I am trying to find an app that can detect faces in my pictures, make the detected face centered and crop 720 x 720 pixels of the picture. It is rather very time consuming & meticulous to edit around hundreds of pictures I plan to do that.

I have tried doing this using python opencv mentioned here but I think it is outdated. I've also tried using this but it's also giving me an error in my system. Also tried using face detection plugin for GIMP but it is designed for GIMP 2.6 but I am using 2.8 on a regular basis. I also tried doing what was posted at ultrahigh blog but it is very outdated (since I'm using a Precise derivative of Ubuntu, while the blogpost was made way back when it was still Hardy). Also tried using Phatch but there is no face detection so some cropped pictures have their face cut right off.

I have tried all of the above and wasted half a day trying to make any of the above do what I needed to do.

Do you guys have suggestion to achieve a goal to around 800 pictures I have.

My operating system is Linux Mint 13 MATE.

Note: I was going to add 2 more links but stackexchange prevented me to post two more links as I don't have much reputation yet.

migrated from photo.stackexchange.com Nov 3 '12 at 17:39

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  • 1
    I was not sure if this question is on topic or not here, so I started a meta discussion on just that, see more here: meta.photo.stackexchange.com/questions/2606/… – dpollitt Nov 2 '12 at 2:43
  • I actually am just trying to find any solution to autodetect faces then crop the image. It just so happens that I'm using a not so user friendly operating system that requires a bit of programming to achieve things, which is Linux. The reply of @jrista is something in a nutshell of what I want to explain here. Either way, thank you for the response, dpollitt – AisIceEyes Nov 2 '12 at 13:42
  • 1
    I would pursue the opencv option. opencv is very powerful and not outdated. If you do not know python, it might be harder. If I have time this weekend I'll try to through some code together. BTW, what version of opencv and python do you have? – Onlyjus Nov 2 '12 at 18:14
  • I probably just needed to read fully opencv and do some trial and error. The reason why I said it is outdated is because the blog posts that I found from google was old and it is not working anymore. I think I installed opencv 2.4.1 via a tutorial I found by googling. My python version is 2.7.3. I am familiar with Python but I can't say I am that really an expert. (as I badly need review on the language as my full time job uses C and C++ - so other languages I tend to slowly forget) – AisIceEyes Nov 2 '12 at 23:29
up vote 81 down vote accepted

I have managed to grab bits of code from various sources and stitch this together. It is still a work in progress. Also, do you have any example images?

'''
Sources:
http://pythonpath.wordpress.com/2012/05/08/pil-to-opencv-image/
http://www.lucaamore.com/?p=638
'''

#Python 2.7.2
#Opencv 2.4.2
#PIL 1.1.7

import cv
import Image

def DetectFace(image, faceCascade):
    #modified from: http://www.lucaamore.com/?p=638

    min_size = (20,20)
    image_scale = 1
    haar_scale = 1.1
    min_neighbors = 3
    haar_flags = 0

    # Allocate the temporary images
    smallImage = cv.CreateImage(
            (
                cv.Round(image.width / image_scale),
                cv.Round(image.height / image_scale)
            ), 8 ,1)

    # Scale input image for faster processing
    cv.Resize(image, smallImage, cv.CV_INTER_LINEAR)

    # Equalize the histogram
    cv.EqualizeHist(smallImage, smallImage)

    # Detect the faces
    faces = cv.HaarDetectObjects(
            smallImage, faceCascade, cv.CreateMemStorage(0),
            haar_scale, min_neighbors, haar_flags, min_size
        )

    # If faces are found
    if faces:
        for ((x, y, w, h), n) in faces:
            # the input to cv.HaarDetectObjects was resized, so scale the
            # bounding box of each face and convert it to two CvPoints
            pt1 = (int(x * image_scale), int(y * image_scale))
            pt2 = (int((x + w) * image_scale), int((y + h) * image_scale))
            cv.Rectangle(image, pt1, pt2, cv.RGB(255, 0, 0), 5, 8, 0)

    return image

def pil2cvGrey(pil_im):
    #from: http://pythonpath.wordpress.com/2012/05/08/pil-to-opencv-image/
    pil_im = pil_im.convert('L')
    cv_im = cv.CreateImageHeader(pil_im.size, cv.IPL_DEPTH_8U, 1)
    cv.SetData(cv_im, pil_im.tostring(), pil_im.size[0]  )
    return cv_im

def cv2pil(cv_im):
    return Image.fromstring("L", cv.GetSize(cv_im), cv_im.tostring())


pil_im=Image.open('testPics/faces.jpg')
cv_im=pil2cv(pil_im)
#the haarcascade files tells opencv what to look for.
faceCascade = cv.Load('C:/Python27/Lib/site-packages/opencv/haarcascade_frontalface_default.xml')
face=DetectFace(cv_im,faceCascade)
img=cv2pil(face)
img.show()

Testing on the first page of Google (Googled "faces"): enter image description here


Update

This code should do exactly what you want. Let me know if you have questions. I tried to include lots of comments in the code:

'''
Sources:
http://opencv.willowgarage.com/documentation/python/cookbook.html
http://www.lucaamore.com/?p=638
'''

#Python 2.7.2
#Opencv 2.4.2
#PIL 1.1.7

import cv #Opencv
import Image #Image from PIL
import glob
import os

def DetectFace(image, faceCascade, returnImage=False):
    # This function takes a grey scale cv image and finds
    # the patterns defined in the haarcascade function
    # modified from: http://www.lucaamore.com/?p=638

    #variables    
    min_size = (20,20)
    haar_scale = 1.1
    min_neighbors = 3
    haar_flags = 0

    # Equalize the histogram
    cv.EqualizeHist(image, image)

    # Detect the faces
    faces = cv.HaarDetectObjects(
            image, faceCascade, cv.CreateMemStorage(0),
            haar_scale, min_neighbors, haar_flags, min_size
        )

    # If faces are found
    if faces and returnImage:
        for ((x, y, w, h), n) in faces:
            # Convert bounding box to two CvPoints
            pt1 = (int(x), int(y))
            pt2 = (int(x + w), int(y + h))
            cv.Rectangle(image, pt1, pt2, cv.RGB(255, 0, 0), 5, 8, 0)

    if returnImage:
        return image
    else:
        return faces

def pil2cvGrey(pil_im):
    # Convert a PIL image to a greyscale cv image
    # from: http://pythonpath.wordpress.com/2012/05/08/pil-to-opencv-image/
    pil_im = pil_im.convert('L')
    cv_im = cv.CreateImageHeader(pil_im.size, cv.IPL_DEPTH_8U, 1)
    cv.SetData(cv_im, pil_im.tostring(), pil_im.size[0]  )
    return cv_im

def cv2pil(cv_im):
    # Convert the cv image to a PIL image
    return Image.fromstring("L", cv.GetSize(cv_im), cv_im.tostring())

def imgCrop(image, cropBox, boxScale=1):
    # Crop a PIL image with the provided box [x(left), y(upper), w(width), h(height)]

    # Calculate scale factors
    xDelta=max(cropBox[2]*(boxScale-1),0)
    yDelta=max(cropBox[3]*(boxScale-1),0)

    # Convert cv box to PIL box [left, upper, right, lower]
    PIL_box=[cropBox[0]-xDelta, cropBox[1]-yDelta, cropBox[0]+cropBox[2]+xDelta, cropBox[1]+cropBox[3]+yDelta]

    return image.crop(PIL_box)

def faceCrop(imagePattern,boxScale=1):
    # Select one of the haarcascade files:
    #   haarcascade_frontalface_alt.xml  <-- Best one?
    #   haarcascade_frontalface_alt2.xml
    #   haarcascade_frontalface_alt_tree.xml
    #   haarcascade_frontalface_default.xml
    #   haarcascade_profileface.xml
    faceCascade = cv.Load('haarcascade_frontalface_alt.xml')

    imgList=glob.glob(imagePattern)
    if len(imgList)<=0:
        print 'No Images Found'
        return

    for img in imgList:
        pil_im=Image.open(img)
        cv_im=pil2cvGrey(pil_im)
        faces=DetectFace(cv_im,faceCascade)
        if faces:
            n=1
            for face in faces:
                croppedImage=imgCrop(pil_im, face[0],boxScale=boxScale)
                fname,ext=os.path.splitext(img)
                croppedImage.save(fname+'_crop'+str(n)+ext)
                n+=1
        else:
            print 'No faces found:', img

def test(imageFilePath):
    pil_im=Image.open(imageFilePath)
    cv_im=pil2cvGrey(pil_im)
    # Select one of the haarcascade files:
    #   haarcascade_frontalface_alt.xml  <-- Best one?
    #   haarcascade_frontalface_alt2.xml
    #   haarcascade_frontalface_alt_tree.xml
    #   haarcascade_frontalface_default.xml
    #   haarcascade_profileface.xml
    faceCascade = cv.Load('haarcascade_frontalface_alt.xml')
    face_im=DetectFace(cv_im,faceCascade, returnImage=True)
    img=cv2pil(face_im)
    img.show()
    img.save('test.png')


# Test the algorithm on an image
#test('testPics/faces.jpg')

# Crop all jpegs in a folder. Note: the code uses glob which follows unix shell rules.
# Use the boxScale to scale the cropping area. 1=opencv box, 2=2x the width and height
faceCrop('testPics/*.jpg',boxScale=1)

Using the image above, this code extracts 52 out of the 59 faces, producing cropped files such as: enter image description hereenter image description hereenter image description hereenter image description hereenter image description hereenter image description hereenter image description hereenter image description here

  • Wow. What a beautiful code! Thanks for spending time on this. Just wow! Will test out when I have time during breaks in the office (as -ber months tend to be ack hell, meeting deadlines of clients for the holidays) – AisIceEyes Nov 7 '12 at 16:34
  • Thanks, the code is a start. I am working on getting the code to do exactly what you want. – Onlyjus Nov 8 '12 at 2:01
  • 3
    I just update my answer. That should do the trick. Let me know if you have any questions. – Onlyjus Nov 10 '12 at 4:45
  • Sorry if I haven't got back to you as I honestly haven't fully tested the beautiful code you made. I'm sadly still busy at the moment but I'm hopeful I can do a test of this before February is over. Thanks again for this Onlyjus! – AisIceEyes Feb 8 '13 at 6:58
  • 1
    Cool man! Stackoverflow needs generous people like you... It's helpful to me after two years.. – Aditya Apr 18 '14 at 16:59

facedetect

https://github.com/wavexx/facedetect is a nice Python OpenCV CLI wrapper, and I have just added that example to their README using ImageMagick:

for file in path/to/pictures/*.jpg; do
  name=$(basename "$file")
  i=0
  facedetect "$file" | while read x y w h; do
    convert "$file" -crop ${w}x${h}+${x}+${y} "path/to/faces/${name%.*}_${i}.${name##*.}"
    i=$(($i+1))
  done
done

Tested on Ubuntu 16.04 with (unlabeled) Facebook profile pictures, see:

  • Very nice, thanks! – Diego Faria Jan 4 '17 at 17:14

Another available option is dlib, which is based on machine learning approaches.

import dlib
import Image
from skimage import io
import matplotlib.pyplot as plt


def detect_faces(image):

    # Create a face detector
    face_detector = dlib.get_frontal_face_detector()

    # Run detector and get bounding boxes of the faces on image.
    detected_faces = face_detector(image, 1)
    face_frames = [(x.left(), x.top(),
                    x.right(), x.bottom()) for x in detected_faces]

    return face_frames

# Load image
img_path = 'test.jpg'
image = io.imread(img_path)

# Detect faces
detected_faces = detect_faces(image)

# Crop faces and plot
for n, face_rect in enumerate(detected_faces):
    face = Image.fromarray(image).crop(face_rect)
    plt.subplot(1, len(detected_faces), n+1)
    plt.axis('off')
    plt.imshow(face)

enter image description here enter image description here

  • This works great. This is the first time I tried dlib. The only issue is that it only shows one face out of the two faces in the image I am using. You have any idea why that's happening? I copied your exact code. ...EDIT this only happens in some images but in some other images it shows all the faces. – Joe T. Boka Jun 10 at 12:13

This sounds like it might be a better question for one of the more (computer) technology focused exchanges.

That said, have you looked into something like this jquery face detection script? I don't know how savvy you are, but it is one option that is OS independent.

This solution also looks promising, but would require Windows.

  • Thankd for the response @ckoerner. I will do some digging on your suggestion & will try to use the jquery link you gave (though I honestly need review on it). I don't think I can use Windows as I don't have a Windows OS computer & don't have an installer (and no plans of pirating one). Thanks again. – AisIceEyes Nov 7 '12 at 16:31

the above codes work but this is recent implementation using OpenCV I was unable to run the above by the latest and found something that works (from various places)

import cv2
import os

def facecrop(image):
    facedata = "haarcascade_frontalface_alt.xml"
    cascade = cv2.CascadeClassifier(facedata)

    img = cv2.imread(image)

    minisize = (img.shape[1],img.shape[0])
    miniframe = cv2.resize(img, minisize)

    faces = cascade.detectMultiScale(miniframe)

   for f in faces:
        x, y, w, h = [ v for v in f ]
        cv2.rectangle(img, (x,y), (x+w,y+h), (255,255,255))

        sub_face = img[y:y+h, x:x+w]
        fname, ext = os.path.splitext(image)
        cv2.imwrite(fname+"_cropped_"+ext, sub_face)



    return



facecrop("1.jpg")

I used this shell command:

for f in *.jpg;do PYTHONPATH=/usr/local/lib/python2.7/site-packages python -c 'import cv2;import sys;rects=cv2.CascadeClassifier("/usr/local/opt/opencv/share/OpenCV/haarcascades/haarcascade_frontalface_default.xml").detectMultiScale(cv2.cvtColor(cv2.imread(sys.argv[1]),cv2.COLOR_BGR2GRAY),1.3,5);print("\n".join([" ".join([str(item) for item in row])for row in rects]))' $f|while read x y w h;do convert $f -gravity NorthWest -crop ${w}x$h+$x+$y ${f%jpg}-$x-$y.png;done;done

You can install opencv and imagemagick on OS X with brew install opencv imagemagick.

Autocrop worked out for me pretty well. It is as easy as autocrop -i pics -o crop -w 400 -H 400. You can get the usage in their readme file.

usage: [-h] [-o OUTPUT] [-i INPUT] [-w WIDTH] [-H HEIGHT] [-v]

Automatically crops faces from batches of pictures

optional arguments:
  -h, --help            Show this help message and exit
  -o, --output, -p, --path
            Folder where cropped images will be placed.
            Default: current working directory
  -i, --input
            Folder where images to crop are located.
            Default: current working directory
  -w, --width
            Width of cropped files in px. Default=500
  -H, --height
            Height of cropped files in px. Default=500
  -v, --version         Show program's version number and exit

I think the best option is Google Vision API. It's updated, it uses machine learning and it improves with the time.

You can check the documentation for examples: https://cloud.google.com/vision/docs/other-features

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