photoprism/internal/face/net.go

174 lines
3.9 KiB
Go

package face
import (
"bytes"
"fmt"
"image"
"io/ioutil"
"path"
"path/filepath"
"runtime/debug"
"sync"
"github.com/disintegration/imaging"
"github.com/photoprism/photoprism/pkg/txt"
tf "github.com/tensorflow/tensorflow/tensorflow/go"
)
// Net is a wrapper for the TensorFlow Facenet model.
type Net struct {
model *tf.SavedModel
modelPath string
disabled bool
modelName string
modelTags []string
mutex sync.Mutex
}
// NewNet returns new TensorFlow instance with Facenet model.
func NewNet(modelPath string, disabled bool) *Net {
return &Net{modelPath: modelPath, disabled: disabled, modelTags: []string{"serve"}}
}
// Detect runs the detection and facenet algorithms over the provided source image.
func (t *Net) Detect(fileName string) (faces Faces, err error) {
faces, err = Detect(fileName)
if err != nil {
return faces, err
}
if t.disabled {
return faces, nil
}
err = t.loadModel()
if err != nil {
return faces, err
}
for i, f := range faces {
if f.Face.Col == 0 && f.Face.Row == 0 {
continue
}
embedding := t.getFaceEmbedding(fileName, f.Face)
if len(embedding) > 0 {
faces[i].Embedding = embedding[0]
}
}
return faces, nil
}
// ModelLoaded tests if the TensorFlow model is loaded.
func (t *Net) ModelLoaded() bool {
return t.model != nil
}
func (t *Net) loadModel() error {
t.mutex.Lock()
defer t.mutex.Unlock()
if t.ModelLoaded() {
return nil
}
modelPath := path.Join(t.modelPath)
log.Infof("face: loading %s", txt.Quote(filepath.Base(modelPath)))
// Load model
model, err := tf.LoadSavedModel(modelPath, t.modelTags, nil)
if err != nil {
return err
}
t.model = model
return nil
}
func (t *Net) getFaceEmbedding(fileName string, f Point) [][]float32 {
x, y := f.TopLeft()
imageBuffer, err := ioutil.ReadFile(fileName)
img, err := imaging.Decode(bytes.NewReader(imageBuffer), imaging.AutoOrientation(true))
if err != nil {
log.Errorf("face: failed to decode image: %v", err)
}
img = imaging.Crop(img, image.Rect(y, x, y+f.Scale, x+f.Scale))
img = imaging.Fill(img, 160, 160, imaging.Center, imaging.Lanczos)
// err = imaging.Save(img, "testdata_out/face" + strconv.Itoa(t.count) + ".jpg")
// if err != nil {
// log.Fatalf("failed to save image: %v", err)
// }
tensor, err := imageToTensor(img, 160, 160)
if err != nil {
log.Errorf("face: failed to convert image to tensor: %v", err)
}
// TODO: prewhiten image as in facenet
trainPhaseBoolTensor, err := tf.NewTensor(false)
output, err := t.model.Session.Run(
map[tf.Output]*tf.Tensor{
t.model.Graph.Operation("input").Output(0): tensor,
t.model.Graph.Operation("phase_train").Output(0): trainPhaseBoolTensor,
},
[]tf.Output{
t.model.Graph.Operation("embeddings").Output(0),
},
nil)
if err != nil {
log.Errorf("face: faled to infer embeddings of face: %v", err)
}
if len(output) < 1 {
log.Errorf("face: inference failed, no output")
} else {
return output[0].Value().([][]float32)
// embeddings = append(embeddings, output[0].Value().([][]float32)[0])
}
return nil
}
func imageToTensor(img image.Image, imageHeight, imageWidth int) (tfTensor *tf.Tensor, err error) {
defer func() {
if r := recover(); r != nil {
err = fmt.Errorf("face: %s (panic)\nstack: %s", r, debug.Stack())
}
}()
if imageHeight <= 0 || imageWidth <= 0 {
return tfTensor, fmt.Errorf("face: image width and height must be > 0")
}
var tfImage [1][][][3]float32
for j := 0; j < imageHeight; j++ {
tfImage[0] = append(tfImage[0], make([][3]float32, imageWidth))
}
for i := 0; i < imageWidth; i++ {
for j := 0; j < imageHeight; j++ {
r, g, b, _ := img.At(i, j).RGBA()
tfImage[0][j][i][0] = convertValue(r)
tfImage[0][j][i][1] = convertValue(g)
tfImage[0][j][i][2] = convertValue(b)
}
}
return tf.NewTensor(tfImage)
}
func convertValue(value uint32) float32 {
return (float32(value>>8) - float32(127.5)) / float32(127.5)
}