Department of Opto-electronic Engineering, Beihang University, Beijing, 100191, China.
SUPA, School of Physics and Astronomy, University of Glasgow, Glasgow, G12 8QQ, UK.
Sci Rep. 2017 Jun 14;7(1):3464. doi: 10.1038/s41598-017-03725-6.
Single-pixel imaging is an alternate imaging technique particularly well-suited to imaging modalities such as hyper-spectral imaging, depth mapping, 3D profiling. However, the single-pixel technique requires sequential measurements resulting in a trade-off between spatial resolution and acquisition time, limiting real-time video applications to relatively low resolutions. Compressed sensing techniques can be used to improve this trade-off. However, in this low resolution regime, conventional compressed sensing techniques have limited impact due to lack of sparsity in the datasets. Here we present an alternative compressed sensing method in which we optimize the measurement order of the Hadamard basis, such that at discretized increments we obtain complete sampling for different spatial resolutions. In addition, this method uses deterministic acquisition, rather than the randomized sampling used in conventional compressed sensing. This so-called 'Russian Dolls' ordering also benefits from minimal computational overhead for image reconstruction. We find that this compressive approach performs as well as other compressive sensing techniques with greatly simplified post processing, resulting in significantly faster image reconstruction. Therefore, the proposed method may be useful for single-pixel imaging in the low resolution, high-frame rate regime, or video-rate acquisition.
单像素成像技术是一种替代成像技术,特别适用于高光谱成像、深度测绘、3D 轮廓等成像模式。然而,单像素技术需要进行顺序测量,因此在空间分辨率和采集时间之间存在权衡,限制了实时视频应用的分辨率相对较低。压缩感知技术可用于改善这种权衡。然而,在这个低分辨率范围内,由于数据集的稀疏性有限,传统的压缩感知技术的影响有限。在这里,我们提出了一种替代的压缩感知方法,其中我们优化了 Hadamard 基的测量顺序,以便在离散增量处,我们针对不同的空间分辨率获得完全的采样。此外,该方法使用确定性采集,而不是传统压缩感知中使用的随机采样。这种所谓的“俄罗斯套娃”排序也得益于图像重建的最小计算开销。我们发现,这种压缩方法的性能与其他压缩感知技术一样好,并且后处理大大简化,从而显著加快了图像重建速度。因此,该方法可能适用于低分辨率、高帧率或视频速率采集的单像素成像。