python dlib學習(五):比對人臉


前言
在前面的博客中介紹了,如何使用dlib標定人臉(python dlib學習(一):人臉檢測),提取68個特征點(python dlib學習(二):人臉特征點標定)。這次要在這兩個工作的基礎之上,將人臉的信息提取成一個128維的向量空間。在這個向量空間上,同一個人臉的更接近,不同人臉的距離更遠。度量采用歐式距離,歐氏距離計算不算復雜。
二維情況下:
distance=(x1−x2)2+(y1−y2)2−−−−−−−−−−−−−−−−−−√
distance=(x1−x2)2+(y1−y2)2

三維情況下:
distance=(x1−x2)2+(y1−y2)2+(z1−z2)2−−−−−−−−−−−−−−−−−−−−−−−−−−−−√
distance=(x1−x2)2+(y1−y2)2+(z1−z2)2

將其擴展到128維的情況下即可。
通常使用的判別閾值是0.6,即如果兩個人臉的向量空間的歐式距離超過了0.6,即認定不是同一個人;如果歐氏距離小於0.6,則認為是同一個人。這個距離也可以由自己定,只要效果能更好。
實驗中使用了兩個模型:

shape_predictor_68_face_landmarks.dat:
http://dlib.net/files/shape_predictor_68_face_landmarks.dat.bz2

dlib_face_recognition_resnet_model_v1.dat:
http://dlib.net/files/dlib_face_recognition_resnet_model_v1.dat.bz2

文件夾目錄:

兩個模型放在model文件夾中,測試圖片放在faces中,圖片自己隨便下幾張就行。

完整工程下載鏈接:
http://pan.baidu.com/s/1boCDZ7T

程序1
不說廢話了,直接上代碼。

# -*- coding: utf-8 -*-
import sys
import dlib
import cv2
import os
import glob

current_path = os.getcwd() # 獲取當前路徑
# 模型路徑
predictor_path = current_path + "\\model\\shape_predictor_68_face_landmarks.dat"
face_rec_model_path = current_path + "\\model\\dlib_face_recognition_resnet_model_v1.dat"
#測試圖片路徑
faces_folder_path = current_path + "\\faces\\"

# 讀入模型
detector = dlib.get_frontal_face_detector()
shape_predictor = dlib.shape_predictor(predictor_path)
face_rec_model = dlib.face_recognition_model_v1(face_rec_model_path)

for img_path in glob.glob(os.path.join(faces_folder_path, "*.jpg")):
print("Processing file: {}".format(img_path))
# opencv 讀取圖片,並顯示
img = cv2.imread(img_path, cv2.IMREAD_COLOR)
# opencv的bgr格式圖片轉換成rgb格式
b, g, r = cv2.split(img)
img2 = cv2.merge([r, g, b])

dets = detector(img, 1) # 人臉標定
print("Number of faces detected: {}".format(len(dets)))

for index, face in enumerate(dets):
print('face {}; left {}; top {}; right {}; bottom {}'.format(index, face.left(), face.top(), face.right(), face.bottom()))

shape = shape_predictor(img2, face) # 提取68個特征點
for i, pt in enumerate(shape.parts()):
#print('Part {}: {}'.format(i, pt))
pt_pos = (pt.x, pt.y)
cv2.circle(img, pt_pos, 2, (255, 0, 0), 1)
#print(type(pt))
#print("Part 0: {}, Part 1: {} ...".format(shape.part(0), shape.part(1)))
cv2.namedWindow(img_path+str(index), cv2.WINDOW_AUTOSIZE)
cv2.imshow(img_path+str(index), img)

face_descriptor = face_rec_model.compute_face_descriptor(img2, shape) # 計算人臉的128維的向量
print(face_descriptor)

k = cv2.waitKey(0)
cv2.destroyAllWindows()
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程序1結果

部分打印結果:

F:\Python\my_dlib_codes\face_recognition>python my_face_recogniton.py
Processing file: F:\Python\my_dlib_codes\face_recognition\faces\jobs.jpg
Number of faces detected: 1
face 0; left 184; top 64; right 339; bottom 219
-0.179784
0.15487
0.10509
-0.0973604
-0.19153
0.000418252
-0.0357536
-0.0206766
0.129741
-0.0628359
....
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后面的那一堆數字就是人臉在128維向量空間上的值。

程序2
前面只是測試了一下,把要用的值給求到了。這里我封裝了一下,把比對功能實現了。沒加多少東西,所以不做贅述了。

# -*- coding: utf-8 -*-
import sys
import dlib
import cv2
import os
import glob
import numpy as np

def comparePersonData(data1, data2):
diff = 0
# for v1, v2 in data1, data2:
# diff += (v1 - v2)**2
for i in xrange(len(data1)):
diff += (data1[i] - data2[i])**2
diff = np.sqrt(diff)
print diff
if(diff < 0.6):
print "It's the same person"
else:
print "It's not the same person"

def savePersonData(face_rec_class, face_descriptor):
if face_rec_class.name == None or face_descriptor == None:
return
filePath = face_rec_class.dataPath + face_rec_class.name + '.npy'
vectors = np.array([])
for i, num in enumerate(face_descriptor):
vectors = np.append(vectors, num)
# print(num)
print('Saving files to :'+filePath)
np.save(filePath, vectors)
return vectors

def loadPersonData(face_rec_class, personName):
if personName == None:
return
filePath = face_rec_class.dataPath + personName + '.npy'
vectors = np.load(filePath)
print(vectors)
return vectors

class face_recognition(object):
def __init__(self):
self.current_path = os.getcwd() # 獲取當前路徑
self.predictor_path = self.current_path + "\\model\\shape_predictor_68_face_landmarks.dat"
self.face_rec_model_path = self.current_path + "\\model\\dlib_face_recognition_resnet_model_v1.dat"
self.faces_folder_path = self.current_path + "\\faces\\"
self.dataPath = self.current_path + "\\data\\"
self.detector = dlib.get_frontal_face_detector()
self.shape_predictor = dlib.shape_predictor(self.predictor_path)
self.face_rec_model = dlib.face_recognition_model_v1(self.face_rec_model_path)

self.name = None
self.img_bgr = None
self.img_rgb = None
self.detector = dlib.get_frontal_face_detector()
self.shape_predictor = dlib.shape_predictor(self.predictor_path)
self.face_rec_model = dlib.face_recognition_model_v1(self.face_rec_model_path)

def inputPerson(self, name='people', img_path=None):
if img_path == None:
print('No file!\n')
return

# img_name += self.faces_folder_path + img_name
self.name = name
self.img_bgr = cv2.imread(self.current_path+img_path)
# opencv的bgr格式圖片轉換成rgb格式
b, g, r = cv2.split(self.img_bgr)
self.img_rgb = cv2.merge([r, g, b])

def create128DVectorSpace(self):
dets = self.detector(self.img_rgb, 1)
print("Number of faces detected: {}".format(len(dets)))
for index, face in enumerate(dets):
print('face {}; left {}; top {}; right {}; bottom {}'.format(index, face.left(), face.top(), face.right(), face.bottom()))

shape = self.shape_predictor(self.img_rgb, face)
face_descriptor = self.face_rec_model.compute_face_descriptor(self.img_rgb, shape)
# print(face_descriptor)
# for i, num in enumerate(face_descriptor):
# print(num)
# print(type(num))

return face_descriptor

 


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程序2結果
測試代碼1:

import face_rec as fc
face_rec = fc.face_recognition() # 創建對象
face_rec.inputPerson(name='jobs', img_path='\\faces\\jobs.jpg') # name中寫第一個人名字,img_name為圖片名字,注意要放在faces文件夾中
vector = face_rec.create128DVectorSpace() # 提取128維向量,是dlib.vector類的對象
person_data1 = fc.savePersonData(face_rec, vector ) # 將提取出的數據保存到data文件夾,為便於操作返回numpy數組,內容還是一樣的

# 導入第二張圖片,並提取特征向量
face_rec.inputPerson(name='jobs2', img_path='\\faces\\jobs2.jpg')
vector = face_rec.create128DVectorSpace() # 提取128維向量,是dlib.vector類的對象
person_data2 = fc.savePersonData(face_rec, vector )

# 計算歐式距離,判斷是否是同一個人
fc.comparePersonData(person_data1, person_data2)
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如果data文件夾中已經有了模型文件,可以直接導入:

import face_rec as fc
face_rec = fc.face_recognition() # 創建對象
person_data1 = fc.loadPersonData(face_rec , 'jobs') # 創建一個類保存相關信息,后面還要跟上人名,程序會在data文件中查找對應npy文件,比如這里就是'jobs.npy'
person_data2 = fc.loadPersonData(face_rec , 'jobs2') # 導入第二張圖片
fc.comparePersonData(person_data1, person_data2) # 計算歐式距離,判斷是否是同一個人
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程序2結果
Python 2.7.10 |Anaconda 2.3.0 (64-bit)| (default, May 28 2015, 16:44:52) [MSC v.1500 64 bit (AMD64)] on win32
Type "help", "copyright", "credits" or "license" for more information.
Anaconda is brought to you by Continuum Analytics.
Please check out: http://continuum.io/thanks and https://binstar.org
>>> import face_rec as fc
>>> face_rec = fc.face_recognition()
>>> face_rec.inputPerson(name='jobs', img_path='\\faces\\jobs.jpg')
>>> vector = face_rec.create128DVectorSpace()
Number of faces detected: 1
face 0; left 184; top 64; right 339; bottom 219
>>> person_data1 = fc.savePersonData(face_rec, vector )
Saving files to :F:\Python\my_dlib_codes\face_recognition\data\jobs.npy
>>> face_rec.inputPerson(name='jobs2', img_path='\\faces\\jobs2.jpg')
>>> vector = face_rec.create128DVectorSpace()
Number of faces detected: 1
face 0; left 124; top 39; right 253; bottom 168
>>> person_data2 = fc.savePersonData(face_rec, vector )
Saving files to :F:\Python\my_dlib_codes\face_recognition\data\jobs2.npy
>>> fc.comparePersonData(person_data1, person_data2)
0.490491048429
It's the same person
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官方例程
#!/usr/bin/python
# The contents of this file are in the public domain. See LICENSE_FOR_EXAMPLE_PROGRAMS.txt
#
# This example shows how to use dlib's face recognition tool. This tool maps
# an image of a human face to a 128 dimensional vector space where images of
# the same person are near to each other and images from different people are
# far apart. Therefore, you can perform face recognition by mapping faces to
# the 128D space and then checking if their Euclidean distance is small
# enough.
#
# When using a distance threshold of 0.6, the dlib model obtains an accuracy
# of 99.38% on the standard LFW face recognition benchmark, which is
# comparable to other state-of-the-art methods for face recognition as of
# February 2017. This accuracy means that, when presented with a pair of face
# images, the tool will correctly identify if the pair belongs to the same
# person or is from different people 99.38% of the time.
#
# Finally, for an in-depth discussion of how dlib's tool works you should
# refer to the C++ example program dnn_face_recognition_ex.cpp and the
# attendant documentation referenced therein.
#
#
#
#
# COMPILING/INSTALLING THE DLIB PYTHON INTERFACE
# You can install dlib using the command:
# pip install dlib
#
# Alternatively, if you want to compile dlib yourself then go into the dlib
# root folder and run:
# python setup.py install
# or
# python setup.py install --yes USE_AVX_INSTRUCTIONS
# if you have a CPU that supports AVX instructions, since this makes some
# things run faster. This code will also use CUDA if you have CUDA and cuDNN
# installed.
#
# Compiling dlib should work on any operating system so long as you have
# CMake and boost-python installed. On Ubuntu, this can be done easily by
# running the command:
# sudo apt-get install libboost-python-dev cmake
#
# Also note that this example requires scikit-image which can be installed
# via the command:
# pip install scikit-image
# Or downloaded from http://scikit-image.org/download.html.

import sys
import os
import dlib
import glob
from skimage import io

if len(sys.argv) != 4:
print(
"Call this program like this:\n"
" ./face_recognition.py shape_predictor_68_face_landmarks.dat dlib_face_recognition_resnet_model_v1.dat ../examples/faces\n"
"You can download a trained facial shape predictor and recognition model from:\n"
" http://dlib.net/files/shape_predictor_68_face_landmarks.dat.bz2\n"
" http://dlib.net/files/dlib_face_recognition_resnet_model_v1.dat.bz2")
exit()

predictor_path = sys.argv[1]
face_rec_model_path = sys.argv[2]
faces_folder_path = sys.argv[3]

# Load all the models we need: a detector to find the faces, a shape predictor
# to find face landmarks so we can precisely localize the face, and finally the
# face recognition model.
detector = dlib.get_frontal_face_detector()
sp = dlib.shape_predictor(predictor_path)
facerec = dlib.face_recognition_model_v1(face_rec_model_path)

win = dlib.image_window()

# Now process all the images
for f in glob.glob(os.path.join(faces_folder_path, "*.jpg")):
print("Processing file: {}".format(f))
img = io.imread(f)

win.clear_overlay()
win.set_image(img)

# Ask the detector to find the bounding boxes of each face. The 1 in the
# second argument indicates that we should upsample the image 1 time. This
# will make everything bigger and allow us to detect more faces.
dets = detector(img, 1)
print("Number of faces detected: {}".format(len(dets)))

# Now process each face we found.
for k, d in enumerate(dets):
print("Detection {}: Left: {} Top: {} Right: {} Bottom: {}".format(
k, d.left(), d.top(), d.right(), d.bottom()))
# Get the landmarks/parts for the face in box d.
shape = sp(img, d)
# Draw the face landmarks on the screen so we can see what face is currently being processed.
win.clear_overlay()
win.add_overlay(d)
win.add_overlay(shape)

# Compute the 128D vector that describes the face in img identified by
# shape. In general, if two face descriptor vectors have a Euclidean
# distance between them less than 0.6 then they are from the same
# person, otherwise they are from different people. Here we just print
# the vector to the screen.
face_descriptor = facerec.compute_face_descriptor(img, shape)
print(face_descriptor)
# It should also be noted that you can also call this function like this:
# face_descriptor = facerec.compute_face_descriptor(img, shape, 100)
# The version of the call without the 100 gets 99.13% accuracy on LFW
# while the version with 100 gets 99.38%. However, the 100 makes the
# call 100x slower to execute, so choose whatever version you like. To
# explain a little, the 3rd argument tells the code how many times to
# jitter/resample the image. When you set it to 100 it executes the
# face descriptor extraction 100 times on slightly modified versions of
# the face and returns the average result. You could also pick a more
# middle value, such as 10, which is only 10x slower but still gets an
# LFW accuracy of 99.3%.


dlib.hit_enter_to_continue()
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吐槽:
dlib的確很方便,不用花多少時間就能自己做到一些目標功能。官方文檔講的很詳細,很容易入門。看這個文檔(dlib python api)差不多就能學會用了。導師已經安排了研究生階段的學習任務了,后面也要忙起來了。dlib的學習雖然是我10月份才開的坑,為了善始善終我也要盡快整理完這些東西。以后要回到”泡館”生活了。

原文鏈接:https://blog.csdn.net/hongbin_xu/article/details/78390982


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