conditions on the noise model, namely, the support size for sparse outliers and the power of the bounded noise. Under perfect support identification, exact signal recovery can be achieved using a simple majority rule for the sparse noise scenario, and reconstruction up to a bounded error can be achieved using linear least-squares (LS) estimation for the non-sparse bounded noise scenario. The obtained analytic performance guarantee for the latter case also sheds light on the construction of the sensing matrix and bias vector. In fact, we show that a near optimal performance can be achieved with high probability by the random generation of the nonzero entries of the sparse sensing matrix and bias vector according to the uniform distribution over a circle. Computer simulations using both synthetic and real-world data sets are provided to demonstrate the effectiveness of the proposed scheme.
翻译:在无噪音的情况下,使用简单计数规则的完善支持性识别在信号紧张度的温和条件下得到保证,随后以封闭式形式获得非零信号条目的确切恢复。然后,拟议方法将扩大到两种噪音的噪音,即:微小的噪音(或外部)和非封闭式的噪音。对于这两种情况,在噪音模型的温和条件下,仍然确保准确的支持性识别,即:稀散的外部信号的支撑性大小和约束性噪音的威力。在完全支持性识别的情况下,使用简单的多数规则,可以实现精确的信号恢复,然后以封闭式形式获得非零信号条目的准确恢复。然后,将拟议方法推广到两种吵闹的情景,即利用微小的噪音(或外部)和非封闭式的噪音。对于这两种情况,在微弱的噪音模型中,仍然确保准确的支持性识别,即稀散的外部信号的支撑性大小和约束性噪音的威力。在精确的识别下,使用简单多数规则,在闭合式的噪音情景下进行重建,然后利用最小的最小最小的合成的合成结构估计,在接近尾部的计算机的准确度上显示不精确的矢量的准确度,然后以显示我们获得的准确的精确的准确度。