CategoryFilterFilterPropertyProperty
CategoryNameDescriptionNameDescription
Filter CorrectionBlurBlur the input image.Filter SizeChoose from 3x3, 5x5, 7x7, 9x9, 11x11, 13x13
Filter CorrectionEmbossApply an embossing effect to the image to accentuate its edges and create the appearance of a raised surface.Filter TypeChoose from 135, 90, 45, North, West, South, East, Northeast
Filter CorrectionSoftenTransform the input image to a soft or smooth version.Filter TypeChoose from Smoothly1,2,3 etc.
Filter CorrectionSharpenEnhance the clarity of the input image.Mask type:Choose from Sh
Filter CorrectionUnsharp FilterRemoves low-detail elements from the original image and then reapplies them to enhance the sharpness and clarity of edges and details.Mask SizeChoose from 3x3, 5x5, 7x7, 9x9
Filter CorrectionUnsharp FilterRemoves low-detail elements from the original image and then reapplies them to enhance the sharpness and clarity of edges and details.Blur Reduction Rate (%)(Default value: 10.0)
Filter CorrectionMedian FilterCalculates the median value around each pixel in the image, then replaces that pixel value to preserve edges, reduce noise, and improve image smoothness.Mask SizeChoose from 3x3, 5x5, 7x7, 9x9, 11x11, 13x13
Filter CorrectionAlpha-Trimmed Mean FilterPixels are eliminated according to the designated alpha value in the image, and the average of the remaining values is calculated, thereby effectively mitigating noise and preserving essential image details.Mask SizeChoose from 3x3, 5x5, 7x7, 9x9, 11x11, 13x13
Filter CorrectionAlpha-Trimmed Mean FilterPixels are eliminated according to the designated alpha value in the image, and the average of the remaining values is calculated, thereby effectively mitigating noise and preserving essential image details.Alpha Value
Filter CorrectionMinMax FilterUsed to remove extreme impulse noise or to highlight features based on brightness differences. *Impulse noise: A condition characterized by random scattering of black and white dots.Mask SizeChoose from 3x3, 5x5, 7x7, 9x9, 11x11, 13x13
Filter CorrectionMinMax FilterUsed to remove extreme impulse noise or to highlight features based on brightness differences. *Impulse noise: A condition characterized by random scattering of black and white dots.Maximum valueMax: Removes dark impulse values to brighten. Min: Removes bright impulse values to darken.
Filter CorrectionGaussian SmoothingReplaces the current pixel value in the input image with a weighted average of itself and its neighboring pixel values.Mask SizeSigma: (Default value: 1.0)
Edge DetectionGradientDetects edges in the input image by calculating gradient (derivative) values.Mask DirectionChoose from x-direction, y-direction, x, y directions
Edge DetectionSobelDetects edges in all directions in the input image, but is more sensitive to edges in diagonal directions and is robust against noise.Mask DirectionChoose from x-direction, y-direction, x, y directions
Edge DetectionSobelDetects edges in all directions in the input image, but is more sensitive to edges in diagonal directions and is robust against noise.Mask SizeChoose from 3x3, 5x5, 7x7
Edge DetectionScharrEnhances the directional accuracy of the Sobel filter, compensating for its limitations.Mask DirectionChoose from x-direction, y-direction, x, y directions
Edge DetectionPrewittDetects vertical and horizontal edges in the input image. It is fast, but its performance might be lower compared to other methods.Mask DirectionChoose from x-direction, y-direction, x, y directions
Edge DetectionFrei-ChenEqualizes gradients at horizontal, vertical, and diagonal edges. Easily extracts subtle edge details and produces thinner lines, but may incorrectly detect noise as edges.
Edge DetectionRobertsDetects only well-defined edges at a very fast speed.Mask DirectionChoose from x-direction, y-direction, x, y directions
Edge DetectionLaplacianRemoves low-frequency (minimal change) and emphasizes high-frequency (significant change) to detect sharp edges in all directions of the input image.Mask SizeChoose from 3x3, 5x5, 7x7
Edge DetectionCannyDetects edges as a single line by setting upper and lower threshold values.Mask SizeChoose from 3x3, 5x5, 7x7
Edge DetectionCannyDetects edges as a single line by setting upper and lower threshold values.Threshold1(Default value: 0.2)
Edge DetectionCannyDetects edges as a single line by setting upper and lower threshold values.Threshold2(Default value: 0.8)
Corner DetectionMinimum EigenvalueA corner detection technique that utilizes the minimum eigenvalue in its calculations.Result Image FormatChoose from Visualize feature points on the original image, View Feature Point Data
Corner DetectionMinimum EigenvalueA corner detection technique that utilizes the minimum eigenvalue in its calculations.Mask SizeChoose from 3x3, 5x5, 7x7
Corner DetectionMinimum EigenvalueA corner detection technique that utilizes the minimum eigenvalue in its calculations.Block Size(Default value: 2)
Corner DetectionMinimum EigenvalueA corner detection technique that utilizes the minimum eigenvalue in its calculations.Minimum Detection Value Ratio(Default value: 0.1)
Corner DetectionHarrisA technique that detects corners by moving a small window within the object in the image up, down, left, and right, identifying points where there is a significant change in pixel values within the window.Result Image FormatChoose from Visualize feature points on the original image, View Feature Point Data
Corner DetectionHarrisA technique that detects corners by moving a small window within the object in the image up, down, left, and right, identifying points where there is a significant change in pixel values within the window.Mask SizeChoose from 3x3, 5x5, 7x7
Corner DetectionHarrisA technique that detects corners by moving a small window within the object in the image up, down, left, and right, identifying points where there is a significant change in pixel values within the window.Block Size(Default value: 2)
Corner DetectionHarrisA technique that detects corners by moving a small window within the object in the image up, down, left, and right, identifying points where there is a significant change in pixel values within the window.k(Default value: 0.04)
Corner DetectionHarrisA technique that detects corners by moving a small window within the object in the image up, down, left, and right, identifying points where there is a significant change in pixel values within the window.Minimum Detection Value Ratio(Default value: 0.1)
Corner DetectionGFTT (Good Features to Track)A feature detection technique that considers affine transformations for easier tracking.Result Image FormatChoose from Visualize feature points on the original image, View Feature Point Data
Corner DetectionGFTT (Good Features to Track)A feature detection technique that considers affine transformations for easier tracking.Block Size(Default value: 3)
Corner DetectionGFTT (Good Features to Track)A feature detection technique that considers affine transformations for easier tracking.Detection Limit Ratio(Default value: 0.01)
Corner DetectionGFTT (Good Features to Track)A feature detection technique that considers affine transformations for easier tracking.Detection Count Limit(Default value: 25)
Corner DetectionGFTT (Good Features to Track)A feature detection technique that considers affine transformations for easier tracking.Minimum Distance Between Detections(Default value: 3)
Corner DetectionFASTA feature extraction technique designed for extreme speed.Result Image FormatChoose from Visualize feature points on the original image, View Feature Point Data
Corner DetectionFASTA feature extraction technique designed for extreme speed.Threshold(Default value: 10)
Corner DetectionFASTA feature extraction technique designed for extreme speed.Non-Maximum partition suppressionChoose from Use, Not Used
MorphologyErosionRemoves small objects and reduces boundaries in the input image to eliminate unwanted small noiseKernel ShapeChoose from RECT, CROSS, ELLIPSE
MorphologyErosionRemoves small objects and reduces boundaries in the input image to eliminate unwanted small noiseKernel Size(Default value: 3)
MorphologyDilationExpands small objects and enlarges boundaries in the input image to enhance structural features and close small holes.Kernel ShapeChoose from RECT, CROSS, ELLIPSE
MorphologyDilationExpands small objects and enlarges boundaries in the input image to enhance structural features and close small holes.Kernel Size(Default value: 3)
MorphologyOpeningApply erosion followed by dilation to remove small white noise.Kernel ShapeChoose from RECT, CROSS, ELLIPSE
MorphologyOpeningApply erosion followed by dilation to remove small white noise.Kernel Size(Default value: 3)
MorphologyClosingApply dilation followed by erosion to fill or remove small black holes in white objects.Kernel ShapeChoose from RECT, CROSS, ELLIPSE
MorphologyClosingApply dilation followed by erosion to fill or remove small black holes in white objects.Kernel Size(Default value: 3)
MorphologyClosingApply dilation followed by erosion to fill or remove small black holes in white objects.Binary Threshold(Default value: 100)
MorphologyClosingApply dilation followed by erosion to fill or remove small black holes in white objects.Draw BordersChoose from Yes, No
MorphologyClosingApply dilation followed by erosion to fill or remove small black holes in white objects.Border Thickness(Default value: 3.0)
MorphologyClosingApply dilation followed by erosion to fill or remove small black holes in white objects.R Upper Limit(Default value: 255)
MorphologyClosingApply dilation followed by erosion to fill or remove small black holes in white objects.G Upper Limit(Default value: 255)
MorphologyClosingApply dilation followed by erosion to fill or remove small black holes in white objects.B Upper Limit(Default value: 255)
MorphologyTop HatExtract small elements and details in the input image, and increase the brightness of objects against a dark background.Kernel ShapeChoose from RECT, CROSS, ELLIPSE
MorphologyTop HatExtract small elements and details in the input image, and increase the brightness of objects against a dark background.Kernel Size(Default value: 3)
MorphologyTop HatExtract small elements and details in the input image, and increase the brightness of objects against a dark background.TOP HAT TypeChoose from WHITE, BLACK
MorphologyGradientLeaves only the outlines of binary image regions. The Gradient = Dilate(src) - Erode(src) is identical to subtracting Erode from Dilate.Kernel ShapeChoose from RECT, CROSS, ELLIPSE
MorphologyGradientLeaves only the outlines of binary image regions. The Gradient = Dilate(src) - Erode(src) is identical to subtracting Erode from Dilate.Kernel Size(Default value: 3)
MorphologySmoothingThis method is primarily used to mitigate noise or damage in an input image or videoKernel ShapeChoose from RECT, CROSS, ELLIPSE
MorphologySmoothingThis method is primarily used to mitigate noise or damage in an input image or videoKernel Size(Default value: 3)
GeometryRotationRotate the image counterclockwise.Rotation angle0~360 degrees
GeometryScalingConverts the size of the input image to a user-specified size.Interpolation MethodChoose from Nearest, Linear, Area, Cubic, Lanczos4
GeometryScalingConverts the size of the input image to a user-specified size.Scaling Size(Default value: 1.0)
GeometrySuper ResolutionConverts a low-resolution input image into a corrected high-resolution image.Super Resolution MethodChoose from ESPCN, FSRCNN, or LAPSRN.
GeometrySuper ResolutionConverts a low-resolution input image into a corrected high-resolution image.Scaling SizeChoose from x2, x3, or x4.
GeometryCropCuts the input image to a user-specified size.Select AreaCrop button
GeometryCropCuts the input image to a user-specified size.Method for Handling ExceptionsChoose from Zero padding, Original Version Only
GeometryCropCuts the input image to a user-specified size.Start of Crop X-value(Default value: 0)
GeometryCropCuts the input image to a user-specified size.Start of Crop Y-value(Default value: 0)
GeometryCropCuts the input image to a user-specified size.End of Crop X-value(Default value: 256)
GeometryCropCuts the input image to a user-specified size.End of Crop Y-value(Default value: 256)
GeometryPerspective TransformTransforms the perspective of the image to a user-selected area.Select AreaPerspective Transformation button
GeometryPerspective TransformTransforms the perspective of the image to a user-selected area.Top Left X-value(Default value: 0)
GeometryPerspective TransformTransforms the perspective of the image to a user-selected area.Top Left Y-value(Default value: 0)
GeometryPerspective TransformTransforms the perspective of the image to a user-selected area.Top Right X-value(Default value: 256)
GeometryPerspective TransformTransforms the perspective of the image to a user-selected area.Top Right Y-value(Default value: 0)
GeometryPerspective TransformTransforms the perspective of the image to a user-selected area.Bottom Left X-value(Default value: 0)
GeometryPerspective TransformTransforms the perspective of the image to a user-selected area.Bottom Left Y-value(Default value:256)
GeometryPerspective TransformTransforms the perspective of the image to a user-selected area.Bottom Right X-value(Default value:256)
GeometryPerspective TransformTransforms the perspective of the image to a user-selected area.Bottom Right Y-value(Default value:256)
GeometryAffine TransformTransforms the input image while preserving the linearity, distance ratio, and parallelism of the image. It supports translations, scaling, rotation, and even shearing and reflection transformations.Select AreaAffine Transformation button
GeometryAffine TransformTransforms the input image while preserving the linearity, distance ratio, and parallelism of the image. It supports translations, scaling, rotation, and even shearing and reflection transformations.Top Left X-value(Default value: 25)
GeometryAffine TransformTransforms the input image while preserving the linearity, distance ratio, and parallelism of the image. It supports translations, scaling, rotation, and even shearing and reflection transformations.Top Left Y-value(Default value: 25)
GeometryAffine TransformTransforms the input image while preserving the linearity, distance ratio, and parallelism of the image. It supports translations, scaling, rotation, and even shearing and reflection transformations.Top Right X-value(Default value: 204)
GeometryAffine TransformTransforms the input image while preserving the linearity, distance ratio, and parallelism of the image. It supports translations, scaling, rotation, and even shearing and reflection transformations.Top Right Y-value(Default value: 25)
GeometryAffine TransformTransforms the input image while preserving the linearity, distance ratio, and parallelism of the image. It supports translations, scaling, rotation, and even shearing and reflection transformations.Bottom Left X-value(Default value: 128)
GeometryAffine TransformTransforms the input image while preserving the linearity, distance ratio, and parallelism of the image. It supports translations, scaling, rotation, and even shearing and reflection transformations.Bottom Left Y-value(Default value:204)
GeometryFlipFlip the input image.DirectionChoose from X-axis, Y-axis, XY-axis.
GeometryTranslationTranslates the input image.X-axis(Default value: 10)
GeometryTranslationTranslates the input image.Y-axis(Default value: 10)
GeometryLog Polar TransformationConverts from Cartesian to polar coordinates to consistently recognize objects despite changes in rotation or scale.Direction MethodChoose from Forward, Inverse
GeometryLog Polar TransformationConverts from Cartesian to polar coordinates to consistently recognize objects despite changes in rotation or scale.M(Default value: 80.0)
PyramidsUp/DownApplying Gaussian filtering to an image, the pyramid technique adjusts the image size. ‘pyrUp’: x2, ‘pyrDown’: x1/2.MethodChoose from Up, Down
PyramidsMean ShiftMean shift segmentation using image pyramids on the input image. It involves creating an image pyramid at specified levels, and setting the final values using the average spatial values and average color vectors through the spatial window radius and color window radius. However, due to its high computational demand, effective results require using appropriate image sizes and parameter values.Space Radius(Default value: 2.0)
PyramidsMean ShiftMean shift segmentation using image pyramids on the input image. It involves creating an image pyramid at specified levels, and setting the final values using the average spatial values and average color vectors through the spatial window radius and color window radius. However, due to its high computational demand, effective results require using appropriate image sizes and parameter values.Color Radius(Default value: 40.0)
PyramidsMean ShiftMean shift segmentation using image pyramids on the input image. It involves creating an image pyramid at specified levels, and setting the final values using the average spatial values and average color vectors through the spatial window radius and color window radius. However, due to its high computational demand, effective results require using appropriate image sizes and parameter values.Maximum Pyramid Level(Default value: 3)
Arithmetic OperationsMultiply /DivideMultiplies or divides the input image by a constant value to increase or decrease brightness.Calculation MethodChoose from Multiplication Operation, Division Operation
Arithmetic OperationsMultiply /DivideMultiplies or divides the input image by a constant value to increase or decrease brightness.Calculation Value(Default value: 1.0)
Misc.Noise GenerationGenerates various noises for the restoration of the input image.Noise typeChoose from Gaussian, Exponential, Poisson, Uniform, Impulse, Salt and Pepper, Multi Gaussian, Laplacian
Misc.Noise GenerationGenerates various noises for the restoration of the input image.Mean Value(Default value: 0.0)
Misc.Noise GenerationGenerates various noises for the restoration of the input image.Standard Deviation(Default value: 100)
Misc.Noise GenerationGenerates various noises for the restoration of the input image.Length(Default value: 1000)
Misc.Noise GenerationGenerates various noises for the restoration of the input image.Range(Default value: 0.3)
Misc.Noise GenerationGenerates various noises for the restoration of the input image.Coefficient(Default value: -20)
Misc.Edge PaddingFills the edges of the image using padding methods.Padding generation methodChoose from Fill with 0, Edge Value Replication, Mirror, Iteration, Edge Value Exclusion,
Misc.Edge PaddingFills the edges of the image using padding methods.Padding width(Default value: 1)
Misc.ThresholdingConvert pixels brighter than a given threshold to white, and all others to black for binary conversion.Range Restriction MethodChoose from Binarization, Binarization Color, Inversion, Crop, Zero-Pointing, Zero-Point Color, nversion, OTSU, TRIANGLE
Misc.ThresholdingConvert pixels brighter than a given threshold to white, and all others to black for binary conversion.Threshold value(Default value: 90)
Misc.ThresholdingConvert pixels brighter than a given threshold to white, and all others to black for binary conversion.Specified Value(Default value: 255)
Misc.Adaptive ThresholdingEach pixel is compared to the average value of surrounding pixels; if the difference is large, the pixel is treated as an outlier and thresholded accordingly. Pixels brighter than the adapted threshold are converted to white, and all others to black for binary conversion.Threshold MethodChoose from Binarization, Binarization Color, Inversion, Crop, Zero-Pointing, Zero-Point Color, nversion, OTSU, TRIANGLE
Misc.Adaptive ThresholdingEach pixel is compared to the average value of surrounding pixels; if the difference is large, the pixel is treated as an outlier and thresholded accordingly. Pixels brighter than the adapted threshold are converted to white, and all others to black for binary conversion.Adaptive Thresh MethodChoose from Average, Gaussian
Misc.Adaptive ThresholdingEach pixel is compared to the average value of surrounding pixels; if the difference is large, the pixel is treated as an outlier and thresholded accordingly. Pixels brighter than the adapted threshold are converted to white, and all others to black for binary conversion.Mask SizeChoose from 3x3, 5x5, 7x7
Misc.Adaptive ThresholdingEach pixel is compared to the average value of surrounding pixels; if the difference is large, the pixel is treated as an outlier and thresholded accordingly. Pixels brighter than the adapted threshold are converted to white, and all others to black for binary conversion.Maximum value(Default value: 255)
Misc.Adaptive ThresholdingEach pixel is compared to the average value of surrounding pixels; if the difference is large, the pixel is treated as an outlier and thresholded accordingly. Pixels brighter than the adapted threshold are converted to white, and all others to black for binary conversion.Parameter(Default value: 5)
Misc.Hough Line Detectiondetect straight lines in an input image.Canny: Usage StatusChoose from Use, Not Use
Misc.Hough Line Detectiondetect straight lines in an input image.Canny: Mask sizeChoose from 3x3, 5x5, 7x7
Misc.Hough Line Detectiondetect straight lines in an input image.Canny: Threshold 1(Default value: 0.2)
Misc.Hough Line Detectiondetect straight lines in an input image.Canny: Threshold 2(Default value: 0.8)
Misc.Hough Line Detectiondetect straight lines in an input image.Hough: TypeChoose from Standard, Probabilistic, Multi-scale
Misc.Hough Line Detectiondetect straight lines in an input image.Hough: Rho(Default value: 1)
Misc.Hough Line Detectiondetect straight lines in an input image.Hough: Theta(Default value: 180)
Misc.Hough Line Detectiondetect straight lines in an input image.Hough: Threshold Value(Default value: 150)
Misc.Hough Line Detectiondetect straight lines in an input image.Hough: Raw Improvement Value(srn)(Default value: 0)
Misc.Hough Line Detectiondetect straight lines in an input image.Hough: Theta Improvement Value(stn)(Default value: 0)
Misc.Hough Line Detectiondetect straight lines in an input image.Hough: Minimum Line Length Value(Default value: 0)
Misc.Hough Line Detectiondetect straight lines in an input image.Hough: Maximum Line Gap Value(Default value: 0)
Misc.Hough Circle DetectionDetect circles in an input image.DP Value(Default value: 2)
Misc.Hough Circle DetectionDetect circles in an input image.Minimum Distance Value(Default value: 100)
Misc.Hough Circle DetectionDetect circles in an input image.PARAM1 value(Default value: 200)
Misc.Hough Circle DetectionDetect circles in an input image.PARAM2 value(Default value: 100)
Misc.Hough Circle DetectionDetect circles in an input image.Minimum radius value(Default value: 10)
Misc.Hough Circle DetectionDetect circles in an input image.Maximum radius value(Default value: 0)
Misc.Hough Circle DetectionDetect circles in an input image.Use of blurChoose from Use, Not Use
Misc.Hough Circle DetectionDetect circles in an input image.Mask sizeChoose from 3x3, 5x5, 7x7, 9x9, 11x11, 13x13
Misc.GrayscaleConverts the input color image to a grayscale image.
Misc.Color ExtractionExtracts the values corresponding to Red, Blue, and Green from the input image and displays them on the screen.Color typeChoose from Red, Green, Blue
Misc.Contours DetectionFinds the contours of an image by identifying boundaries that have the same color or intensity.Use of ThresholdChoose from Use, Not Use
Misc.Contours DetectionFinds the contours of an image by identifying boundaries that have the same color or intensity.Threshold(Default value: 127)
Misc.Contours DetectionFinds the contours of an image by identifying boundaries that have the same color or intensity.Contour Detection ModeChoose from External, List, Ccomp, Tree
Misc.Contours DetectionFinds the contours of an image by identifying boundaries that have the same color or intensity.Contour Approximation MethodChoose from None, Simple, TC89_L1, TC89_KCOS
Misc.Contours DetectionFinds the contours of an image by identifying boundaries that have the same color or intensity.Output MethodChoose from Origin,
Misc.Flood FillIf adjacent pixels are similar to the reference color, fill the entire area with a single color.Staring X(Default value: 0)
Misc.Flood FillIf adjacent pixels are similar to the reference color, fill the entire area with a single color.Staring Y(Default value: 0)
Misc.Flood FillIf adjacent pixels are similar to the reference color, fill the entire area with a single color.Low Diff(Default value: 5)
Misc.Flood FillIf adjacent pixels are similar to the reference color, fill the entire area with a single color.High Diff(Default value: 5)
Misc.Flood FillIf adjacent pixels are similar to the reference color, fill the entire area with a single color.ColorChoose one of 13 colors.
Misc.Histogram EqualizationCalculate the cumulative sum of the image histogram and normalize it by dividing by the total number of pixels.Histogram MethodChoosing from Smoothing, Stretching, Sliding
Misc.Histogram EqualizationCalculate the cumulative sum of the image histogram and normalize it by dividing by the total number of pixels.Sliding Value(Default value: 0)
Misc.Fourier TransformThe Fast Fourier Transform (FFT) is an efficient algorithm that quickly performs the Discrete Fourier Transform and its inverse. It is used in many fields, from digital signal processing to algorithms for solving partial differential equations.Transformation MethodChoose from Affine transformation, Inverse transformation
Misc.Change DetectionCompares a pair of selected images pixel by pixel to detect differences.Comparison File Selection MethodChoose from Next File, Previous File, User-defined
Misc.Change DetectionCompares a pair of selected images pixel by pixel to detect differences.Comparison FileChoose from Image List File
Misc.Change DetectionCompares a pair of selected images pixel by pixel to detect differences.Threshold(Default value: 50)
Misc.Change DetectionCompares a pair of selected images pixel by pixel to detect differences.Noise Removal FilterChoose from 1x1, 2x2, 3x3, 4x4, 5x5
Misc.Change DetectionCompares a pair of selected images pixel by pixel to detect differences.View Changes OnlyChoose from true, false
Misc.Change Detection (CNN)Divides a pair of selected images into patches at the same locations and compares them to detect changes.Comparison File Selection MethodChoose from Next File, Previous File, User-defined
Misc.Change Detection (CNN)Divides a pair of selected images into patches at the same locations and compares them to detect changes.Comparison FileChoose from Image List File
Misc.Change Detection (CNN)Divides a pair of selected images into patches at the same locations and compares them to detect changes.Patch size(Default value: 5)
Misc.Change Detection (CNN)Divides a pair of selected images into patches at the same locations and compares them to detect changes.Threshold(Default value: 50)
Misc.Change Detection (CNN)Divides a pair of selected images into patches at the same locations and compares them to detect changes.View Changes OnlyChoose from true, false