Open Access
9 June 2021 LCD-based method for evaluating modulation transfer function of optical lenses with poorly corrected distortion
Author Affiliations +
Abstract

Modulation transfer function (MTF) evaluation in the imaging of the optical lenses with poorly corrected geometric distortion involves sampling region of interest (ROI) images that are affected by geometric distortion, reducing its accuracy. A based liquid-crystal-device MTF (LMTF) method is proposed for this purpose by evaluating MTF of the medical rigid endoscope. This method establishes a mathematical model of geometric distortion and analyzes two sampling ROI image manners in MTF evaluation. Compared with the distortion factor (DF) manner, the distortion correction manner relaxes the value of the DF to twice the maximum non-distortion value, extends the sampling ROI image to twice the size, reduces the average RRMSE value to 6%, and improves average accuracy on MTF by 1.2%. The experimental results provide good agreement with the theoretical prediction. Therefore, the proposed LMTF method can be referential for the other optical lenses with poorly corrected distortion.

1.

Introduction

Medical rigid endoscopes (MREs) consist of three parts of optical lenses: the objective lens, the relay system, and the eyepiece. Great efforts for technological advancements in optical lenses and structural optimization have brought direct conveniences to their clinical applications. Therefore, the imaging quality directly affects the realization of more applications of MREs. As for an MRE, aimed to inspect as large an area as possible within the patient body under the least movement for routine testing, early cancer screening, and clinical surgery through small holes in a non-invasive or minimally invasive way, it is deliberately designed to have a wide field of view(FOV). The wider FOV makes the magnification no longer constant, so the output image loses the similarity with the input target and thus presents geometric distortion, reducing the accuracy of modulation transfer function (MTF) evaluation. In addition, the wide FOV presents images with non-uniform illumination distribution and field curvature. The non-uniform illumination distribution contributes to slight difference on the MTF evaluation before and after illumination compensation.1 Field curvature can cause the image to be blurred, because field curvature cannot make the center and edges of the FOV clear at the same time. Therefore, by focusing on the center of the FOV, blurring can be avoided to be introduced into its MTF evaluation. Thus, the geometric distortion is a major problem in MTF evaluation for optical lenses with poorly corrected geometric distortion. Until recent years, some research work has been done. Masaoka et al.2 used a modified slanted-edge method to evaluate the MTF for the fisheye lens by ISO Standard 12233. Williams and Burns3 used a slanted edge gradient SFR method to measure the MTF of the distorted edge images. Yet, the study between the geometric distortion and the sampling region of interest (ROI) image is seldom involved. It may cause the MTF evaluation to be affected by the inappropriate sampling ROI images, reducing the accuracy. Thus in this paper, a based liquid-crystal-device MTF (LMTF) method is proposed for this purpose. This method utilizes two computer-generated targets to establish a mathematical model of geometric distortion and then analyzes two sampling ROI image manners in MTF evaluation. Under the limitation of the sampling ROI image based on the distortion factor (DF) manner, the sampling ROI image based on the distortion correction manner is presented for the MTF evaluation of the MRE. One target is characterized with a visual uniform structure, which is responsible for establishing a mathematical model of geometric distortion. A Hadamard target, created by a pseudorandom Hadamard generator, has a natural geometric center, which helps to save time for the experimental system in alignment adjustment. The Hadamard target is derived from a Hadamard matrix Hn, which is a square matrix with the order n equaling to 2k where k is a positive integer. The other target is characterized with a uniform spectral distribution for the MTF evaluation. The spectral distribution can be expressed as a uniform contrast, a uniform spatial frequency spectral density, or a uniform spatial power spectral density. Targets of such spectral distribution are also widely used for the MTF evaluation of the optical lenses with well-corrected distortion.415 Here, the target with a uniform power spectral density is mainly considered, and it can be created by a random number generator.16 The generated random target is characterized with the random numerical distribution and verify the LMTF method.

The LMTF method presents a feasible solution for the MTF evaluation of the MRE. In addition, the LMTF method also presents advantages by utilizing the liquid crystal device (LCD) to present digital targets in equivalent pixels. First, it only needs to complete one alignment adjustment and optimization for the experimental system, thereby reducing the risk of errors caused by frequent alignment movement into the experimental results. Second, it can visually observe the clarity of the target image in the central FOV, avoiding the blur caused by field curvature into the central FOV, thereby inhibiting the error caused by field curvature from entering the experimental results. Third, it more flexibly displays targets at different quasi-monochromatic illumination by the LCD itself than printed targets, and the MTF can be evaluated at different wavelengths.

2.

Experimental Setup and MTF Analysis

2.1.

Experimental Setup

The LCD is mounted on a mobile platform operated in multiple directions, and its distance from the entrance pupil of the MRE is L0. The black and white CMOS camera has 1280×1024 image pixels with equal pixel pitch dCMOS of 5.2  μm. The optical interface (OI) connecting the MRE and the CMOS camera is used for converting the virtual image into the real image. The experimental setup is shown in Fig. 1.

Fig. 1

Experimental setup.

OE_60_6_063102_f001.png

The MTF of the OI is high enough to prevent its MTF from affecting the evaluated MRE. The Nyquist spatial frequency fN of the CMOS camera is determined by its pixel pitch and is equal to 1/(2×dCMOS). The highest spatial frequency fH of the target image onto the CMOS camera is equal to 1/(2×dLCD×M), where dLCD is the pixel pitch of the LCD and M is the magnification of the experimental system. To avoid frequency aliasing, that is, to prevent the spatial frequencies higher than the Nyquist spatial frequency from being mapped to the lower spatial frequencies of the image to affect the experimental results, fHfN is established. Further, it can be derived as

Eq. (1)

MdCMOS/dLCD,
where dLCD is an important parameter to ensure successful experimental implementation, that is, different LCDs with the same dLCD achieve the same experimental measurement. As described in Eq. (1), an oversampling mode is often used to extract the true law contained in the raw data. However, as M moves away from the ratio of dCMOS/dLCD, more duplicate data, rather than more valid data, are sampled. Overemphasizing the amount of data can lead to overfitting of experimental results. Therefore, M close to the ratio of dCMOS/dLCD is a more preferred choice. Here, the LCD has a 5.1-in. screen with 1920×1080 image pixels, and then its dLCD is equal to 58.8  μm. So the value of the minimum M (Mmin) is equal to 0.09. To fully establish the mathematical model of geometric distortion in the entire FOV, the matrix size of the Hadamard target is not less than (L×W)×(dCMOS/(dLCD×Mave))2  pixels. Here, L and W are the horizontal pixel length and vertical pixel width of the target image, respectively, and Mave is the average magnification,

Eq. (2)

Mave=1rMdr.
Therefore, by calculation, the matrix size of the Hadamard target is not less than 512×512  pixels.

2.2.

MTF Analysis

MTF is a widely used indicator for evaluating the imaging quality of an optical lens with its spatial frequency content. As for an evaluated MRE, its theoretical MTF17 can be written as follows:

Eq. (3)

MTF(f)=4π(λL0De)2{cos1(λL0Def)(λL0Def)*1(λL0Def)2},
where f stands for the spatial frequency in cycles/mm, whose maximum frequency fmax, that is the diffraction cutoff frequency, is equal to De/(1.22×λ×L0).18 Here, λ represents the central wavelength of the target on the LCD screen and is 650 nm, L0 is the working distance of 20 mm, and De stands for the round entrance pupil diameter of the evaluated MRE, which is 0.26 mm. It is worth noting that the MTF evaluation is meaningful when fmaxfH is established. Therefore, fmax determines the upper cutoff frequency of the experimental system and is 16.4  cycles/mm. To facilitate the experimental MTF evaluation, the random target has a uniform spectral distribution. Thus for such a random target, the MTF of the experimental system can be described as follows:

Eq. (4)

PSDoutput(f)=MTF2total(f)PSDinput(f),
where MTFtotal describes the relationship between the output and input power spectral densities (PSDs) of the experimental system. For a linear optical imaging system, its uniform magnification is an important characteristic parameter. Therefore, for a sampling ROI image with uniform magnification, its imaging process can be regarded as a linear procedure. For such a sampling ROI image, the MTFtotal can be written as the product of the MTFMRE of the evaluated MRE and the MTFsys of the remaining optical setup,19

Eq. (5)

MTFtotal(f)=MTFMRE(f)MTFsys(f).
In Eq. (5), MTFsys represents the systemic MTF inherent in the experimental system, which can be obtained by measuring the MTF of the optical system without MRE. Thus, the MTFMRE is the ratio of MTFtotal/MTFsys. Furthermore, to reduce the influence of dark noise of the experimental system on the experimental measurement,20 PSDoutput can be further written as

Eq. (6)

PSDoutput(f)=PSDcaptured(f)PSDsys(f),
where PSDcaptured is the PSD of the captured image on the CMOS camera, whereas PSDsys is the PSD of the captured dark image.

Thus, the LMTF method is processed in the following way. The experimental system is adjusted for alignment and focusing optimization by the Hadamard target. The target image is used to establish the mathematical model of geometric distortion and determine the valid sampling ROI image from the output image or the corrected output image for the MTF evaluation. Subsequent data analysis is performed within the ROI image. As an axis-symmetrical optical system, the MTF can be measured for the meridional or sagittal direction in a similar manner; to avoid repetitions in calculation, only the meridional MTF is measured. The squared magnitude of the one-dimensional Fourier transform of each meridional row of the ROI random image is calculated by the Fourier transform algorithm. To improve signal-to-noise ratio, the total rows are averaged to yield the meridional PSDoutput. To reduce random error on the experimental measurement, the average is taken for 10 output images. After taking the square rooting of the PSDoutput and normalizing it, a fitting polynomial curve yields the meridional MTFtotal. After removing the MRE from the experimental system and maintaining a constant distance relationship between the OI and the CMOS camera, the meridional MTFsys is obtained. Finally, the meridional MTFMRE is obtained by dividing the MTFsys from the MTFtotal.

3.

Mathematical Model of Geometric Distortion

3.1.

Sampling ROI Image Determined by the Distortion Factor Manner

In Fig. 2, a mapping relationship between the object and image planes is established, where both center points are marked in green. A coordinate system is used, where r means the pixel distance from the center to the other points of the image plane and r means the pixel distance from the center to the corresponding mapped points of the object plane. The furthest pixel distances for r and r are both normalized to 1. The Hadamard image is axisymmetric; r can be measured from the center to any direction, for example, from the center to the right or upper direction. Thus, the coordinates of the selected six points (in pink or blue) are read, and the pixel distances from the center to them are calculated and normalized. As for r, the mapped points in the Hadamard target are adjacently equally spaced. After taking the data of r and r, and performing a nonlinear least-squares method, a fitting polynomial is written to describe the relationship between r and r,21

Eq. (7)

rfitting=kmrm+km1rm1++k2r2+k1r1+k0,
where m is the order of the polynomial equation, r[0,1], and r[0,1]. The distortion rate function g(r) is to quantify the degree how the MRE distorts the image and then is the derivative of Eq. (7),

Eq. (8)

g(r)=drfittingdr=mkmrm1+(m1)km1rm2++2k2r+k1,
where g(r) also stands for the magnification function since r and r represent dimensionless length information. For an ideal distortion-free imaging system, g(r) is equal to 1 [black line in Fig. 3(a)], which means that the output image is proportional to the target. Then for an actual imaging system such as the MRE, the output image is distorted to magnify the target [pink and blue curves in Fig. 3(a)]. The closer to the edge, the more pronounced the distortion. Therefore, the subtraction of the non-distorted g(r) and the distorted g(r) is

Eq. (9)

Δg(r)=g(r)non-distortedg(r)distorted,
where Δg(r) indicates how the magnification with distortion deviates from that without distortion. Since the distortion is distributed along the radial direction, the Δg(r) can be used to quantify the degree of distortion, and the value of r can be used to describe the DF value. Therefore, the DF value can be directly related to the size of the sampling ROI image, and the maximum size of the valid sampling ROI image is 1, where DF value is equal to α. Here, α is the maximum non-distorted factor, that is, the geometric distortion of the relevant sampling ROI image is negligible, and it corresponds to 0.05 for both directions based on the slope of the local magnification in Fig. 3(b) where the local magnification has a slope close to zero. The horizontal pixel length and vertical pixel width for the valid ROI image are equal to α×L and α×W, respectively, where L and W are both equal to 891. Then the matrix size for the valid sampling ROI ranges from 2fmax×2fmax to α2×L×W, where α2×L×W represents the maximum matrix size of the valid sampling ROI image, that is, the matrix range for the valid sampling ROI image is from 33×33 to 44×44. Then the valid sampling ROI image can be approximated as an imaging region with uniform magnification, and its data process can refer to a linear procedure. As for the magnification function of the experimental system shown in Fig. 3(c), it is written as

Eq. (10)

M(r)=c*g(r)distorted,
where c is the magnification value of the valid sampling ROI image, and its value of 0.19 is greater than Mmin so as to avoid the frequency aliasing for the experimental results.

Fig. 2

Target and image: (a) Hadamard target and (b) Hadamard image.

OE_60_6_063102_f002.png

Fig. 3

Sampling ROI image determined by the DF manner: (a) g(r), (b) Δg(r), and (c) M(r).

OE_60_6_063102_f003.png

3.2.

Extended Sampling ROI Image by Distortion Correction Manner

As mentioned above, geometric distortion directly leads to non-uniform magnification, compromising the uniformity of the sampling ROI image. So to increase accuracy of the MTF evaluation, the size of the valid sampling ROI image is limited within the size determined by the maximum non-distorted factor α. To obtain an extended uniform sampling ROI image, the geometric distortion correction manner is performed on the target image to compensate for the attenuation of magnification. Therefore, by dividing the function g(r), the corrected image can be written as follows:

Eq. (11)

imageij,corrected=imageij,original/g(r)|rROI,
where ij stands for the meridional and sagittal coordinates in the original image, and ij represents the coordinates in the corrected image. It is worth noting that a pixel coordinate point of the corrected image may correspond to the position among several coordinate points on the target image. Therefore, grayscale interpolation is required to calculate the grayscale value of the corrected pixel coordinate points. To keep the frequency content of the corrected image as much as possible, the nearest neighbor interpolation algorithm is used in the distortion correction manner to resample the grayscale values of the coordinate points in the corrected image shown in Fig. 4. Then base on Eq. (11), the size of the valid sampling ROI image can be extended for the MTF evaluation.

Fig. 4

Distortion correction manner: (a) corrected Hadamard image and (b) corrected random image.

OE_60_6_063102_f004.png

4.

MTF Results

The difference between the evaluated MTF and the theoretical MTF is used as an evaluating index. This index describes the relative root mean square error (RMSE) of the MTF evaluation,

Eq. (12)

RRMSE=1n(MTFi,evaluated(f)MTFi,theoretical(f)MTFi,theoretical(f))2,
where n represents the total number of measured frequencies, i=1n; MTFi,evaluated(f) stands for the evaluated result of MTFi,theoretical(f) at the i’th frequency; and MTFi,theoretical(f) stands for the theoretical result at the i’th frequency. Thus, smaller RRMSE values indicate higher measurement accuracy.

As presented in Fig. 5, the analysis between the DF and the size of the sampling ROI image shows the relationship between geometric distortion and MTF evaluation. As DF value is no more than α, that is, the size of the valid sampling ROI images within the range of 33×33 and 44×44 such as 36×36, 40×40, and 44×44, their MTF curves are close to each other. Then the MTF curves are compared with that of the theoretical prediction, their RRMSE values are 6.5%, 7.3%, and 7.6% (7.2% on average), respectively. As DF value is between α and 2×α, that is, the matrix size of the sampling ROI image within the range of 44×44 and 90×90, their MTF curves obviously drop at lower frequencies, and their RRMSE values rise to 8.2% to 11.7% (10.1% on average). Thus as the DF value continues to increase, the RRMSE value also continues to rise. For example, as DF value exceeds 2.5×α, the RRMSE value is more than 14.7%. As the DF value reaches 10×α, the corresponding MTF curve deteriorates drastically. This shows that DF value has a significant impact on the accuracy of the MTF evaluation. Therefore, the size of the valid sampling ROI image based on the DF manner is limited to the size, where DF value is equal to α.

Fig. 5

MTF results based on the DF manner: (a) the random image and the selected ROI image and (b) evaluated MTFs comparison with the theoretical MTF.

OE_60_6_063102_f005.png

As the distortion correction manner is applied to the target image, the results of the MTF evaluation based on the corrected ROI images are shown in Fig. 6. As DF value is no more than α, the sampling ROI images such as 36×36, 40×40, and 44×44, their RRMSE values drop to 3.8%, 3.9%, and 4.2% (4% on average), respectively. The results indicate that the MTF curves are further optimized compared with the DF manner. As DF value is between α and 2×α, the MTF curves are improved at low frequencies compared with those corresponding curves based on the DF manner. The average RRMSE value drops to 6%, which means an average 40% reduction occurs. The results indicate that the distortion correction manner is superior to the DF manner in which the average RRMSE value is reduced from 10.1% to 6%, which is an obvious improvement compared with 7.2% based on the maximum non-DF α. Therefore, a 1.2% improvement of accuracy reflects that the distortion correction manner relaxes the DF value to 2×α, extends the sampling ROI image to twice that of the DF manner, and reduces the average RRMSE value to 6%. Therefore, the size of the valid sampling ROI image based on the distortion correction manner can extend to twice the size of the valid sampling ROI image based on the DF manner. Even as DF value increases to 2.5×α, the RRMSE value drops to 11.4%, thus optimized by 22%. However, as the DF value exceeds 3×α, that is, the size of the sampling ROI image extends outward from the central FOV, the blur caused by field curvature begins to be included in the sampling ROI image. Due to field curvature, the sharpness of the image to gradually change from the central FOV to the edges, and the distortion correction manner helps the blur distribution caused by the field curvature to be more uniform. This leads to a more prominent influence of field curvature on the results of the MTF evaluation, thereby weakening the frequencies. This indicates that the distortion correction manner can better distinguish the influence of field curvature on the results of the MTF evaluation.

Fig. 6

Corrected MTFs comparison with the theoretical MTF based on the geometric distortion correction manner.

OE_60_6_063102_f006.png

5.

Conclusions

An LMTF method is successfully demonstrated for imaging evaluation of the MRE. This method establishes a mathematical model of geometric distortion and analyzes two sampling ROI image manners in MTF evaluation. Compared with the distorted factor manner, the geometric distortion correction manner relaxes the DF value to 2×α, extends the sampling ROI image to twice that of the DF manner, reduces the average RRMSE value to 6%, and improves average accuracy on MTF by 1.2%. The experimental results provide good agreement with the theoretical prediction. The SMTF method provides a feasible solution for the optical lenses with poorly corrected geometric distortion.

Acknowledgments

The authors declare no conflict of interest.

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Biography

Ping’an He received his master’s degree in optical instrumentation from Wuhan Technical University in 1990. Since 2000, he has been a professor at the Electronic Information School of Wuhan University. His research interests include optical system design, optical testing technology, photoelectronic detect system, and image vision measurement.

Xinlan An received her master’s degree in applied physics from Nankai University in 2007. She is a PhD candidate at Electronic Information School of Wuhan University. Her current research interest includes optical system design, photoelectronic detect system, and image vision measurement.

Xin Li is a master’s candidate at Electronic Information School of Wuhan University. Her current research interest includes optical system design, optical testing technology, and photoelectronic detect system.

CC BY: © The Authors. Published by SPIE under a Creative Commons Attribution 4.0 Unported License. Distribution or reproduction of this work in whole or in part requires full attribution of the original publication, including its DOI.
Ping'an He, Xinlan An, and Xin Li "LCD-based method for evaluating modulation transfer function of optical lenses with poorly corrected distortion," Optical Engineering 60(6), 063102 (9 June 2021). https://doi.org/10.1117/1.OE.60.6.063102
Received: 4 March 2021; Accepted: 24 May 2021; Published: 9 June 2021
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KEYWORDS
Modulation transfer functions

Distortion

Lenses

LCDs

Monochromatic aberrations

Magnetic resonance imaging

Lithium

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