Compressive high speed flow microscopy with motion contrast (Conference Presentation)

SPIE BiOS Pub Date : 2016-06-28 DOI:10.1117/12.2216602
B. Bosworth, J. R. Stroud, D. Tran, T. Tran, S. Chin, M. Foster
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引用次数: 0

Abstract

High-speed continuous imaging systems are constrained by analog-to-digital conversion, storage, and transmission. However, real video signals of objects such as microscopic cells and particles require only a few percent or less of the full video bandwidth for high fidelity representation by modern compression algorithms. Compressed Sensing (CS) is a recent influential paradigm in signal processing that builds real-time compression into the acquisition step by computing inner products between the signal of interest and known random waveforms and then applying a nonlinear reconstruction algorithm. Here, we extend the continuous high-rate photonically-enabled compressed sensing (CHiRP-CS) framework to acquire motion contrast video of microscopic flowing objects. We employ chirp processing in optical fiber and high-speed electro-optic modulation to produce ultrashort pulses each with a unique pseudorandom binary sequence (PRBS) spectral pattern with 325 features per pulse at the full laser repetition rate (90 MHz). These PRBS-patterned pulses serve as random structured illumination inside a one-dimensional (1D) spatial disperser. By multiplexing the PRBS patterns with a user-defined repetition period, the difference signal y_i=phi_i (x_i - x_{i-tau}) can be computed optically with balanced detection, where x is the image signal, phi_i is the PRBS pattern, and tau is the repetition period of the patterns. Two-dimensional (2D) image reconstruction via iterative alternating minimization to find the best locally-sparse representation yields an image of the edges in the flow direction, corresponding to the spatial and temporal 1D derivative. This provides both a favorable representation for image segmentation and a sparser representation for many objects that can improve image compression.
运动对比压缩高速流动显微镜(会议报告)
高速连续成像系统受到模数转换、存储和传输的限制。然而,真实的视频信号的对象,如微观细胞和粒子只需要百分之几或更少的全视频带宽为高保真表示的现代压缩算法。压缩感知(CS)是最近在信号处理中有影响力的一种范式,它通过计算感兴趣的信号与已知随机波形之间的内积,然后应用非线性重构算法,将实时压缩构建到采集步骤中。在这里,我们扩展了连续高速光子压缩传感(CHiRP-CS)框架,以获取微观流动物体的运动对比度视频。我们在光纤中使用啁啾处理和高速电光调制来产生超短脉冲,每个脉冲具有独特的伪随机二值序列(PRBS)光谱模式,每个脉冲在全激光重复频率(90 MHz)下具有325个特征。这些prbs图案的脉冲在一维(1D)空间分散器中充当随机结构照明。通过将PRBS模式与用户自定义的重复周期进行复用,可以通过平衡检测光学计算差分信号y_i=phi_i (x_i - x_{i-tau}),其中x为图像信号,phi_i为PRBS模式,tau为模式的重复周期。二维(2D)图像重建通过迭代交替最小化来找到最佳的局部稀疏表示,得到流动方向的边缘图像,对应于空间和时间的一维导数。这既为图像分割提供了有利的表示,又为许多可以改进图像压缩的对象提供了更稀疏的表示。
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