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imgproc.go
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imgproc.go
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package gocv
/*
#include <stdlib.h>
#include "imgproc.h"
*/
import "C"
import (
"errors"
"image"
"image/color"
"reflect"
"unsafe"
)
// ArcLength calculates a contour perimeter or a curve length.
//
// For further details, please see:
//
// https://docs.opencv.org/master/d3/dc0/group__imgproc__shape.html#ga8d26483c636be6b35c3ec6335798a47c
func ArcLength(curve PointVector, isClosed bool) float64 {
return float64(C.ArcLength(curve.p, C.bool(isClosed)))
}
// ApproxPolyDP approximates a polygonal curve(s) with the specified precision.
//
// For further details, please see:
//
// https://docs.opencv.org/master/d3/dc0/group__imgproc__shape.html#ga0012a5fdaea70b8a9970165d98722b4c
func ApproxPolyDP(curve PointVector, epsilon float64, closed bool) PointVector {
return PointVector{p: C.ApproxPolyDP(curve.p, C.double(epsilon), C.bool(closed))}
}
// ConvexHull finds the convex hull of a point set.
//
// For further details, please see:
// https://docs.opencv.org/master/d3/dc0/group__imgproc__shape.html#ga014b28e56cb8854c0de4a211cb2be656
func ConvexHull(points PointVector, hull *Mat, clockwise bool, returnPoints bool) {
C.ConvexHull(points.p, hull.p, C.bool(clockwise), C.bool(returnPoints))
}
// ConvexityDefects finds the convexity defects of a contour.
//
// For further details, please see:
// https://docs.opencv.org/master/d3/dc0/group__imgproc__shape.html#gada4437098113fd8683c932e0567f47ba
func ConvexityDefects(contour PointVector, hull Mat, result *Mat) {
C.ConvexityDefects(contour.p, hull.p, result.p)
}
// CvtColor converts an image from one color space to another.
// It converts the src Mat image to the dst Mat using the
// code param containing the desired ColorConversionCode color space.
//
// For further details, please see:
// http://docs.opencv.org/master/d7/d1b/group__imgproc__misc.html#ga4e0972be5de079fed4e3a10e24ef5ef0
func CvtColor(src Mat, dst *Mat, code ColorConversionCode) {
C.CvtColor(src.p, dst.p, C.int(code))
}
// Demosaicing converts an image from Bayer pattern to RGB or grayscale.
// It converts the src Mat image to the dst Mat using the
// code param containing the desired ColorConversionCode color space.
//
// For further details, please see:
// https://docs.opencv.org/master/d7/d1b/group__imgproc__color__conversions.html#ga57261f12fccf872a2b2d66daf29d5bd0
func Demosaicing(src Mat, dst *Mat, code ColorConversionCode) {
C.Demosaicing(src.p, dst.p, C.int(code))
}
// EqualizeHist normalizes the brightness and increases the contrast of the image.
//
// For further details, please see:
// https://docs.opencv.org/master/d6/dc7/group__imgproc__hist.html#ga7e54091f0c937d49bf84152a16f76d6e
func EqualizeHist(src Mat, dst *Mat) {
C.EqualizeHist(src.p, dst.p)
}
// CalcHist Calculates a histogram of a set of images
//
// For futher details, please see:
// https://docs.opencv.org/master/d6/dc7/group__imgproc__hist.html#ga6ca1876785483836f72a77ced8ea759a
func CalcHist(src []Mat, channels []int, mask Mat, hist *Mat, size []int, ranges []float64, acc bool) {
cMatArray := make([]C.Mat, len(src))
for i, r := range src {
cMatArray[i] = r.p
}
cMats := C.struct_Mats{
mats: (*C.Mat)(&cMatArray[0]),
length: C.int(len(src)),
}
chansInts := []C.int{}
for _, v := range channels {
chansInts = append(chansInts, C.int(v))
}
chansVector := C.struct_IntVector{}
chansVector.val = (*C.int)(&chansInts[0])
chansVector.length = (C.int)(len(chansInts))
sizeInts := []C.int{}
for _, v := range size {
sizeInts = append(sizeInts, C.int(v))
}
sizeVector := C.struct_IntVector{}
sizeVector.val = (*C.int)(&sizeInts[0])
sizeVector.length = (C.int)(len(sizeInts))
rangeFloats := []C.float{}
for _, v := range ranges {
rangeFloats = append(rangeFloats, C.float(v))
}
rangeVector := C.struct_FloatVector{}
rangeVector.val = (*C.float)(&rangeFloats[0])
rangeVector.length = (C.int)(len(rangeFloats))
C.CalcHist(cMats, chansVector, mask.p, hist.p, sizeVector, rangeVector, C.bool(acc))
}
// CalcBackProject calculates the back projection of a histogram.
//
// For futher details, please see:
// https://docs.opencv.org/3.4/d6/dc7/group__imgproc__hist.html#ga3a0af640716b456c3d14af8aee12e3ca
func CalcBackProject(src []Mat, channels []int, hist Mat, backProject *Mat, ranges []float64, uniform bool) {
cMatArray := make([]C.Mat, len(src))
for i, r := range src {
cMatArray[i] = r.p
}
cMats := C.struct_Mats{
mats: (*C.Mat)(&cMatArray[0]),
length: C.int(len(src)),
}
chansInts := []C.int{}
for _, v := range channels {
chansInts = append(chansInts, C.int(v))
}
chansVector := C.struct_IntVector{}
chansVector.val = (*C.int)(&chansInts[0])
chansVector.length = (C.int)(len(chansInts))
rangeFloats := []C.float{}
for _, v := range ranges {
rangeFloats = append(rangeFloats, C.float(v))
}
rangeVector := C.struct_FloatVector{}
rangeVector.val = (*C.float)(&rangeFloats[0])
rangeVector.length = (C.int)(len(rangeFloats))
C.CalcBackProject(cMats, chansVector, hist.p, backProject.p, rangeVector, C.bool(uniform))
}
// HistCompMethod is the method for Histogram comparison
// For more information, see https://docs.opencv.org/master/d6/dc7/group__imgproc__hist.html#ga994f53817d621e2e4228fc646342d386
type HistCompMethod int
const (
// HistCmpCorrel calculates the Correlation
HistCmpCorrel HistCompMethod = 0
// HistCmpChiSqr calculates the Chi-Square
HistCmpChiSqr HistCompMethod = 1
// HistCmpIntersect calculates the Intersection
HistCmpIntersect HistCompMethod = 2
// HistCmpBhattacharya applies the HistCmpBhattacharya by calculating the Bhattacharya distance.
HistCmpBhattacharya HistCompMethod = 3
// HistCmpHellinger applies the HistCmpBhattacharya comparison. It is a synonym to HistCmpBhattacharya.
HistCmpHellinger = HistCmpBhattacharya
// HistCmpChiSqrAlt applies the Alternative Chi-Square (regularly used for texture comparsion).
HistCmpChiSqrAlt HistCompMethod = 4
// HistCmpKlDiv applies the Kullback-Liebler divergence comparison.
HistCmpKlDiv HistCompMethod = 5
)
// CompareHist Compares two histograms.
//
// For further details, please see:
// https://docs.opencv.org/master/d6/dc7/group__imgproc__hist.html#gaf4190090efa5c47cb367cf97a9a519bd
func CompareHist(hist1 Mat, hist2 Mat, method HistCompMethod) float32 {
return float32(C.CompareHist(hist1.p, hist2.p, C.int(method)))
}
// EMD Computes the "minimal work" distance between two weighted point configurations.
//
// For further details, please see:
// https://docs.opencv.org/4.x/d6/dc7/group__imgproc__hist.html#ga902b8e60cc7075c8947345489221e0e0
func EMD(signature1, signature2 Mat, typ DistanceTypes) float32 {
return float32(C.EMD(signature1.p, signature2.p, C.int(typ)))
}
// ClipLine clips the line against the image rectangle.
// For further details, please see:
// https://docs.opencv.org/master/d6/d6e/group__imgproc__draw.html#gaf483cb46ad6b049bc35ec67052ef1c2c
func ClipLine(imgSize image.Point, pt1 image.Point, pt2 image.Point) bool {
pSize := C.struct_Size{
width: C.int(imgSize.X),
height: C.int(imgSize.Y),
}
rPt1 := C.struct_Point{
x: C.int(pt1.X),
y: C.int(pt1.Y),
}
rPt2 := C.struct_Point{
x: C.int(pt2.X),
y: C.int(pt2.Y),
}
return bool(C.ClipLine(pSize, rPt1, rPt2))
}
// BilateralFilter applies a bilateral filter to an image.
//
// Bilateral filtering is described here:
// http://www.dai.ed.ac.uk/CVonline/LOCAL_COPIES/MANDUCHI1/Bilateral_Filtering.html
//
// BilateralFilter can reduce unwanted noise very well while keeping edges
// fairly sharp. However, it is very slow compared to most filters.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#ga9d7064d478c95d60003cf839430737ed
func BilateralFilter(src Mat, dst *Mat, diameter int, sigmaColor float64, sigmaSpace float64) {
C.BilateralFilter(src.p, dst.p, C.int(diameter), C.double(sigmaColor), C.double(sigmaSpace))
}
// Blur blurs an image Mat using a normalized box filter.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#ga8c45db9afe636703801b0b2e440fce37
func Blur(src Mat, dst *Mat, ksize image.Point) {
pSize := C.struct_Size{
width: C.int(ksize.X),
height: C.int(ksize.Y),
}
C.Blur(src.p, dst.p, pSize)
}
// BoxFilter blurs an image using the box filter.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#gad533230ebf2d42509547d514f7d3fbc3
func BoxFilter(src Mat, dst *Mat, depth int, ksize image.Point) {
pSize := C.struct_Size{
height: C.int(ksize.X),
width: C.int(ksize.Y),
}
C.BoxFilter(src.p, dst.p, C.int(depth), pSize)
}
// SqBoxFilter calculates the normalized sum of squares of the pixel values overlapping the filter.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#ga045028184a9ef65d7d2579e5c4bff6c0
func SqBoxFilter(src Mat, dst *Mat, depth int, ksize image.Point) {
pSize := C.struct_Size{
height: C.int(ksize.X),
width: C.int(ksize.Y),
}
C.SqBoxFilter(src.p, dst.p, C.int(depth), pSize)
}
// Dilate dilates an image by using a specific structuring element.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#ga4ff0f3318642c4f469d0e11f242f3b6c
func Dilate(src Mat, dst *Mat, kernel Mat) {
C.Dilate(src.p, dst.p, kernel.p)
}
// DilateWithParams dilates an image by using a specific structuring element.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#ga4ff0f3318642c4f469d0e11f242f3b6c
func DilateWithParams(src Mat, dst *Mat, kernel Mat, anchor image.Point, iterations, borderType BorderType, borderValue color.RGBA) {
cAnchor := C.struct_Point{
x: C.int(anchor.X),
y: C.int(anchor.Y),
}
bv := C.struct_Scalar{
val1: C.double(borderValue.B),
val2: C.double(borderValue.G),
val3: C.double(borderValue.R),
val4: C.double(borderValue.A),
}
C.DilateWithParams(src.p, dst.p, kernel.p, cAnchor, C.int(iterations), C.int(borderType), bv)
}
// DistanceTransformLabelTypes are the types of the DistanceTransform algorithm flag
type DistanceTransformLabelTypes int
const (
// DistanceLabelCComp assigns the same label to each connected component of zeros in the source image
// (as well as all the non-zero pixels closest to the connected component).
DistanceLabelCComp DistanceTransformLabelTypes = 0
// DistanceLabelPixel assigns its own label to each zero pixel (and all the non-zero pixels closest to it).
DistanceLabelPixel
)
// DistanceTransformMasks are the marsk sizes for distance transform
type DistanceTransformMasks int
const (
// DistanceMask3 is a mask of size 3
DistanceMask3 DistanceTransformMasks = 0
// DistanceMask5 is a mask of size 3
DistanceMask5
// DistanceMaskPrecise is not currently supported
DistanceMaskPrecise
)
// DistanceTransform Calculates the distance to the closest zero pixel for each pixel of the source image.
//
// For further details, please see:
// https://docs.opencv.org/master/d7/d1b/group__imgproc__misc.html#ga8a0b7fdfcb7a13dde018988ba3a43042
func DistanceTransform(src Mat, dst *Mat, labels *Mat, distType DistanceTypes, maskSize DistanceTransformMasks, labelType DistanceTransformLabelTypes) {
C.DistanceTransform(src.p, dst.p, labels.p, C.int(distType), C.int(maskSize), C.int(labelType))
}
// Erode erodes an image by using a specific structuring element.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#gaeb1e0c1033e3f6b891a25d0511362aeb
func Erode(src Mat, dst *Mat, kernel Mat) {
C.Erode(src.p, dst.p, kernel.p)
}
// ErodeWithParams erodes an image by using a specific structuring element.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#gaeb1e0c1033e3f6b891a25d0511362aeb
func ErodeWithParams(src Mat, dst *Mat, kernel Mat, anchor image.Point, iterations, borderType int) {
cAnchor := C.struct_Point{
x: C.int(anchor.X),
y: C.int(anchor.Y),
}
C.ErodeWithParams(src.p, dst.p, kernel.p, cAnchor, C.int(iterations), C.int(borderType))
}
// ErodeWithParamsAndBorderValue erodes an image by using a specific structuring
// element. Same as ErodeWithParams but requires an additional borderValue
// parameter.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#gaeb1e0c1033e3f6b891a25d0511362aeb
func ErodeWithParamsAndBorderValue(src Mat, dst *Mat, kernel Mat, anchor image.Point, iterations, borderType int, borderValue Scalar) {
cAnchor := C.struct_Point{
x: C.int(anchor.X),
y: C.int(anchor.Y),
}
bv := C.struct_Scalar{
val1: C.double(borderValue.Val1),
val2: C.double(borderValue.Val2),
val3: C.double(borderValue.Val3),
val4: C.double(borderValue.Val4),
}
C.ErodeWithParamsAndBorderValue(src.p, dst.p, kernel.p, cAnchor, C.int(iterations), C.int(borderType), bv)
}
// RetrievalMode is the mode of the contour retrieval algorithm.
type RetrievalMode int
const (
// RetrievalExternal retrieves only the extreme outer contours.
// It sets `hierarchy[i][2]=hierarchy[i][3]=-1` for all the contours.
RetrievalExternal RetrievalMode = 0
// RetrievalList retrieves all of the contours without establishing
// any hierarchical relationships.
RetrievalList RetrievalMode = 1
// RetrievalCComp retrieves all of the contours and organizes them into
// a two-level hierarchy. At the top level, there are external boundaries
// of the components. At the second level, there are boundaries of the holes.
// If there is another contour inside a hole of a connected component, it
// is still put at the top level.
RetrievalCComp RetrievalMode = 2
// RetrievalTree retrieves all of the contours and reconstructs a full
// hierarchy of nested contours.
RetrievalTree RetrievalMode = 3
// RetrievalFloodfill lacks a description in the original header.
RetrievalFloodfill RetrievalMode = 4
)
// ContourApproximationMode is the mode of the contour approximation algorithm.
type ContourApproximationMode int
const (
// ChainApproxNone stores absolutely all the contour points. That is,
// any 2 subsequent points (x1,y1) and (x2,y2) of the contour will be
// either horizontal, vertical or diagonal neighbors, that is,
// max(abs(x1-x2),abs(y2-y1))==1.
ChainApproxNone ContourApproximationMode = 1
// ChainApproxSimple compresses horizontal, vertical, and diagonal segments
// and leaves only their end points.
// For example, an up-right rectangular contour is encoded with 4 points.
ChainApproxSimple ContourApproximationMode = 2
// ChainApproxTC89L1 applies one of the flavors of the Teh-Chin chain
// approximation algorithms.
ChainApproxTC89L1 ContourApproximationMode = 3
// ChainApproxTC89KCOS applies one of the flavors of the Teh-Chin chain
// approximation algorithms.
ChainApproxTC89KCOS ContourApproximationMode = 4
)
// BoundingRect calculates the up-right bounding rectangle of a point set.
//
// For further details, please see:
// https://docs.opencv.org/3.3.0/d3/dc0/group__imgproc__shape.html#gacb413ddce8e48ff3ca61ed7cf626a366
func BoundingRect(contour PointVector) image.Rectangle {
r := C.BoundingRect(contour.p)
rect := image.Rect(int(r.x), int(r.y), int(r.x+r.width), int(r.y+r.height))
return rect
}
// BoxPoints finds the four vertices of a rotated rect. Useful to draw the rotated rectangle.
//
// For further Details, please see:
// https://docs.opencv.org/3.3.0/d3/dc0/group__imgproc__shape.html#gaf78d467e024b4d7936cf9397185d2f5c
func BoxPoints(rect RotatedRect, pts *Mat) {
rPoints := toCPoints(rect.Points)
rRect := C.struct_Rect{
x: C.int(rect.BoundingRect.Min.X),
y: C.int(rect.BoundingRect.Min.Y),
width: C.int(rect.BoundingRect.Max.X - rect.BoundingRect.Min.X),
height: C.int(rect.BoundingRect.Max.Y - rect.BoundingRect.Min.Y),
}
rCenter := C.struct_Point{
x: C.int(rect.Center.X),
y: C.int(rect.Center.Y),
}
rSize := C.struct_Size{
width: C.int(rect.Width),
height: C.int(rect.Height),
}
r := C.struct_RotatedRect{
pts: rPoints,
boundingRect: rRect,
center: rCenter,
size: rSize,
angle: C.double(rect.Angle),
}
C.BoxPoints(r, pts.p)
}
// BoxPoints finds the four vertices of a rotated rect. Useful to draw the rotated rectangle.
//
// For further Details, please see:
// https://docs.opencv.org/3.3.0/d3/dc0/group__imgproc__shape.html#gaf78d467e024b4d7936cf9397185d2f5c
func BoxPoints2f(rect RotatedRect2f, pts *Mat) {
rPoints := toCPoints2f(rect.Points)
rRect := C.struct_Rect{
x: C.int(rect.BoundingRect.Min.X),
y: C.int(rect.BoundingRect.Min.Y),
width: C.int(rect.BoundingRect.Max.X - rect.BoundingRect.Min.X),
height: C.int(rect.BoundingRect.Max.Y - rect.BoundingRect.Min.Y),
}
rCenter := C.struct_Point2f{
x: C.float(rect.Center.X),
y: C.float(rect.Center.Y),
}
rSize := C.struct_Size2f{
width: C.float(rect.Width),
height: C.float(rect.Height),
}
r := C.struct_RotatedRect2f{
pts: rPoints,
boundingRect: rRect,
center: rCenter,
size: rSize,
angle: C.double(rect.Angle),
}
C.BoxPoints2f(r, pts.p)
}
// ContourArea calculates a contour area.
//
// For further details, please see:
// https://docs.opencv.org/3.3.0/d3/dc0/group__imgproc__shape.html#ga2c759ed9f497d4a618048a2f56dc97f1
func ContourArea(contour PointVector) float64 {
result := C.ContourArea(contour.p)
return float64(result)
}
type RotatedRect struct {
Points []image.Point
BoundingRect image.Rectangle
Center image.Point
Width int
Height int
Angle float64
}
type RotatedRect2f struct {
Points []Point2f
BoundingRect image.Rectangle
Center Point2f
Width float32
Height float32
Angle float64
}
// toPoints converts C.Contour to []image.Points
func toPoints(points C.Contour) []image.Point {
pArray := points.points
pLength := int(points.length)
pHdr := reflect.SliceHeader{
Data: uintptr(unsafe.Pointer(pArray)),
Len: pLength,
Cap: pLength,
}
sPoints := *(*[]C.Point)(unsafe.Pointer(&pHdr))
points4 := make([]image.Point, pLength)
for j, pt := range sPoints {
points4[j] = image.Pt(int(pt.x), int(pt.y))
}
return points4
}
// toPoints2f converts C.Contour2f to []Point2f
func toPoints2f(points C.Contour2f) []Point2f {
pArray := points.points
pLength := int(points.length)
pHdr := reflect.SliceHeader{
Data: uintptr(unsafe.Pointer(pArray)),
Len: pLength,
Cap: pLength,
}
sPoints := *(*[]C.Point)(unsafe.Pointer(&pHdr))
points4 := make([]Point2f, pLength)
for j, pt := range sPoints {
points4[j] = NewPoint2f(float32(pt.x), float32(pt.y))
}
return points4
}
// MinAreaRect finds a rotated rectangle of the minimum area enclosing the input 2D point set.
//
// For further details, please see:
// https://docs.opencv.org/master/d3/dc0/group__imgproc__shape.html#ga3d476a3417130ae5154aea421ca7ead9
func MinAreaRect(points PointVector) RotatedRect {
result := C.MinAreaRect(points.p)
defer C.Points_Close(result.pts)
return RotatedRect{
Points: toPoints(result.pts),
BoundingRect: image.Rect(int(result.boundingRect.x), int(result.boundingRect.y), int(result.boundingRect.x)+int(result.boundingRect.width), int(result.boundingRect.y)+int(result.boundingRect.height)),
Center: image.Pt(int(result.center.x), int(result.center.y)),
Width: int(result.size.width),
Height: int(result.size.height),
Angle: float64(result.angle),
}
}
// MinAreaRect finds a rotated rectangle of the minimum area enclosing the input 2D point set.
//
// For further details, please see:
// https://docs.opencv.org/master/d3/dc0/group__imgproc__shape.html#ga3d476a3417130ae5154aea421ca7ead9
func MinAreaRect2f(points PointVector) RotatedRect2f {
result := C.MinAreaRect2f(points.p)
defer C.Points2f_Close(result.pts)
return RotatedRect2f{
Points: toPoints2f(result.pts),
BoundingRect: image.Rect(int(result.boundingRect.x), int(result.boundingRect.y), int(result.boundingRect.x)+int(result.boundingRect.width), int(result.boundingRect.y)+int(result.boundingRect.height)),
Center: NewPoint2f(float32(result.center.x), float32(result.center.y)),
Width: float32(result.size.width),
Height: float32(result.size.height),
Angle: float64(result.angle),
}
}
// FitEllipse Fits an ellipse around a set of 2D points.
//
// For further details, please see:
// https://docs.opencv.org/master/d3/dc0/group__imgproc__shape.html#gaf259efaad93098103d6c27b9e4900ffa
func FitEllipse(pts PointVector) RotatedRect {
cRect := C.FitEllipse(pts.p)
defer C.Points_Close(cRect.pts)
return RotatedRect{
Points: toPoints(cRect.pts),
BoundingRect: image.Rect(int(cRect.boundingRect.x), int(cRect.boundingRect.y), int(cRect.boundingRect.x)+int(cRect.boundingRect.width), int(cRect.boundingRect.y)+int(cRect.boundingRect.height)),
Center: image.Pt(int(cRect.center.x), int(cRect.center.y)),
Width: int(cRect.size.width),
Height: int(cRect.size.height),
Angle: float64(cRect.angle),
}
}
// MinEnclosingCircle finds a circle of the minimum area enclosing the input 2D point set.
//
// For further details, please see:
// https://docs.opencv.org/3.4/d3/dc0/group__imgproc__shape.html#ga8ce13c24081bbc7151e9326f412190f1
func MinEnclosingCircle(pts PointVector) (x, y, radius float32) {
cCenterPoint := C.struct_Point2f{}
var cRadius C.float
C.MinEnclosingCircle(pts.p, &cCenterPoint, &cRadius)
x, y = float32(cCenterPoint.x), float32(cCenterPoint.y)
radius = float32(cRadius)
return x, y, radius
}
// FindContours finds contours in a binary image.
//
// For further details, please see:
// https://docs.opencv.org/master/d3/dc0/group__imgproc__shape.html#ga95f5b48d01abc7c2e0732db24689837b
func FindContours(src Mat, mode RetrievalMode, method ContourApproximationMode) PointsVector {
hierarchy := NewMat()
defer hierarchy.Close()
return FindContoursWithParams(src, &hierarchy, mode, method)
}
// FindContoursWithParams finds contours in a binary image.
//
// For further details, please see:
// https://docs.opencv.org/master/d3/dc0/group__imgproc__shape.html#ga17ed9f5d79ae97bd4c7cf18403e1689a
func FindContoursWithParams(src Mat, hierarchy *Mat, mode RetrievalMode, method ContourApproximationMode) PointsVector {
return PointsVector{p: C.FindContours(src.p, hierarchy.p, C.int(mode), C.int(method))}
}
// PointPolygonTest performs a point-in-contour test.
//
// For further details, please see:
// https://docs.opencv.org/master/d3/dc0/group__imgproc__shape.html#ga1a539e8db2135af2566103705d7a5722
func PointPolygonTest(pts PointVector, pt image.Point, measureDist bool) float64 {
cp := C.struct_Point{
x: C.int(pt.X),
y: C.int(pt.Y),
}
return float64(C.PointPolygonTest(pts.p, cp, C.bool(measureDist)))
}
// ConnectedComponentsAlgorithmType specifies the type for ConnectedComponents
type ConnectedComponentsAlgorithmType int
const (
// SAUF algorithm for 8-way connectivity, SAUF algorithm for 4-way connectivity.
CCL_WU ConnectedComponentsAlgorithmType = 0
// BBDT algorithm for 8-way connectivity, SAUF algorithm for 4-way connectivity.
CCL_DEFAULT ConnectedComponentsAlgorithmType = 1
// BBDT algorithm for 8-way connectivity, SAUF algorithm for 4-way connectivity
CCL_GRANA ConnectedComponentsAlgorithmType = 2
)
// ConnectedComponents computes the connected components labeled image of boolean image.
//
// For further details, please see:
// https://docs.opencv.org/master/d3/dc0/group__imgproc__shape.html#gaedef8c7340499ca391d459122e51bef5
func ConnectedComponents(src Mat, labels *Mat) int {
return int(C.ConnectedComponents(src.p, labels.p, C.int(8), C.int(MatTypeCV32S), C.int(CCL_DEFAULT)))
}
// ConnectedComponents computes the connected components labeled image of boolean image.
//
// For further details, please see:
// https://docs.opencv.org/master/d3/dc0/group__imgproc__shape.html#gaedef8c7340499ca391d459122e51bef5
func ConnectedComponentsWithParams(src Mat, labels *Mat, conn int, ltype MatType,
ccltype ConnectedComponentsAlgorithmType) int {
return int(C.ConnectedComponents(src.p, labels.p, C.int(conn), C.int(ltype), C.int(ccltype)))
}
// ConnectedComponentsTypes are the connected components algorithm output formats
type ConnectedComponentsTypes int
const (
//The leftmost (x) coordinate which is the inclusive start of the bounding box in the horizontal direction.
CC_STAT_LEFT ConnectedComponentsTypes = 0
//The topmost (y) coordinate which is the inclusive start of the bounding box in the vertical direction.
CC_STAT_TOP ConnectedComponentsTypes = 1
// The horizontal size of the bounding box.
CC_STAT_WIDTH ConnectedComponentsTypes = 2
// The vertical size of the bounding box.
CC_STAT_HEIGHT ConnectedComponentsTypes = 3
// The total area (in pixels) of the connected component.
CC_STAT_AREA ConnectedComponentsTypes = 4
CC_STAT_MAX ConnectedComponentsTypes = 5
)
// ConnectedComponentsWithStats computes the connected components labeled image of boolean
// image and also produces a statistics output for each label.
//
// For further details, please see:
// https://docs.opencv.org/master/d3/dc0/group__imgproc__shape.html#ga107a78bf7cd25dec05fb4dfc5c9e765f
func ConnectedComponentsWithStats(src Mat, labels *Mat, stats *Mat, centroids *Mat) int {
return int(C.ConnectedComponentsWithStats(src.p, labels.p, stats.p, centroids.p,
C.int(8), C.int(MatTypeCV32S), C.int(CCL_DEFAULT)))
}
// ConnectedComponentsWithStats computes the connected components labeled image of boolean
// image and also produces a statistics output for each label.
//
// For further details, please see:
// https://docs.opencv.org/master/d3/dc0/group__imgproc__shape.html#ga107a78bf7cd25dec05fb4dfc5c9e765f
func ConnectedComponentsWithStatsWithParams(src Mat, labels *Mat, stats *Mat, centroids *Mat,
conn int, ltype MatType, ccltype ConnectedComponentsAlgorithmType) int {
return int(C.ConnectedComponentsWithStats(src.p, labels.p, stats.p, centroids.p, C.int(conn),
C.int(ltype), C.int(ccltype)))
}
// TemplateMatchMode is the type of the template matching operation.
type TemplateMatchMode int
const (
// TmSqdiff maps to TM_SQDIFF
TmSqdiff TemplateMatchMode = 0
// TmSqdiffNormed maps to TM_SQDIFF_NORMED
TmSqdiffNormed TemplateMatchMode = 1
// TmCcorr maps to TM_CCORR
TmCcorr TemplateMatchMode = 2
// TmCcorrNormed maps to TM_CCORR_NORMED
TmCcorrNormed TemplateMatchMode = 3
// TmCcoeff maps to TM_CCOEFF
TmCcoeff TemplateMatchMode = 4
// TmCcoeffNormed maps to TM_CCOEFF_NORMED
TmCcoeffNormed TemplateMatchMode = 5
)
// MatchTemplate compares a template against overlapped image regions.
//
// For further details, please see:
// https://docs.opencv.org/master/df/dfb/group__imgproc__object.html#ga586ebfb0a7fb604b35a23d85391329be
func MatchTemplate(image Mat, templ Mat, result *Mat, method TemplateMatchMode, mask Mat) {
C.MatchTemplate(image.p, templ.p, result.p, C.int(method), mask.p)
}
// Moments calculates all of the moments up to the third order of a polygon
// or rasterized shape.
//
// For further details, please see:
// https://docs.opencv.org/master/d3/dc0/group__imgproc__shape.html#ga556a180f43cab22649c23ada36a8a139
func Moments(src Mat, binaryImage bool) map[string]float64 {
r := C.Moments(src.p, C.bool(binaryImage))
result := make(map[string]float64)
result["m00"] = float64(r.m00)
result["m10"] = float64(r.m10)
result["m01"] = float64(r.m01)
result["m20"] = float64(r.m20)
result["m11"] = float64(r.m11)
result["m02"] = float64(r.m02)
result["m30"] = float64(r.m30)
result["m21"] = float64(r.m21)
result["m12"] = float64(r.m12)
result["m03"] = float64(r.m03)
result["mu20"] = float64(r.mu20)
result["mu11"] = float64(r.mu11)
result["mu02"] = float64(r.mu02)
result["mu30"] = float64(r.mu30)
result["mu21"] = float64(r.mu21)
result["mu12"] = float64(r.mu12)
result["mu03"] = float64(r.mu03)
result["nu20"] = float64(r.nu20)
result["nu11"] = float64(r.nu11)
result["nu02"] = float64(r.nu02)
result["nu30"] = float64(r.nu30)
result["nu21"] = float64(r.nu21)
result["nu12"] = float64(r.nu12)
result["nu03"] = float64(r.nu03)
return result
}
// PyrDown blurs an image and downsamples it.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#gaf9bba239dfca11654cb7f50f889fc2ff
func PyrDown(src Mat, dst *Mat, ksize image.Point, borderType BorderType) {
pSize := C.struct_Size{
height: C.int(ksize.X),
width: C.int(ksize.Y),
}
C.PyrDown(src.p, dst.p, pSize, C.int(borderType))
}
// PyrUp upsamples an image and then blurs it.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#gada75b59bdaaca411ed6fee10085eb784
func PyrUp(src Mat, dst *Mat, ksize image.Point, borderType BorderType) {
pSize := C.struct_Size{
height: C.int(ksize.X),
width: C.int(ksize.Y),
}
C.PyrUp(src.p, dst.p, pSize, C.int(borderType))
}
// MorphologyDefaultBorder returns "magic" border value for erosion and dilation.
// It is automatically transformed to Scalar::all(-DBL_MAX) for dilation.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#ga94756fad83d9d24d29c9bf478558c40a
func MorphologyDefaultBorderValue() Scalar {
var scalar C.Scalar = C.MorphologyDefaultBorderValue()
return NewScalar(float64(scalar.val1), float64(scalar.val2), float64(scalar.val3), float64(scalar.val4))
}
// MorphologyEx performs advanced morphological transformations.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#ga67493776e3ad1a3df63883829375201f
func MorphologyEx(src Mat, dst *Mat, op MorphType, kernel Mat) {
C.MorphologyEx(src.p, dst.p, C.int(op), kernel.p)
}
// MorphologyExWithParams performs advanced morphological transformations.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#ga67493776e3ad1a3df63883829375201f
func MorphologyExWithParams(src Mat, dst *Mat, op MorphType, kernel Mat, iterations int, borderType BorderType) {
pt := C.struct_Point{
x: C.int(-1),
y: C.int(-1),
}
C.MorphologyExWithParams(src.p, dst.p, C.int(op), kernel.p, pt, C.int(iterations), C.int(borderType))
}
// MorphShape is the shape of the structuring element used for Morphing operations.
type MorphShape int
const (
// MorphRect is the rectangular morph shape.
MorphRect MorphShape = 0
// MorphCross is the cross morph shape.
MorphCross MorphShape = 1
// MorphEllipse is the ellipse morph shape.
MorphEllipse MorphShape = 2
)
// GetStructuringElement returns a structuring element of the specified size
// and shape for morphological operations.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#gac342a1bb6eabf6f55c803b09268e36dc
func GetStructuringElement(shape MorphShape, ksize image.Point) Mat {
sz := C.struct_Size{
width: C.int(ksize.X),
height: C.int(ksize.Y),
}
return newMat(C.GetStructuringElement(C.int(shape), sz))
}
// MorphType type of morphological operation.
type MorphType int
const (
// MorphErode operation
MorphErode MorphType = 0
// MorphDilate operation
MorphDilate MorphType = 1
// MorphOpen operation
MorphOpen MorphType = 2
// MorphClose operation
MorphClose MorphType = 3
// MorphGradient operation
MorphGradient MorphType = 4
// MorphTophat operation
MorphTophat MorphType = 5
// MorphBlackhat operation
MorphBlackhat MorphType = 6
// MorphHitmiss operation
MorphHitmiss MorphType = 7
)
// BorderType type of border.
type BorderType int
const (
// BorderConstant border type
BorderConstant BorderType = 0
// BorderReplicate border type
BorderReplicate BorderType = 1
// BorderReflect border type
BorderReflect BorderType = 2
// BorderWrap border type
BorderWrap BorderType = 3
// BorderReflect101 border type
BorderReflect101 BorderType = 4
// BorderTransparent border type
BorderTransparent BorderType = 5
// BorderDefault border type
BorderDefault = BorderReflect101
// BorderIsolated border type
BorderIsolated BorderType = 16
)
// GaussianBlur blurs an image Mat using a Gaussian filter.
// The function convolves the src Mat image into the dst Mat using
// the specified Gaussian kernel params.
//
// For further details, please see:
// http://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#gaabe8c836e97159a9193fb0b11ac52cf1
func GaussianBlur(src Mat, dst *Mat, ksize image.Point, sigmaX float64,
sigmaY float64, borderType BorderType) {
pSize := C.struct_Size{
width: C.int(ksize.X),
height: C.int(ksize.Y),
}
C.GaussianBlur(src.p, dst.p, pSize, C.double(sigmaX), C.double(sigmaY), C.int(borderType))
}
// GetGaussianKernel returns Gaussian filter coefficients.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#gac05a120c1ae92a6060dd0db190a61afa
func GetGaussianKernel(ksize int, sigma float64) Mat {
return newMat(C.GetGaussianKernel(C.int(ksize), C.double(sigma), C.int(MatTypeCV64F)))
}
// GetGaussianKernelWithParams returns Gaussian filter coefficients.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#gac05a120c1ae92a6060dd0db190a61afa
func GetGaussianKernelWithParams(ksize int, sigma float64, ktype MatType) Mat {
return newMat(C.GetGaussianKernel(C.int(ksize), C.double(sigma), C.int(ktype)))
}
// Sobel calculates the first, second, third, or mixed image derivatives using an extended Sobel operator
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#gacea54f142e81b6758cb6f375ce782c8d
func Sobel(src Mat, dst *Mat, ddepth MatType, dx, dy, ksize int, scale, delta float64, borderType BorderType) {
C.Sobel(src.p, dst.p, C.int(ddepth), C.int(dx), C.int(dy), C.int(ksize), C.double(scale), C.double(delta), C.int(borderType))
}
// SpatialGradient calculates the first order image derivative in both x and y using a Sobel operator.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#ga405d03b20c782b65a4daf54d233239a2
func SpatialGradient(src Mat, dx, dy *Mat, ksize MatType, borderType BorderType) {
C.SpatialGradient(src.p, dx.p, dy.p, C.int(ksize), C.int(borderType))
}
// Laplacian calculates the Laplacian of an image.
//
// For further details, please see:
// https://docs.opencv.org/master/d4/d86/group__imgproc__filter.html#gad78703e4c8fe703d479c1860d76429e6
func Laplacian(src Mat, dst *Mat, dDepth MatType, size int, scale float64,
delta float64, borderType BorderType) {
C.Laplacian(src.p, dst.p, C.int(dDepth), C.int(size), C.double(scale), C.double(delta), C.int(borderType))