With the development of infrared detectors and radiometry technology, IR radiometric systems have gradually become active[
Infrared and Laser Engineering, Volume. 49, Issue 5, 20190413(2020)
Nonlinear atmospheric correction based on neural network for infrared target radiometry
Infrared radiometry technology is an important means to characterize the infrared signature of targets, and atmospheric correction is a requisite step to obtain the real radiance of targets. A nonlinear atmospheric correction (NLAC) method was proposed to improve the infrared radiometric accuracy for long distance targets in this paper. This method used near-range standard reference source measurement (NRSRM) to calculate the actual atmospheric transmittance and path radiation simultaneously at different locations in a real-time environment. And the theoretical atmospheric transmission and path radiation under the corresponding conditions could be obtained from the atmospheric radiation transmission software as well. Neural network technology was applied to fit the non-linear relationship between them. Thus, the atmospheric transmittance and path radiation over long distances could be predicted to achieve atmospheric correction. Simpler linear atmospheric correction (LAC) and linear enhancement atmospheric correction (LEAC) were also carried out for comparison. The experimental results indicate that the infrared radiometric average error of the proposed method is 6.45%, which is much lower than that of the conventional method, LAC and LEAC that are 16.17%, 11.27% and 7.44%, respectively.
0 Introduction
With the development of infrared detectors and radiometry technology, IR radiometric systems have gradually become active[
The real-time measurement method based on NRsrM is relatively simple, and meets the accuracy requirements in practical application. The transmittance and path radiation obtained from the atmospheric radiation transfer software according to historical data are also well-founded. Therefore, a nonlinear atmospheric correction (NLAC) method based on NRsrM and software calculation is proposed to achieve measuring the atmospheric transmittance and path radiation simultaneously in this paper. The main advantage of this method is that it can realize infrared radiation measurement of long distance targets using the nonlinear fitting technology of neural network. Long-range atmospheric transmittance and path radiation are corrected by near-range measurement, thus it can improve the accuracy of target radiation measurement compared to the result obtained from the software. Linear atmospheric correction (LAC) method and linear enhancement atmospheric correction (LEAC) are compared with the method presented as well in this paper, the accuracy of infrared radiation measurement is improved obviously based on the analysis of the experimental data.
1 Infrared radiometric principle
The target infrared radiation process is shown in
where
Figure 1.Schematic diagram of radiative transfer process in the atmosphere
The radiation flux received by a detector element through the optical system is
where
When the infrared radiation measurement system imagines a target at a certain distance, the gray image can be obtained from the electrical signal converted from the infrared radiation. Infrared systems, in many applications, are operated in a range of radiance within which detectors exhibit linear input–output characteristics. The output gray value [digital number (DN)] at a preselected integration time is given by the approximate linear relation:
where
The inverted radiance of the target obtained from Eq. (4) can be described as follows:
where
Figure 2.Schematic diagram of radiometric calibration using extended area blackbody
2 Atmospheric correction principle
It is known from the measurement principle that the accuracy of the atmospheric transmittance and path radiation play an extremely crucial role in infrared radiometry compared to other parameters, such as the response and offset, which are determined by a given infrared measurement system. In the conventional radiometric method, the atmospheric transmittance and path radiation are calculated by atmospheric radiation transfer software. However, the error of this method is not able to meet the application requirements. Atmospheric correction method for the atmospheric transmittance and path radiation is desirable to improve the infrared radiometric accuracy.
2.1 Measurement of atmospheric transmittance and path radiation by NRsrM
Figure 3.Schematic diagram of the infrared radiation measurement
where
2.2 Measurement of atmospheric transmittance by LAC
MODTRAN (moderate resolution atmospheric transmission) is a commercial atmospheric radiative transfer model developed by the U.S. Air Force[
According to the quantitative relation of distance, LEAC factor can be obtained[
For any distance
2.3 Measurement of atmospheric transmittance and path radiation by NLAC of neural network
The neural network is a gradient descent back-propagation algorithm, which permits the solution of regression problems by estimating a transfer function from a set of known situations. It constitutes the priori information which is necessary for solution of the problem[
Figure 4.Illustration of the neural network
For atmospheric transmittance and path radiation at arbitrary distances
3 Experiments and discussions
To verify the feasibility of this method, experiments were performed with a long-wave infrared (LWIR) camera of forward looking infrared (FLIR) systems. The infrared detector operates in the 7.7-9.3 μm waveband, and it is composed of 320 pixel×256 pixel with a 14-bit digital output. The extended area blackbody selected as the reference source has a 100 mm×100 mm size and exhibits high effective emissivity (0.97 in the 7.7-9.3 μm waveband). Its temperature accuracy is 0.01 ℃ over an operating temperature range of 0-125 ℃.
3.1 Calibration of infrared measurement system
The experimental setup used for radiometric calibration based on the calibration principle shown in
It can be known that the response
Figure 5.Experimental setup for calibration
Figure 6.Result of calibration
3.2 LAC and NLAC
In the conventional radiometric method, the atmospheric transmittance and path radiation are calculated by MODTRAN4.0. During the experiment, the ground average temperature is about 10 ℃; the pressure is about 1 021 kPa ; the relative humidity is about 20%; the angle of pitch is 0°; the altitude is 210 m and the visibility is about 9.7 km. The theoretical average atmospheric transmittance and path radiation in waveband 7.7-9.3 μm at the distance of 10 m to 100 m with the interval of 10 m are shown by the black line in
In order to obtain the LAC factor and LEAC factor, NRsrM is carried out to calculate the actual atmospheric transmittance and path radiation. The blackbody as a standard reference source is placed at a distance of
Figure 7.Atmospheric correction result at different distances. (a) Atmospheric transmittance at different distances; (b) path radiation at different distances
The theoretical atmospheric transmittance is 0.989 8 at the distance of 10 m obtained from MODTRAN4.0. Thus, the LAC factor calculated from Eq.(10) is
In order to achieve NLAC, multiple sets of experiments are carried out at the distance of 10 to 100 m with an interval of 10 m, which adopt the NRsrM. The measured atmospheric transmittance and path radiation at each distance can be calculated from Eq.(8) and (9), shown by the blue line in
3.3 Radiometry of an infrared target
In order to verify the improvement of infrared radiation measurement accuracy, images of the blackbody as an infrared target are collected at the distance of 130 m as shown in
Figure 8.Infrared target image at the distance of 130 m
Figure 9.Radiometric result. (a) Inversion of radiation brightness result with the use of different methods; (b) Radiometric error with the use of different methods
As can be seen from the error curve, the errors of LAC and LEAC are smaller than MODTRAN, and the error trend is the same. The reason for this result is that they only make a simple linear correction for atmospheric transmittance. NLAC method modifies atmospheric transmittance and path radiation by near-rang measurement. Its error is relatively stable and the error size is mainly determined by the neural network algorithm. At 40 ℃, the error of LEAC is less than NLAC. The reason is that the relative error of 40 ℃ is less affected by the uncorrected path radiation, and it would be better just to correct the transmittance. NLAC method introduces the error of the path radiation correction. When the temperature is higher than 40 ℃, the influence of uncorrected path radiation gradually increases and the advantages of NLAC method are reflected. The maximum error and the average error of MODTRAN4.0, LAC, LEAC and NLAC are all listed in
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4 Conclusions
This paper presents a method to improve the infrared radiometric accuracy based on atmospheric correction. Compared with the conventional radiometric method, near-range atmospheric transmittance and path radiation can be calculated simultaneously by NRsrM. Using NLAC of neural network technology, long-range atmospheric transmittance and path radiation are relatively accurately predicted through the nonlinear relationship between theoretical data obtained from MODTRAN4.0 and actual data calculated by NRsrM. Therefore, atmospheric correction is achieved to improve the infrared radiometric accuracy. Preliminary experiments have shown that the infrared radiometric average errors of the conventional method, LAC, LEAC and the proposed NLAC method are 16.17%, 11.27%, 7.44% and 6.45%, respectively. The infrared radiometric accuracy of LAC (or LEAC) method is improved compared with the conventional software calculation method. And it requires only a set of near-range measurement parameters by NRsrM, which is simple and easy to be obtained. Through NLAC of neural network, multiple sets of actual measurement results are needed. The process of atmosphere correction is more complicated before the target measurement, but the infrared radiometric accuracy can be further improved.
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Yang Guoqing, Li Zhou, Zhao Chen, Yu Yi, Qiao Yanfeng, He Fengyun. Nonlinear atmospheric correction based on neural network for infrared target radiometry[J]. Infrared and Laser Engineering, 2020, 49(5): 20190413
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Received: Feb. 4, 2020
Accepted: Mar. 27, 2020
Published Online: Sep. 22, 2020
The Author Email: Guoqing Yang (yangguoqing215@mails.ucas.edu.cn)