2020
DOI: 10.3390/photonics7020030
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Image Processing for Laser Imaging Using Adaptive Homomorphic Filtering and Total Variation

Abstract: Laser active imaging technology has important practical value and broad application prospects in military fields such as target detection, radar reconnaissance, and precise guidance. However, factors such as uneven laser illuminance, atmospheric backscatter, and the imaging system itself will introduce noise, which will affect the quality of the laser active imaging image, resulting in image contrast decline and blurring image edges and details. Therefore, an image denoising algorithm based on homomorphic filt… Show more

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Cited by 15 publications
(10 citation statements)
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“…A histogram distribution generally describes the overall distribution of image pixels, as a table representing the number of pixels with a certain value in an image [ 16 ]. In the histogram, there are 256 abscissa values to represent the pixel values (the pixel distribution is mainly concentrated below 120 pixels, so values above 120 are not shown in the graph for a better display), and the vertical axis represents the distribution.…”
Section: Results and Evaluationmentioning
confidence: 99%
See 1 more Smart Citation
“…A histogram distribution generally describes the overall distribution of image pixels, as a table representing the number of pixels with a certain value in an image [ 16 ]. In the histogram, there are 256 abscissa values to represent the pixel values (the pixel distribution is mainly concentrated below 120 pixels, so values above 120 are not shown in the graph for a better display), and the vertical axis represents the distribution.…”
Section: Results and Evaluationmentioning
confidence: 99%
“…Filtering algorithms based on the frequency domain include ideal high/low-pass filter [ 12 ], Butterworth high/low-pass filter [ 13 ], and Gaussian high/low-pass filter [ 14 ]. With continuous research by scholars at home and abroad, filtering algorithms are emerging one after the other, such as guided filter [ 15 ] calculated iteratively, homomorphic filter [ 16 ] combining frequency filter and spatial grey transformation, and various fusion filtering algorithms.…”
Section: Introductionmentioning
confidence: 99%
“…As a result, image processing techniques are developed to reduce or eliminate noise [42]. Noise can also be generated during image transmission and acquisition processes [22], which has sparked interest in the field of image processing [22,[42][43][44][45][46]. As you can see, noise is an interesting topic due to the disruption it causes, which makes it difficult to deal with.…”
Section: Noisementioning
confidence: 99%
“…The random nature of noise is a result of these physical processes. According to the Central Limit Theorem, the sum of a large number of random variables, including noise, tends to follow a Gaussian distribution [22,42,44]. Noise, regardless of its type, can be categorized as additive, subtractive, or mixed (salt and pepper).…”
Section: Noisementioning
confidence: 99%
“…The phase transformation, the deposition of materials, the uncertainty of corrosion distribution, the laser parameters, and the laser working path will affect the cleaning procedure and result. In this study, an SVM [21] is considered to search for suitable laser process parameters under complex working conditions [22]. In the training stage, a variety of image features and laser parameters are used as the input vector, and the qualified or unqualified evaluation result is regarded as the SVM output.…”
Section: Cleaning Performance Prediction Using Particle Swarm Optimiz...mentioning
confidence: 99%