动态人脸检测(脸数可调)

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人脸检测

这里的人脸检测并非人脸识别,但是却可以识别出是否有人,当有人时候,你可以将帧图进行人脸识别(这里推荐Face++的sdk),当然我写的demo中没有加入人脸识别,有兴趣的朋友可以追加。face++


android自带的人脸检测

这里我们用到了人脸检测类为 FaceDetector.这个类提供了强大的人脸检测功能,可以方便我们进行人脸的侦测,因此我们使用他来进行动态的人脸检测,实现原理,其实也挺简单,主要是通过Carmen的回调PreviewCallback 在其中对帧图进行操作,并通过FaceDetector来检测该帧图中是否有人脸。当然如果你想在surfaceview中绘制人脸的范围,可以将画布与其绑定,画完再解绑。


第一步

我们首先来定义一个surfaceview 盖在我们Carmen使用的surfaceview上 进行对人脸范围的绘制

public class FindFaceView extends SurfaceView implements SurfaceHolder.Callback {    private SurfaceHolder holder;    private int mWidth;    private int mHeight;    private float eyesDistance;    public FindFaceView(Context context, AttributeSet attrs) {        super(context, attrs);        holder = getHolder();        holder.addCallback(this);        holder.setFormat(PixelFormat.TRANSPARENT);        this.setZOrderOnTop(true);    }    @Override    public void surfaceChanged(SurfaceHolder holder, int format, int width,                               int height) {        mWidth = width;        mHeight = height;    }    @Override    public void surfaceCreated(SurfaceHolder holder) {    }    @Override    public void surfaceDestroyed(SurfaceHolder holder) {    }    public void drawRect(FaceDetector.Face[] faces, int numberOfFaceDetected) {        Canvas canvas = holder.lockCanvas();        if (canvas != null) {            Paint clipPaint = new Paint();            clipPaint.setAntiAlias(true);            clipPaint.setStyle(Paint.Style.STROKE);            clipPaint                    .setXfermode(new PorterDuffXfermode(PorterDuff.Mode.CLEAR));            canvas.drawPaint(clipPaint);            canvas.drawColor(getResources().getColor(color.transparent));            Paint paint = new Paint();            paint.setAntiAlias(true);            paint.setColor(Color.GREEN);            paint.setStyle(Style.STROKE);            paint.setStrokeWidth(5.0f);            for (int i = 0; i < numberOfFaceDetected; i++) {                Face face = faces[i];                PointF midPoint = new PointF();                // 获得两眼之间的中间点                face.getMidPoint(midPoint);                // 获得两眼之间的距离                eyesDistance = face.eyesDistance();                // 换算出预览图片和屏幕显示区域的比例参数                float scale_x = mWidth / 500;                float scale_y = mHeight / 600;                Log.e("eyesDistance=", eyesDistance + "");                Log.e("midPoint.x=", midPoint.x + "");                Log.e("midPoint.y=", midPoint.y + "");                // 因为拍摄的相片跟实际显示的图像是镜像关系,所以在图片上获取的两眼中间点跟手机上显示的是相反方向                canvas.drawRect((int) (240 - midPoint.x - eyesDistance)                                * scale_x, (int) (midPoint.y * scale_y),                        (int) (240 - midPoint.x + eyesDistance) * scale_x,                        (int) (midPoint.y + 3 * eyesDistance) * scale_y, paint);            }            holder.unlockCanvasAndPost(canvas);        }    }}

重要的地方
1. holder = getHolder();获取surfaceholder与我们要绘制人脸范围的画布进行绑定Canvas canvas = holder.lockCanvas();这样我们就可以愉快的进行绘制了,当然前提是我们要拿到人脸的坐标位置。
2. 还有重要的一点,就是要让我们用来盖在Carema上的Surfaceview可以同名,并且设置起在视图树的层级为最高。

 holder.setFormat(PixelFormat.TRANSPARENT); this.setZOrderOnTop(true);

第二步

就是我们对人脸进行检测了,当然前提是我们要获得帧图

public class FaceRecognitionDemoActivity extends Activity implements        OnClickListener {    private SurfaceView preview;    private Camera camera;    private Camera.Parameters parameters;    private int orientionOfCamera;// 前置摄像头的安装角度    private int faceNumber;// 识别的人脸数    private FaceDetector.Face[] faces;    private FindFaceView mFindFaceView;    private ImageView iv_photo;    private Button bt_camera;    TextView mTV;    /**     * Called when the activity is first created.     */    @Override    public void onCreate(Bundle savedInstanceState) {        super.onCreate(savedInstanceState);        setContentView(R.layout.main);    }    @Override    protected void onStart() {        super.onStart();        iv_photo = (ImageView) findViewById(R.id.iv_photo);        bt_camera = (Button) findViewById(R.id.bt_camera);        mTV = (TextView) findViewById(R.id.show_count);        bt_camera.setOnClickListener(this);        mFindFaceView = (FindFaceView) findViewById(R.id.my_preview);        preview = (SurfaceView) findViewById(R.id.preview);        // 设置缓冲类型(必不可少)        preview.getHolder().setType(SurfaceHolder.SURFACE_TYPE_PUSH_BUFFERS);        // 设置surface的分辨率        preview.getHolder().setFixedSize(176, 144);        // 设置屏幕常亮(必不可少)        preview.getHolder().setKeepScreenOn(true);        preview.getHolder().addCallback(new SurfaceCallback());    }    private final class MyPictureCallback implements PictureCallback {        @Override        public void onPictureTaken(byte[] data, Camera camera) {            try {                Bitmap bitmap = BitmapFactory.decodeByteArray(data, 0,                        data.length);                Matrix matrix = new Matrix();                matrix.setRotate(-90);                Bitmap bmp = Bitmap.createBitmap(bitmap, 0, 0, bitmap                        .getWidth(), bitmap.getHeight(), matrix, true);                bitmap.recycle();                iv_photo.setImageBitmap(bmp);                camera.startPreview();            } catch (Exception e) {                e.printStackTrace();            }        }    }    private final class SurfaceCallback implements Callback {        @Override        public void surfaceChanged(SurfaceHolder holder, int format, int width,                                   int height) {            if (camera != null) {                parameters = camera.getParameters();                parameters.setPictureFormat(PixelFormat.JPEG);                // 设置预览区域的大小                parameters.setPreviewSize(width, height);                // 设置每秒钟预览帧数                parameters.setPreviewFrameRate(20);                // 设置预览图片的大小                parameters.setPictureSize(width, height);                parameters.setJpegQuality(80);            }        }        @Override        public void surfaceCreated(SurfaceHolder holder) {            int cameraCount = 0;            Camera.CameraInfo cameraInfo = new Camera.CameraInfo();            cameraCount = Camera.getNumberOfCameras();            //设置相机的参数            for (int i = 0; i < cameraCount; i++) {                Camera.getCameraInfo(i, cameraInfo);                if (cameraInfo.facing == Camera.CameraInfo.CAMERA_FACING_FRONT) {                    try {                        camera = Camera.open(i);                        camera.setPreviewDisplay(holder);                        setCameraDisplayOrientation(i, camera);                        //最重要的设置 帧图的回调                        camera.setPreviewCallback(new MyPreviewCallback());                        camera.startPreview();                    } catch (Exception e) {                        e.printStackTrace();                    }                }            }        }        @Override        public void surfaceDestroyed(SurfaceHolder holder) {        //记得释放,避免OOM和占用            if (camera != null) {                camera.setPreviewCallback(null);                camera.stopPreview();                camera.release();                camera = null;            }        }    }    private class MyPreviewCallback implements PreviewCallback {        @Override        public void onPreviewFrame(byte[] data, Camera camera) {        //这里需要注意,回调出来的data不是我们直接意义上的RGB图 而是YUV图,因此我们需要        //将YUV转化为bitmap再进行相应的人脸检测,同时注意必须使用RGB_565,才能进行人脸检测,其余无效            Camera.Size size = camera.getParameters().getPreviewSize();            YuvImage yuvImage = new YuvImage(data, ImageFormat.NV21,                    size.width, size.height, null);            ByteArrayOutputStream baos = new ByteArrayOutputStream();            yuvImage.compressToJpeg(new Rect(0, 0, size.width, size.height),                    80, baos);            byte[] byteArray = baos.toByteArray();            detectionFaces(byteArray);        }    }    /**     * 检测人脸     *     * @param data 预览的图像数据     */    private void detectionFaces(byte[] data) {        BitmapFactory.Options options = new BitmapFactory.Options();        Bitmap bitmap1 = BitmapFactory.decodeByteArray(data, 0, data.length,                options);        int width = bitmap1.getWidth();        int height = bitmap1.getHeight();        Matrix matrix = new Matrix();        Bitmap bitmap2 = null;        FaceDetector detector = null;        //设置各个角度的相机,这样我们的检测效果才是最好        switch (orientionOfCamera) {            case 0:               //初始化人脸检测(下同)                detector = new FaceDetector(width, height, 10);                matrix.postRotate(0.0f, width / 2, height / 2);                // 以指定的宽度和高度创建一张可变的bitmap(图片格式必须是RGB_565,不然检测不到人脸)                bitmap2 = Bitmap.createBitmap(width, height, Bitmap.Config.RGB_565);                break;            case 90:                detector = new FaceDetector(height, width, 1);                matrix.postRotate(-270.0f, height / 2, width / 2);                bitmap2 = Bitmap.createBitmap(height, width, Bitmap.Config.RGB_565);                break;            case 180:                detector = new FaceDetector(width, height, 1);                matrix.postRotate(-180.0f, width / 2, height / 2);                bitmap2 = Bitmap.createBitmap(width, height, Bitmap.Config.RGB_565);                break;            case 270:                detector = new FaceDetector(height, width, 1);                matrix.postRotate(-90.0f, height / 2, width / 2);                bitmap2 = Bitmap.createBitmap(height, width, Bitmap.Config.RGB_565);                break;        }       //设置支持的面数(最大支持检测多少人的脸 ,可以根据需要调整,不过需要与findFaces中的参数数值相同,否则会抛出异常)        faces = new FaceDetector.Face[10];        Paint paint = new Paint();        paint.setDither(true);        Canvas canvas = new Canvas();        canvas.setBitmap(bitmap2);        canvas.setMatrix(matrix);        // 将bitmap1画到bitmap2上(这里的偏移参数根据实际情况可能要修改)        canvas.drawBitmap(bitmap1, 0, 0, paint);        //这里通过向findFaces中传递帧图转化后的bitmap和最大检测的人脸数face,返回检测后的人脸数        faceNumber = detector.findFaces(bitmap2, faces);        mTV.setText("facnumber----" + faceNumber);        mTV.setTextColor(Color.RED);        //这里就是我们的人脸识别,绘制识别后的人脸区域的类        if (faceNumber != 0) {            mFindFaceView.setVisibility(View.VISIBLE);            mFindFaceView.drawRect(faces, faceNumber);        } else {            mFindFaceView.setVisibility(View.GONE);        }        bitmap2.recycle();        bitmap1.recycle();    }    /**     * 设置相机的显示方向(这里必须这么设置,不然检测不到人脸)     *     * @param cameraId 相机ID(0是后置摄像头,1是前置摄像头)     * @param camera   相机对象     */    private void setCameraDisplayOrientation(int cameraId, Camera camera) {        Camera.CameraInfo info = new Camera.CameraInfo();        Camera.getCameraInfo(cameraId, info);        int rotation = getWindowManager().getDefaultDisplay().getRotation();        int degree = 0;        switch (rotation) {            case Surface.ROTATION_0:                degree = 0;                break;            case Surface.ROTATION_90:                degree = 90;                break;            case Surface.ROTATION_180:                degree = 180;                break;            case Surface.ROTATION_270:                degree = 270;                break;        }        orientionOfCamera = info.orientation;        int result;        if (info.facing == Camera.CameraInfo.CAMERA_FACING_FRONT) {            result = (info.orientation + degree) % 360;            result = (360 - result) % 360;        } else {            result = (info.orientation - degree + 360) % 360;        }        camera.setDisplayOrientation(result);    }    @Override    public void onClick(View v) {        switch (v.getId()) {            case R.id.bt_camera:                if (camera != null) {                    try {                        camera.takePicture(null, null, new MyPictureCallback());                    } catch (Exception e) {                        e.printStackTrace();                    }                }                break;        }    }}

到这里我们的人脸识别就已经大功告成。demo地址

如果您想了解更多关于人脸识别方面的只是,先去关注并了解openCV。


人脸识别开源库总结不错的博文:http://blog.csdn.net/gxp/article/details/6759052

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