Experiment and Results

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Presentation transcript:

Experiment and Results Illumination-direction multiplexing FPM using Hemispherical Digital Condensers Sueli Skinner Ramos, Maged Alotaibi, Ali Alamri, Bader Alharbi, Mohammed Alfarraj, and Luis Grave de Peralta, Department of Physics and Astronomy, Texas Tech University IDM-FPM Experiment and Results Fourier Ptychographic Microscopy (FPM) is based on a the collection of several images obtained by illuminating the sample from different directions. FPM can provide image resolution below the Rayleigh resolution limit, and is useful since it can recover the unmeasured phase of the optical disturbance at the sample plane. Unfortunately, FPM requires the collection of a large number of images and long exposure times. Illuminating the sample simultaneously from multiple directions is a natural solution to this problem. We explore the use of a hemispherical digital condenser to implement illumination direction multiplexing(IDM)-FPM. Experimental Set-up (a) Flow chart of IDM-FPM phase-recovery algorithm steps. (b) The value of the modified amplitude of the OD in each RP point is proportional to the value of the calculated amplitude of the OD in the same RP point. The proportionality constant in each point depends on the ratio between the measured experimental intensity and the calculated intensity at that point. IDM-FPM Algorithm STEP 1: Start (iteration index m=0) by assuming an arbitrary amplitude (am=0(r)) and phase (pm=0 (r)) of the optical disturbance (OD) at the microscope’s real plane (RP) IDM-FPM Simulations STEP 2: The initial approximation (m=1, j=1) for the actual OD at the microscope’s Fourier plane (FP) is obtained by applying a two-dimensional Fourier transform (F) operation to STEP 1 Arbitrary Sample Simulation results corresponding to an arbitrary sample (red blood cells), and its arbitrary phase (profile picture). This sample was selected to study the IDM-FPM capabilities on arbitrary non-periodic samples. a) Experimental Arrangement. b) Hemispherical digital condenser (HDC) illumination source, formed by 4 concentric ring-like rows with numerical aperture values of NAc = 0.58, 0.73, 0.89, 0.97, and it’s LED configurations: Pattern’s 1-4 (a-b) Ideal OD, intensity, and phase, respectively. (c) Illumination direction distribution of LEDs in HDC. (d), (f), (h), (j) Intensity and (e), (g), (i), (k) phase corresponding to ODs obtained using the IDM-FPM algorithm with NAs = 1.77. (d-k) Images obtained using IDM produced by simultaneously turning ON (d-e) 4 and (j-k) 16 consecutive LEDs in the same HDC row, (f-g) 4 consecutive LEDs in the same HDC column, and (h-i) 16 LEDs in each quarter of the HDC. STEP 3: The ODs associated to each of the single illumination directions (q = 1, 2,…, N ), which contribute to the first (j=1) multiplexed low-resolution RP image, are calculated as (RIGHT) Examples of experimental RP (a, c, e, g) and FP (b, d, f, h,) multiplexed images corresponding to a Ronchi Ruling with period p = 1.67 μm, and using a NAo = 0.8 objective lens. Images were obtained with illumination Pattern 1 (a-b), Pattern 2 (c-d), Pattern 3 (e-f), and Pattern 4 (g-h). Arrows added to FP images group consecutive zero-order diffraction spots corresponding to the IDM pattern used. where Wo is a circular window of radius NAo (objective lens’s numerical aperture) and centered at k = 0. STEP 4: The ODs in the RP (RP-ODs) corresponding to each FP-OD are then obtained by applying an inverse 2D Fourier transform (F-1) operation as follows STEP 5: The amplitude of the calculated RP-ODs are modified in the following way Periodic Sample Simulation results corresponding to a periodic structure, a Ronchi Ruling with 600 lines/mm (1.67 μm period). where IRP,j is the intensity of the experimental (or simulated) multiplexed low-resolution RP image number j. STEP 6: The FP-ODs corresponding to each RP-OD are recalculated with the following equation (LEFT) (a), (c), (e), (g) Intensities and (b), (d), (f), (h) phases, respectively, corresponding to ODs calculated using the IDM –FPM algorithm and multiplexed RP images. Images were obtained with illumination Pattern 1 (a-b), Pattern 2 (c-d), Pattern 3 (e-f), and Pattern 4 (g-h). STEP 7: The next approximation of the synthetic FP-OD is calculated in the following way The results shown in (g-h) demonstrate that IDM-FPM using ring-like illumination permits to obtain the OD corresponding to a photonic crystal sample. Good correspondence between experiment and simulations demonstrated that this can be accomplished using several simple, but practical, illumination patterns. (a), (c), (e), (g) Intensities and (b), (d), (f), (h) phases corresponding to OD obtained using the IDM-FPM algorithm with NAs = 1.77. Images (a-b) and (g-h) were produced using IDM with 4 and 16 consecutive LEDs in the same row, respectively, (c-d) 4 consecutive LEDs in the same HDC column, and (e-f) 16 LEDs in each quarter of the HDC. The same number of periods appear in all the images. This constitutes the first algorithm iteration (m=1). The algorithm should converge after several iterations. Final STEP: The amplitude and phase corresponding to the final high-resolution RP image is obtained by applying an inverse 2D Fourier transform of the complex function corresponding to the updated FP-OD