Faculty of Engineering and Technology, International Islamic University Islamabad, Islamabad 44000, Pakistan.
Faculty of Electrical Engineering, Air University, Islamabad, Pakistan.
Biomed Res Int. 2019 Nov 15;2019:7861651. doi: 10.1155/2019/7861651. eCollection 2019.
Compressive sensing (CS) offers compression of data below the Nyquist rate, making it an attractive solution in the field of medical imaging, and has been extensively used for ultrasound (US) compression and sparse recovery. In practice, CS offers a reduction in data sensing, transmission, and storage. Compressive sensing relies on the sparsity of data; i.e., data should be sparse in original or in some transformed domain. A look at the literature reveals that rich variety of algorithms have been suggested to recover data using compressive sensing from far fewer samples accurately, but with tradeoffs for efficiency. This paper reviews a number of significant CS algorithms used to recover US images from the undersampled data along with the discussion of CS in 3D US images. In this paper, sparse recovery algorithms applied to US are classified in five groups. Algorithms in each group are discussed and summarized based on their unique technique, compression ratio, sparsifying transform, 3D ultrasound, and deep learning. Research gaps and future directions are also discussed in the conclusion of this paper. This study is aimed to be beneficial for young researchers intending to work in the area of CS and its applications, specifically to US.
压缩感知 (CS) 提供了低于奈奎斯特率的数据压缩,使其成为医学成像领域极具吸引力的解决方案,并已广泛应用于超声 (US) 压缩和稀疏恢复。在实践中,CS 提供了数据感测、传输和存储的减少。压缩感知依赖于数据的稀疏性,即数据应该在原始域或某些变换域中是稀疏的。从文献中可以看出,已经提出了丰富多样的算法来从远少于样本的情况下准确地恢复数据,但效率上存在权衡。本文综述了用于从欠采样数据中恢复 US 图像的多种重要 CS 算法,并讨论了 CS 在 3D US 图像中的应用。本文将应用于 US 的稀疏恢复算法分为五类。根据其独特的技术、压缩比、稀疏变换、3D 超声和深度学习,对每组算法进行了讨论和总结。本文还在结论中讨论了研究差距和未来方向。本研究旨在为有志于从事 CS 及其应用,特别是 US 领域研究的年轻研究人员提供帮助。