【24h】

Comparative analysis of sensing matrices for compressed sensed thermal images

机译:压缩感测热图像感测矩阵的比较分析

获取原文
获取原文并翻译 | 示例

摘要

In the conventional sampling process, in order to reconstruct the signal perfectly Nyquist-Shannon sampling theorem needs to be satisfied. Nyquist-Shannon theorem is a sufficient condition but not a necessary condition for perfect reconstruction. The field of compressive sensing provides a stricter sampling condition when the signal is known to be sparse or compressible. Compressive sensing contains three main problems: sparse representation, measurement matrix and reconstruction algorithm. This paper describes and implements 14 different sensing matrices for thermal image reconstruction using Basis Pursuit algorithm available in the YALL1 package. The sensing matrices include Gaussian random with and without orthogonal rows, Bernoulli random with bipolar entries and binary entries, Fourier with and without dc basis vector, Toeplitz with Gaussian and Bernoulli entries, Circulant with Gaussian and Bernoulli entries, Hadamard with and without dc basis vector, Normalised Hadamard with and without dc basis vector. Orthogonalization of the rows of the Gaussian sensing matrix and normalisation of Hadamard matrix greatly improves the speed of reconstruction. Semi-deterministic Toeplitz and Circulant matrices provide lower PSNR and require more iteration for reconstruction. The Fourier and Hadamard deterministic sensing matrices without dc basis vector worked well in preserving the object of interest, thus paving the way for object specific image reconstruction based on sensing matrices. The sparsifying basis used in this paper was Discrete Cosine Transform and Fourier Transform.
机译:在常规采样过程中,为了完美地重构信号,需要满足尼奎斯特-香农采样定理。 Nyquist-Shannon定理是完美重构的充分条件,但不是必要条件。当已知信号稀疏或可压缩时,压缩感测领域将提供更严格的采样条件。压缩感测包含三个主要问题:稀疏表示,测量矩阵和重构算法。本文使用YALL1软件包中提供的Basis Pursuit算法描述并实现了14种不同的传感矩阵,用于热图像重建。感测矩阵包括具有和不具有正交行的高斯随机,具有双极项和二进制项的伯努利随机,具有和不具有dc基矢量的傅立叶,具有高斯和贝努利条目的Toeplitz,具有高斯和伯努利条目的循环,具有和不具有dc基矢量的Hadamard ,带和不带dc基矢量的标准化Hadamard。高斯感测矩阵行的正交化和Hadamard矩阵的归一化大大提高了重建速度。半确定性Toeplitz和Circulant矩阵提供较低的PSNR,并且需要更多的迭代来进行重建。没有dc基矢量的Fourier和Hadamard确定性感测矩阵在保存感兴趣的对象方面效果很好,从而为基于感测矩阵的特定对象图像重建铺平了道路。本文使用的稀疏基础是离散余弦变换和傅立叶变换。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号