You can use ML Kit to detect faces in images and video.
Before you begin
- If you haven't already, add Firebase to your Android project.
- Add the dependencies for the ML Kit Android libraries to your module
(app-level) Gradle file (usually
app/build.gradle
):apply plugin: 'com.android.application' apply plugin: 'com.google.gms.google-services' dependencies { // ... implementation 'com.google.firebase:firebase-ml-vision:24.0.3' // If you want to detect face contours (landmark detection and classification // don't require this additional model): implementation 'com.google.firebase:firebase-ml-vision-face-model:20.0.1' }
-
Optional but recommended: Configure your app to automatically download
the ML model to the device after your app is installed from the Play Store.
To do so, add the following declaration to your app's
AndroidManifest.xml
file:<application ...> ... <meta-data android:name="com.google.firebase.ml.vision.DEPENDENCIES" android:value="face" /> <!-- To use multiple models: android:value="face,model2,model3" --> </application>
If you do not enable install-time model downloads, the model will be downloaded the first time you run the detector. Requests you make before the download has completed will produce no results.
Input image guidelines
For ML Kit to accurately detect faces, input images must contain faces that are represented by sufficient pixel data. In general, each face you want to detect in an image should be at least 100x100 pixels. If you want to detect the contours of faces, ML Kit requires higher resolution input: each face should be at least 200x200 pixels.
If you are detecting faces in a real-time application, you might also want to consider the overall dimensions of the input images. Smaller images can be processed faster, so to reduce latency, capture images at lower resolutions (keeping in mind the above accuracy requirements) and ensure that the subject's face occupies as much of the image as possible. Also see Tips to improve real-time performance.
Poor image focus can hurt accuracy. If you aren't getting acceptable results, try asking the user to recapture the image.
The orientation of a face relative to the camera can also affect what facial features ML Kit detects. See Face Detection Concepts.
1. Configure the face detector
Before you apply face detection to an image, if you want to change any of the face detector's default settings, specify those settings with aFirebaseVisionFaceDetectorOptions
object.
You can change the following settings:
Settings | |
---|---|
Performance mode |
FAST (default)
| ACCURATE
Favor speed or accuracy when detecting faces. |
Detect landmarks |
NO_LANDMARKS (default)
| ALL_LANDMARKS
Whether to attempt to identify facial "landmarks": eyes, ears, nose, cheeks, mouth, and so on. |
Detect contours |
NO_CONTOURS (default)
| ALL_CONTOURS
Whether to detect the contours of facial features. Contours are detected for only the most prominent face in an image. |
Classify faces |
NO_CLASSIFICATIONS (default)
| ALL_CLASSIFICATIONS
Whether or not to classify faces into categories such as "smiling", and "eyes open". |
Minimum face size |
float (default: 0.1f )
The minimum size, relative to the image, of faces to detect. |
Enable face tracking |
false (default) | true
Whether or not to assign faces an ID, which can be used to track faces across images. Note that when contour detection is enabled, only one face is detected, so face tracking doesn't produce useful results. For this reason, and to improve detection speed, don't enable both contour detection and face tracking. |
For example:
Java
// High-accuracy landmark detection and face classification FirebaseVisionFaceDetectorOptions highAccuracyOpts = new FirebaseVisionFaceDetectorOptions.Builder() .setPerformanceMode(FirebaseVisionFaceDetectorOptions.ACCURATE) .setLandmarkMode(FirebaseVisionFaceDetectorOptions.ALL_LANDMARKS) .setClassificationMode(FirebaseVisionFaceDetectorOptions.ALL_CLASSIFICATIONS) .build(); // Real-time contour detection of multiple faces FirebaseVisionFaceDetectorOptions realTimeOpts = new FirebaseVisionFaceDetectorOptions.Builder() .setContourMode(FirebaseVisionFaceDetectorOptions.ALL_CONTOURS) .build();
Kotlin+KTX
// High-accuracy landmark detection and face classification val highAccuracyOpts = FirebaseVisionFaceDetectorOptions.Builder() .setPerformanceMode(FirebaseVisionFaceDetectorOptions.ACCURATE) .setLandmarkMode(FirebaseVisionFaceDetectorOptions.ALL_LANDMARKS) .setClassificationMode(FirebaseVisionFaceDetectorOptions.ALL_CLASSIFICATIONS) .build() // Real-time contour detection of multiple faces val realTimeOpts = FirebaseVisionFaceDetectorOptions.Builder() .setContourMode(FirebaseVisionFaceDetectorOptions.ALL_CONTOURS) .build()
2. Run the face detector
To detect faces in an image, create aFirebaseVisionImage
object
from either a Bitmap
, media.Image
, ByteBuffer
, byte array, or a file on
the device. Then, pass the FirebaseVisionImage
object to the
FirebaseVisionFaceDetector
's detectInImage
method.
For face recognition, you should use an image with dimensions of at least 480x360 pixels. If you are recognizing faces in real time, capturing frames at this minimum resolution can help reduce latency.
Create a
FirebaseVisionImage
object from your image.-
To create a
FirebaseVisionImage
object from amedia.Image
object, such as when capturing an image from a device's camera, pass themedia.Image
object and the image's rotation toFirebaseVisionImage.fromMediaImage()
.If you use the CameraX library, the
OnImageCapturedListener
andImageAnalysis.Analyzer
classes calculate the rotation value for you, so you just need to convert the rotation to one of ML Kit'sROTATION_
constants before callingFirebaseVisionImage.fromMediaImage()
:Java
private class YourAnalyzer implements ImageAnalysis.Analyzer { private int degreesToFirebaseRotation(int degrees) { switch (degrees) { case 0: return FirebaseVisionImageMetadata.ROTATION_0; case 90: return FirebaseVisionImageMetadata.ROTATION_90; case 180: return FirebaseVisionImageMetadata.ROTATION_180; case 270: return FirebaseVisionImageMetadata.ROTATION_270; default: throw new IllegalArgumentException( "Rotation must be 0, 90, 180, or 270."); } } @Override public void analyze(ImageProxy imageProxy, int degrees) { if (imageProxy == null || imageProxy.getImage() == null) { return; } Image mediaImage = imageProxy.getImage(); int rotation = degreesToFirebaseRotation(degrees); FirebaseVisionImage image = FirebaseVisionImage.fromMediaImage(mediaImage, rotation); // Pass image to an ML Kit Vision API // ... } }
Kotlin+KTX
private class YourImageAnalyzer : ImageAnalysis.Analyzer { private fun degreesToFirebaseRotation(degrees: Int): Int = when(degrees) { 0 -> FirebaseVisionImageMetadata.ROTATION_0 90 -> FirebaseVisionImageMetadata.ROTATION_90 180 -> FirebaseVisionImageMetadata.ROTATION_180 270 -> FirebaseVisionImageMetadata.ROTATION_270 else -> throw Exception("Rotation must be 0, 90, 180, or 270.") } override fun analyze(imageProxy: ImageProxy?, degrees: Int) { val mediaImage = imageProxy?.image val imageRotation = degreesToFirebaseRotation(degrees) if (mediaImage != null) { val image = FirebaseVisionImage.fromMediaImage(mediaImage, imageRotation) // Pass image to an ML Kit Vision API // ... } } }
If you don't use a camera library that gives you the image's rotation, you can calculate it from the device's rotation and the orientation of camera sensor in the device:
Java
private static final SparseIntArray ORIENTATIONS = new SparseIntArray(); static { ORIENTATIONS.append(Surface.ROTATION_0, 90); ORIENTATIONS.append(Surface.ROTATION_90, 0); ORIENTATIONS.append(Surface.ROTATION_180, 270); ORIENTATIONS.append(Surface.ROTATION_270, 180); } /** * Get the angle by which an image must be rotated given the device's current * orientation. */ @RequiresApi(api = Build.VERSION_CODES.LOLLIPOP) private int getRotationCompensation(String cameraId, Activity activity, Context context) throws CameraAccessException { // Get the device's current rotation relative to its "native" orientation. // Then, from the ORIENTATIONS table, look up the angle the image must be // rotated to compensate for the device's rotation. int deviceRotation = activity.getWindowManager().getDefaultDisplay().getRotation(); int rotationCompensation = ORIENTATIONS.get(deviceRotation); // On most devices, the sensor orientation is 90 degrees, but for some // devices it is 270 degrees. For devices with a sensor orientation of // 270, rotate the image an additional 180 ((270 + 270) % 360) degrees. CameraManager cameraManager = (CameraManager) context.getSystemService(CAMERA_SERVICE); int sensorOrientation = cameraManager .getCameraCharacteristics(cameraId) .get(CameraCharacteristics.SENSOR_ORIENTATION); rotationCompensation = (rotationCompensation + sensorOrientation + 270) % 360; // Return the corresponding FirebaseVisionImageMetadata rotation value. int result; switch (rotationCompensation) { case 0: result = FirebaseVisionImageMetadata.ROTATION_0; break; case 90: result = FirebaseVisionImageMetadata.ROTATION_90; break; case 180: result = FirebaseVisionImageMetadata.ROTATION_180; break; case 270: result = FirebaseVisionImageMetadata.ROTATION_270; break; default: result = FirebaseVisionImageMetadata.ROTATION_0; Log.e(TAG, "Bad rotation value: " + rotationCompensation); } return result; }
Kotlin+KTX
private val ORIENTATIONS = SparseIntArray() init { ORIENTATIONS.append(Surface.ROTATION_0, 90) ORIENTATIONS.append(Surface.ROTATION_90, 0) ORIENTATIONS.append(Surface.ROTATION_180, 270) ORIENTATIONS.append(Surface.ROTATION_270, 180) } /** * Get the angle by which an image must be rotated given the device's current * orientation. */ @RequiresApi(api = Build.VERSION_CODES.LOLLIPOP) @Throws(CameraAccessException::class) private fun getRotationCompensation(cameraId: String, activity: Activity, context: Context): Int { // Get the device's current rotation relative to its "native" orientation. // Then, from the ORIENTATIONS table, look up the angle the image must be // rotated to compensate for the device's rotation. val deviceRotation = activity.windowManager.defaultDisplay.rotation var rotationCompensation = ORIENTATIONS.get(deviceRotation) // On most devices, the sensor orientation is 90 degrees, but for some // devices it is 270 degrees. For devices with a sensor orientation of // 270, rotate the image an additional 180 ((270 + 270) % 360) degrees. val cameraManager = context.getSystemService(CAMERA_SERVICE) as CameraManager val sensorOrientation = cameraManager .getCameraCharacteristics(cameraId) .get(CameraCharacteristics.SENSOR_ORIENTATION)!! rotationCompensation = (rotationCompensation + sensorOrientation + 270) % 360 // Return the corresponding FirebaseVisionImageMetadata rotation value. val result: Int when (rotationCompensation) { 0 -> result = FirebaseVisionImageMetadata.ROTATION_0 90 -> result = FirebaseVisionImageMetadata.ROTATION_90 180 -> result = FirebaseVisionImageMetadata.ROTATION_180 270 -> result = FirebaseVisionImageMetadata.ROTATION_270 else -> { result = FirebaseVisionImageMetadata.ROTATION_0 Log.e(TAG, "Bad rotation value: $rotationCompensation") } } return result }
Then, pass the
media.Image
object and the rotation value toFirebaseVisionImage.fromMediaImage()
:Java
FirebaseVisionImage image = FirebaseVisionImage.fromMediaImage(mediaImage, rotation);
Kotlin+KTX
val image = FirebaseVisionImage.fromMediaImage(mediaImage, rotation)
- To create a
FirebaseVisionImage
object from a file URI, pass the app context and file URI toFirebaseVisionImage.fromFilePath()
. This is useful when you use anACTION_GET_CONTENT
intent to prompt the user to select an image from their gallery app.Java
FirebaseVisionImage image; try { image = FirebaseVisionImage.fromFilePath(context, uri); } catch (IOException e) { e.printStackTrace(); }
Kotlin+KTX
val image: FirebaseVisionImage try { image = FirebaseVisionImage.fromFilePath(context, uri) } catch (e: IOException) { e.printStackTrace() }
- To create a
FirebaseVisionImage
object from aByteBuffer
or a byte array, first calculate the image rotation as described above formedia.Image
input.Then, create a
FirebaseVisionImageMetadata
object that contains the image's height, width, color encoding format, and rotation:Java
FirebaseVisionImageMetadata metadata = new FirebaseVisionImageMetadata.Builder() .setWidth(480) // 480x360 is typically sufficient for .setHeight(360) // image recognition .setFormat(FirebaseVisionImageMetadata.IMAGE_FORMAT_NV21) .setRotation(rotation) .build();
Kotlin+KTX
val metadata = FirebaseVisionImageMetadata.Builder() .setWidth(480) // 480x360 is typically sufficient for .setHeight(360) // image recognition .setFormat(FirebaseVisionImageMetadata.IMAGE_FORMAT_NV21) .setRotation(rotation) .build()
Use the buffer or array, and the metadata object, to create a
FirebaseVisionImage
object:Java
FirebaseVisionImage image = FirebaseVisionImage.fromByteBuffer(buffer, metadata); // Or: FirebaseVisionImage image = FirebaseVisionImage.fromByteArray(byteArray, metadata);
Kotlin+KTX
val image = FirebaseVisionImage.fromByteBuffer(buffer, metadata) // Or: val image = FirebaseVisionImage.fromByteArray(byteArray, metadata)
- To create a
FirebaseVisionImage
object from aBitmap
object:Java
FirebaseVisionImage image = FirebaseVisionImage.fromBitmap(bitmap);
Kotlin+KTX
val image = FirebaseVisionImage.fromBitmap(bitmap)
Bitmap
object must be upright, with no additional rotation required.
-
Get an instance of
FirebaseVisionFaceDetector
:Java
FirebaseVisionFaceDetector detector = FirebaseVision.getInstance() .getVisionFaceDetector(options);
Kotlin+KTX
val detector = FirebaseVision.getInstance() .getVisionFaceDetector(options)
Finally, pass the image to the
detectInImage
method:Java
Task<List<FirebaseVisionFace>> result = detector.detectInImage(image) .addOnSuccessListener( new OnSuccessListener<List<FirebaseVisionFace>>() { @Override public void onSuccess(List<FirebaseVisionFace> faces) { // Task completed successfully // ... } }) .addOnFailureListener( new OnFailureListener() { @Override public void onFailure(@NonNull Exception e) { // Task failed with an exception // ... } });
Kotlin+KTX
val result = detector.detectInImage(image) .addOnSuccessListener { faces -> // Task completed successfully // ... } .addOnFailureListener { e -> // Task failed with an exception // ... }
3. Get information about detected faces
If the face recognition operation succeeds, a list ofFirebaseVisionFace
objects will be passed to the success
listener. Each FirebaseVisionFace
object represents a face that was detected
in the image. For each face, you can get its bounding coordinates in the input
image, as well as any other information you configured the face detector to
find. For example:
Java
for (FirebaseVisionFace face : faces) { Rect bounds = face.getBoundingBox(); float rotY = face.getHeadEulerAngleY(); // Head is rotated to the right rotY degrees float rotZ = face.getHeadEulerAngleZ(); // Head is tilted sideways rotZ degrees // If landmark detection was enabled (mouth, ears, eyes, cheeks, and // nose available): FirebaseVisionFaceLandmark leftEar = face.getLandmark(FirebaseVisionFaceLandmark.LEFT_EAR); if (leftEar != null) { FirebaseVisionPoint leftEarPos = leftEar.getPosition(); } // If contour detection was enabled: List<FirebaseVisionPoint> leftEyeContour = face.getContour(FirebaseVisionFaceContour.LEFT_EYE).getPoints(); List<FirebaseVisionPoint> upperLipBottomContour = face.getContour(FirebaseVisionFaceContour.UPPER_LIP_BOTTOM).getPoints(); // If classification was enabled: if (face.getSmilingProbability() != FirebaseVisionFace.UNCOMPUTED_PROBABILITY) { float smileProb = face.getSmilingProbability(); } if (face.getRightEyeOpenProbability() != FirebaseVisionFace.UNCOMPUTED_PROBABILITY) { float rightEyeOpenProb = face.getRightEyeOpenProbability(); } // If face tracking was enabled: if (face.getTrackingId() != FirebaseVisionFace.INVALID_ID) { int id = face.getTrackingId(); } }
Kotlin+KTX
for (face in faces) { val bounds = face.boundingBox val rotY = face.headEulerAngleY // Head is rotated to the right rotY degrees val rotZ = face.headEulerAngleZ // Head is tilted sideways rotZ degrees // If landmark detection was enabled (mouth, ears, eyes, cheeks, and // nose available): val leftEar = face.getLandmark(FirebaseVisionFaceLandmark.LEFT_EAR) leftEar?.let { val leftEarPos = leftEar.position } // If contour detection was enabled: val leftEyeContour = face.getContour(FirebaseVisionFaceContour.LEFT_EYE).points val upperLipBottomContour = face.getContour(FirebaseVisionFaceContour.UPPER_LIP_BOTTOM).points // If classification was enabled: if (face.smilingProbability != FirebaseVisionFace.UNCOMPUTED_PROBABILITY) { val smileProb = face.smilingProbability } if (face.rightEyeOpenProbability != FirebaseVisionFace.UNCOMPUTED_PROBABILITY) { val rightEyeOpenProb = face.rightEyeOpenProbability } // If face tracking was enabled: if (face.trackingId != FirebaseVisionFace.INVALID_ID) { val id = face.trackingId } }
Example of face contours
When you have face contour detection enabled, you get a list of points for each facial feature that was detected. These points represent the shape of the feature. See the Face Detection Concepts Overview for details about how contours are represented.
The following image illustrates how these points map to a face (click the image to enlarge):
Real-time face detection
If you want to use face detection in a real-time application, follow these guidelines to achieve the best framerates:
Configure the face detector to use either face contour detection or classification and landmark detection, but not both:
Contour detection
Landmark detection
Classification
Landmark detection and classification
Contour detection and landmark detection
Contour detection and classification
Contour detection, landmark detection, and classificationEnable
FAST
mode (enabled by default).Consider capturing images at a lower resolution. However, also keep in mind this API's image dimension requirements.
- Throttle calls to the detector. If a new video frame becomes available while the detector is running, drop the frame.
- If you are using the output of the detector to overlay graphics on the input image, first get the result from ML Kit, then render the image and overlay in a single step. By doing so, you render to the display surface only once for each input frame.
-
If you use the Camera2 API, capture images in
ImageFormat.YUV_420_888
format.If you use the older Camera API, capture images in
ImageFormat.NV21
format.