In this paper, we have used the angular spectrum propagation method and numerical simulations of a single random phase encoding (SRPE) based lensless imaging system, with the goal of quantifying the spatial resolution of the system and assessing its dependence on the physical parameters of the system. Our compact SRPE imaging system consists of a laser diode that illuminates a sample placed on a microscope glass slide, a diffuser that spatially modulates the optical field transmitting through the input object, and an image sensor that captures the intensity of the modulated field. We have considered two-point source apertures as the input object and analyzed the propagated optical field captured by the image sensor. The captured output intensity patterns acquired at each lateral separation between the input point sources were analyzed using a correlation between the captured output pattern for the overlapping point-sources, and the captured output intensity for the separated point sources. The lateral resolution of the system was calculated by finding the lateral separation values of the point sources for which the correlation falls below a threshold value of 35% which is a value chosen in accordance with the Abbe diffraction limit of an equivalent lens-based system. A direct comparison between the SRPE lensless imaging system and an equivalent lens-based imaging system with similar system parameters shows that despite being lensless, the performance of the SRPE system does not suffer as compared to lens-based imaging systems in terms of lateral resolution. We have also investigated how this resolution is affected as the parameters of the lensless imaging system are varied. The results show that SRPE lensless imaging system shows robustness to object to diffuser-to-sensor distance, pixel size of the image sensor, and the number of pixels of the image sensor. To the best of our knowledge, this is the first work to investigate a lensless imaging system’s lateral resolution, robustness to multiple physical parameters of the system, and comparison to lens-based imaging systems.
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Robustness of lensless single random phase encoding systems to image sensor pixel size
In this paper, we propose a procedure to analyze lensless single random phase encoding (SRPE) systems to assess their robustness to variations in image sensor pixel size as the input signal frequency is varied. We use wave propagation to estimate the maximum pixel size to capture lensless SRPE intensity patterns such that an input signal frequency can be captured accurately. Lensless SRPE systems are contrived by placing a diffuser in front of an image sensor such that the optical field coming from an object can be modulated before its intensity signature is captured at the image sensor. Since diffuser surfaces contain very fine features, the captured intensity patterns always contain high spatial frequencies regardless of the input frequencies. Hence, a conventional Nyquist-criterion-based treatment of this problem would not give us a meaningful characterization. We propose a theoretical estimate on the upper limit of the image sensor pixel size such that the variations in the input signal are adequately captured in the sensor pixels. A numerical simulation of lensless SRPE systems using angular spectrum propagation and mutual information verifies our theoretical analysis. The simulation estimate of the sampling criterion matches very closely with our proposed theoretical estimate. We provide a closed-form estimate for the maximum sensor pixel size as a function of input frequency and system parameters such that an input signal frequency can be captured accurately, making it possible to optimize general-purpose SRPE systems. Our results show that lensless SRPE systems have a much greater robustness to sensor pixel size compared with lens based systems, which makes SRPE useful for exotic imagers when pixel size is large. To the best of our knowledge, this is the first report to investigate sampling of lensless SRPE systems as a function of input image frequency and physical parameters of the system to estimate the maximum image sensor pixel size.
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- Award ID(s):
- 2141473
- PAR ID:
- 10571466
- Publisher / Repository:
- Optical Society of America
- Date Published:
- Journal Name:
- Optics Express
- Volume:
- 33
- Issue:
- 4
- ISSN:
- 1094-4087; OPEXFF
- Format(s):
- Medium: X Size: Article No. 6987
- Size(s):
- Article No. 6987
- Sponsoring Org:
- National Science Foundation
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