forked from hybridgroup/gocv
/
face.go
158 lines (136 loc) · 4.49 KB
/
face.go
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package contrib
/*
#include <stdlib.h>
#include "face.h"
*/
import "C"
import (
"unsafe"
"gocv.io/x/gocv"
)
type PredictResponse struct {
Label int32 `json:"label"`
Confidence float32 `json:"confidence"`
}
type LBPHFaceRecognizer struct {
p C.LBPHFaceRecognizer
}
// Create new LBPH Recognizer model
//
// see https://docs.opencv.org/3.4.0/df/d25/classcv_1_1face_1_1LBPHFaceRecognizer.html
//
func NewLBPHFaceRecognizer() *LBPHFaceRecognizer {
return &LBPHFaceRecognizer{p: C.CreateLBPHFaceRecognizer()}
}
// Train loaded model with images and their labels
//
// see https://docs.opencv.org/3.4.0/dd/d65/classcv_1_1face_1_1FaceRecognizer.html#ac8680c2aa9649ad3f55e27761165c0d6
//
func (fr *LBPHFaceRecognizer) Train(images []gocv.Mat, labels []int) {
cparams := []C.int{}
for _, v := range labels {
cparams = append(cparams, C.int(v))
}
labelsVector := C.struct_IntVector{}
labelsVector.val = (*C.int)(&cparams[0])
labelsVector.length = (C.int)(len(cparams))
cMatArray := make([]C.Mat, len(images))
for i, r := range images {
cMatArray[i] = (C.Mat)(r.Ptr())
}
matsVector := C.struct_Mats{
mats: (*C.Mat)(&cMatArray[0]),
length: C.int(len(images)),
}
C.LBPHFaceRecognizer_Train(fr.p, matsVector, labelsVector)
}
// update existing trained model with new images and labels
//
// see https://docs.opencv.org/3.4.0/dd/d65/classcv_1_1face_1_1FaceRecognizer.html#a8a4e73ea878dcd0c235d0487189d25f3
//
func (fr *LBPHFaceRecognizer) Update(newImages []gocv.Mat, newLabels []int) {
cparams := []C.int{}
for _, v := range newLabels {
cparams = append(cparams, C.int(v))
}
labelsVector := C.struct_IntVector{}
labelsVector.val = (*C.int)(&cparams[0])
labelsVector.length = (C.int)(len(cparams))
cMatArray := make([]C.Mat, len(newImages))
for i, r := range newImages {
cMatArray[i] = (C.Mat)(r.Ptr())
}
matsVector := C.struct_Mats{
mats: (*C.Mat)(&cMatArray[0]),
length: C.int(len(newImages)),
}
C.LBPHFaceRecognizer_Update(fr.p, matsVector, labelsVector)
}
// predict image for trained model, retun label for correctly predicted image, return -1 if not found
//
// see https://docs.opencv.org/3.4.0/dd/d65/classcv_1_1face_1_1FaceRecognizer.html#aa2d2f02faffab1bf01317ae6502fb631
//
func (fr *LBPHFaceRecognizer) Predict(sample gocv.Mat) int {
label := C.LBPHFaceRecognizer_Predict(fr.p, (C.Mat)(sample.Ptr()))
return int(label)
}
// the same as above but returns some more info
//
// see https://docs.opencv.org/3.4.0/dd/d65/classcv_1_1face_1_1FaceRecognizer.html#ab0d593e53ebd9a0f350c989fcac7f251
//
func (fr *LBPHFaceRecognizer) PredictExtendedResponse(sample gocv.Mat) PredictResponse {
respp := C.LBPHFaceRecognizer_PredictExtended(fr.p, (C.Mat)(sample.Ptr()))
resp := PredictResponse{
Label: int32(respp.label),
Confidence: float32(respp.confidence),
}
return resp
}
// set Threshold value
//
// see https://docs.opencv.org/3.4.0/dd/d65/classcv_1_1face_1_1FaceRecognizer.html#a3182081e5f8023e658ad8ab96656dd63
//
func (fr *LBPHFaceRecognizer) SetThreshold(threshold float32) {
C.LBPHFaceRecognizer_SetThreshold(fr.p, (C.double)(threshold))
}
// set Neighbors
//
// see https://docs.opencv.org/3.4.0/df/d25/classcv_1_1face_1_1LBPHFaceRecognizer.html#ab225f7bf353ce8697a506eda10124a92
// wrong neighbors can raise opencv exception!
//
func (fr *LBPHFaceRecognizer) SetNeighbors(neighbors int) {
C.LBPHFaceRecognizer_SetNeighbors(fr.p, (C.int)(neighbors))
}
// get Neighbors
//
// see https://docs.opencv.org/3.4.0/df/d25/classcv_1_1face_1_1LBPHFaceRecognizer.html#a50a3e2ca6e8464166e153c9df84b0a77
//
func (fr *LBPHFaceRecognizer) GetNeighbors() int {
n := C.LBPHFaceRecognizer_GetNeighbors(fr.p)
return int(n)
}
// set Radius
//
// see https://docs.opencv.org/3.4.0/df/d25/classcv_1_1face_1_1LBPHFaceRecognizer.html#a62d94c75cade902fd3b487b1ef9883fc
//
func (fr *LBPHFaceRecognizer) SetRadius(radius int) {
C.LBPHFaceRecognizer_SetRadius(fr.p, (C.int)(radius))
}
// save trained model data to file
//
// see https://docs.opencv.org/3.4.0/dd/d65/classcv_1_1face_1_1FaceRecognizer.html#a2adf2d555550194244b05c91fefcb4d6
//
func (fr *LBPHFaceRecognizer) SaveFile(fname string) {
cName := C.CString(fname)
defer C.free(unsafe.Pointer(cName))
C.LBPHFaceRecognizer_SaveFile(fr.p, cName)
}
// load traned model data from file
//
// see https://docs.opencv.org/3.4.0/dd/d65/classcv_1_1face_1_1FaceRecognizer.html#acc42e5b04595dba71f0777c7179af8c3
//
func (fr *LBPHFaceRecognizer) LoadFile(fname string) {
cName := C.CString(fname)
defer C.free(unsafe.Pointer(cName))
C.LBPHFaceRecognizer_LoadFile(fr.p, cName)
}