论文标题
编码器盲组压缩感应
Encoder blind combinatorial compressed sensing
论文作者
论文摘要
压缩感应研究以其最基本的形式研究了解码算法的设计,以从较低维线性测量向量中恢复足够稀疏的向量或代码。通常,假定解码器可以访问编码器矩阵,在组合情况下,该矩阵稀疏和二进制。在本文中,我们考虑了设计解码器以仅从其线性测量中恢复一组稀疏代码的问题,即无法访问编码器矩阵。为此,我们研究了从相关的线性测量矩阵中恢复编码器和稀疏编码矩阵的矩阵分解任务。本文的贡献是一种计算有效的解码算法,基于解码器的分解,具有强大的性能保证。特别是,在对稀疏编码矩阵的温和假设下,并通过部署一种新颖的随机编码器矩阵,我们证明基于解码器的分解因素以高概率和接近最佳的测量量数以最佳的测量速率以最佳的测量速率恢复了编码器和稀疏编码矩阵。此外,我们的实验证明了我们算法在实践中的功效和计算效率。除了压缩的感觉之外,我们的结果可能对在线性素描,编码理论和矩阵压缩等领域工作的研究人员感兴趣。
In its most elementary form, compressed sensing studies the design of decoding algorithms to recover a sufficiently sparse vector or code from a lower dimensional linear measurement vector. Typically it is assumed that the decoder has access to the encoder matrix, which in the combinatorial case is sparse and binary. In this paper we consider the problem of designing a decoder to recover a set of sparse codes from their linear measurements alone, that is without access to encoder matrix. To this end we study the matrix factorisation task of recovering both the encoder and sparse coding matrices from the associated linear measurement matrix. The contribution of this paper is a computationally efficient decoding algorithm, Decoder-Expander Based Factorisation, with strong performance guarantees. In particular, under mild assumptions on the sparse coding matrix and by deploying a novel random encoder matrix, we prove that Decoder-Expander Based Factorisation recovers both the encoder and sparse coding matrix at the optimal measurement rate with high probability and from a near optimal number of measurement vectors. In addition, our experiments demonstrate the efficacy and computational efficiency of our algorithm in practice. Beyond compressed sensing our results may be of interest for researchers working in areas such as linear sketching, coding theory and matrix compression.