<div id="cnblogs_post_body" class="blogpost-body"><p>上一節講到人臉檢測,如今講一下人臉識別。具體是經過程序採集圖像並進行訓練,而且基於這些訓練的圖像對人臉進行動態識別。</p> <p>人臉識別前所須要的人臉庫能夠經過兩種方式得到:1.本身從視頻獲取圖像 2.從人臉數據庫免費得到可用人臉圖像,如ORL人臉庫(包含40我的每人10張人臉,總共400張人臉),ORL人臉庫中的每一張圖像大小爲92x112。若要對這些樣本進行人臉識別必需要在包含人臉的樣本圖像上進行人臉識別。這裏提供本身準備圖像識別出本身的方法。</p> <p>1.採集人臉信息:經過攝像頭採集人臉信息,10張以上便可,把圖像大小調整爲92x112,保存在一個指定的文件夾,文件名後綴爲.png</p> <div class="cnblogs_code"><div class="cnblogs_code_toolbar"><span class="cnblogs_code_copy"><a href="javascript:void(0);" onclick="copyCnblogsCode(this)" title="複製代碼"><img src="//common.cnblogs.com/images/copycode.gif" alt="複製代碼"></a></span></div> <pre><span style="color: #0000ff;">def</span><span style="color: #000000;"> generator(data): </span><span style="color: #800000;">'''</span><span style="color: #800000;"> 打開攝像頭,讀取幀,檢測該幀圖像中的人臉,並進行剪切、縮放 生成圖片知足如下格式: 1.灰度圖,後綴爲 .png 2.圖像大小相同 params: data:指定生成的人臉數據的保存路徑 </span><span style="color: #800000;">'''</span><span style="color: #000000;">javascript
name</span>=input(<span style="color: #800000;">'</span><span style="color: #800000;">my name:</span><span style="color: #800000;">'</span><span style="color: #000000;">) </span><span style="color: #008000;">#</span><span style="color: #008000;">若是路徑存在則刪除路徑</span> path=<span style="color: #000000;">os.path.join(data,name) </span><span style="color: #0000ff;">if</span><span style="color: #000000;"> os.path.isdir(path): shutil.rmtree(path) </span><span style="color: #008000;">#</span><span style="color: #008000;">建立文件夾</span>
<span style="color: #000000;"> os.mkdir(path) </span><span style="color: #008000;">#</span><span style="color: #008000;">建立一個級聯分類器</span> face_casecade=cv2.CascadeClassifier(<span style="color: #800000;">'</span><span style="color: #800000;">../haarcascades/haarcascade_frontalface_default.xml</span><span style="color: #800000;">'</span><span style="color: #000000;">) </span><span style="color: #008000;">#</span><span style="color: #008000;">打開攝像頭</span> camera=<span style="color: #000000;">cv2.VideoCapture(0) cv2.namedWindow(</span><span style="color: #800000;">'</span><span style="color: #800000;">Dynamic</span><span style="color: #800000;">'</span><span style="color: #000000;">) </span><span style="color: #008000;">#</span><span style="color: #008000;">計數</span> count=1java
<span style="color: #0000ff;">while</span><span style="color: #000000;">(True): </span><span style="color: #008000;">#</span><span style="color: #008000;">讀取一幀圖像</span> ret,frame=<span style="color: #000000;">camera.read() </span><span style="color: #0000ff;">if</span><span style="color: #000000;"> ret: </span><span style="color: #008000;">#</span><span style="color: #008000;">轉換爲灰度圖</span> gray_img=<span style="color: #000000;">cv2.cvtColor(frame,cv2.COLOR_BGR2GRAY) </span><span style="color: #008000;">#</span><span style="color: #008000;">人臉檢測</span> face=face_casecade.detectMultiScale(gray_img,1.3,5<span style="color: #000000;">) </span><span style="color: #0000ff;">for</span> (x,y,w,h) <span style="color: #0000ff;">in</span><span style="color: #000000;"> face: </span><span style="color: #008000;">#</span><span style="color: #008000;">在原圖上繪製矩形</span> cv2.rectangle(frame,(x,y),(x+w,y+h),(0,0,255),2<span style="color: #000000;">) </span><span style="color: #008000;">#</span><span style="color: #008000;">調整圖像大小</span> new_frame=cv2.resize(frame[y:y+h,x:x+w],(92,112<span style="color: #000000;">)) </span><span style="color: #008000;">#</span><span style="color: #008000;">保存人臉</span> cv2.imwrite(<span style="color: #800000;">'</span><span style="color: #800000;">%s/%s.png</span><span style="color: #800000;">'</span>%<span style="color: #000000;">(path,str(count)),new_frame) count</span>+=1<span style="color: #000000;"> cv2.imshow(</span><span style="color: #800000;">'</span><span style="color: #800000;">Dynamic</span><span style="color: #800000;">'</span><span style="color: #000000;">,frame) </span><span style="color: #008000;">#</span><span style="color: #008000;">按下q鍵退出</span> <span style="color: #0000ff;">if</span> cv2.waitKey(100) & 0xff==ord(<span style="color: #800000;">'</span><span style="color: #800000;">q</span><span style="color: #800000;">'</span><span style="color: #000000;">): </span><span style="color: #0000ff;">break</span><span style="color: #000000;"> camera.release() cv2.destroyAllWindows()</span></pre>
<div class="cnblogs_code_toolbar"><span class="cnblogs_code_copy"><a href="javascript:void(0);" onclick="copyCnblogsCode(this)" title="複製代碼"><img src="//common.cnblogs.com/images/copycode.gif" alt="複製代碼"></a></span></div></div> <p>該程序運行後會在指定的data路徑下建立一個你輸入的人名的文件夾用於存放採集到的圖像,在這裏我輸入了wjy,結果如圖</p> <p><img src="https://img2018.cnblogs.com/blog/1456911/201810/1456911-20181028215050695-1884823623.png" alt=""></p> <p> </p> <p>2.人臉識別</p> <p>OpenCV有3中人臉識別方法,分別基於三個不一樣算法,分別爲Eigenfaces,Fisherfaces和Local Binary Pattern Histogram</p> <p>這些方法都有相似的一個過程,即先對數據集進行訓練,對圖像或視頻中的人臉進行分析,而且從兩個方面肯定:1.是否識別到對應的目標,2.識別到的目標的置信度,在實際中經過閾值進行篩選,置信度高於閾值的人臉將被丟棄</p> <p>這裏介紹一下利用特徵臉即Eigenfaces進行人臉識別算法,特徵臉法本質上就是PCA降維,基本思路是先把圖像灰度化,轉化爲單通道,再將它首位相接轉換爲列向量,假設圖像的大小是20*20的,那麼這個向量就是400維,可是維度過高算法複雜度也會升高,因此須要降維,再使用簡單排序便可</p> <div class="cnblogs_code"><div class="cnblogs_code_toolbar"><span class="cnblogs_code_copy"><a href="javascript:void(0);" onclick="copyCnblogsCode(this)" title="複製代碼"><img src="//common.cnblogs.com/images/copycode.gif" alt="複製代碼"></a></span></div> <pre><span style="color: #008000;">#</span><span style="color: #008000;">載入圖像 讀取ORL人臉數據庫,準備訓練數據</span> <span style="color: #0000ff;">def</span><span style="color: #000000;"> LoadImages(data): </span><span style="color: #800000;">'''</span><span style="color: #800000;"> 加載圖片數據用於訓練 params: data:訓練數據所在的目錄,要求圖片尺寸同樣 ret: images:[m,height,width] m爲樣本數,height爲高,width爲寬 names:名字的集合 labels:標籤 </span><span style="color: #800000;">'''</span><span style="color: #000000;"> images</span>=<span style="color: #000000;">[] names</span>=<span style="color: #000000;">[] labels</span>=<span style="color: #000000;">[]python
label</span>=<span style="color: #000000;">0 </span><span style="color: #008000;">#</span><span style="color: #008000;">遍歷全部文件夾</span> <span style="color: #0000ff;">for</span> subdir <span style="color: #0000ff;">in</span><span style="color: #000000;"> os.listdir(data): subpath</span>=<span style="color: #000000;">os.path.join(data,subdir) </span><span style="color: #008000;">#</span><span style="color: #008000;">print('path',subpath)</span> <span style="color: #008000;">#</span><span style="color: #008000;">判斷文件夾是否存在</span> <span style="color: #0000ff;">if</span><span style="color: #000000;"> os.path.isdir(subpath): </span><span style="color: #008000;">#</span><span style="color: #008000;">在每個文件夾中存放着一我的的許多照片</span>
<span style="color: #000000;"> names.append(subdir) </span><span style="color: #008000;">#</span><span style="color: #008000;">遍歷文件夾中的圖片文件</span> <span style="color: #0000ff;">for</span> filename <span style="color: #0000ff;">in</span><span style="color: #000000;"> os.listdir(subpath): imgpath</span>=<span style="color: #000000;">os.path.join(subpath,filename) img</span>=<span style="color: #000000;">cv2.imread(imgpath,cv2.IMREAD_COLOR) gray_img</span>=<span style="color: #000000;">cv2.cvtColor(img,cv2.COLOR_BGR2GRAY) </span><span style="color: #008000;">#</span><span style="color: #008000;">cv2.imshow('1',img)</span> <span style="color: #008000;">#</span><span style="color: #008000;">cv2.waitKey(0)</span> <span style="color: #000000;"> images.append(gray_img) labels.append(label) label</span>+=1<span style="color: #000000;"> images</span>=<span style="color: #000000;">np.asarray(images) </span><span style="color: #008000;">#</span><span style="color: #008000;">names=np.asarray(names)</span> labels=<span style="color: #000000;">np.asarray(labels) </span><span style="color: #0000ff;">return</span><span style="color: #000000;"> images,labels,namesgit
</span><span style="color: #008000;">#</span><span style="color: #008000;">檢驗訓練結果</span> <span style="color: #0000ff;">def</span><span style="color: #000000;"> FaceRec(data): </span><span style="color: #008000;">#</span><span style="color: #008000;">加載訓練的數據</span> X,y,names=<span style="color: #000000;">LoadImages(data) </span><span style="color: #008000;">#</span><span style="color: #008000;">print('x',X)</span> model=<span style="color: #000000;">cv2.face.EigenFaceRecognizer_create() model.train(X,y)github
</span><span style="color: #008000;">#</span><span style="color: #008000;">打開攝像頭</span> camera=<span style="color: #000000;">cv2.VideoCapture(0) cv2.namedWindow(</span><span style="color: #800000;">'</span><span style="color: #800000;">Dynamic</span><span style="color: #800000;">'</span><span style="color: #000000;">) </span><span style="color: #008000;">#</span><span style="color: #008000;">建立級聯分類器</span> face_casecade=cv2.CascadeClassifier(<span style="color: #800000;">'</span><span style="color: #800000;">../haarcascades/haarcascade_frontalface_default.xml</span><span style="color: #800000;">'</span><span style="color: #000000;">) </span><span style="color: #0000ff;">while</span><span style="color: #000000;">(True): </span><span style="color: #008000;">#</span><span style="color: #008000;">讀取一幀圖像</span> <span style="color: #008000;">#</span><span style="color: #008000;">ret:圖像是否讀取成功</span> <span style="color: #008000;">#</span><span style="color: #008000;">frame:該幀圖像</span> ret,frame=<span style="color: #000000;">camera.read() </span><span style="color: #008000;">#</span><span style="color: #008000;">判斷圖像是否讀取成功</span> <span style="color: #008000;">#</span><span style="color: #008000;">print('ret',ret)</span> <span style="color: #0000ff;">if</span><span style="color: #000000;"> ret: </span><span style="color: #008000;">#</span><span style="color: #008000;">轉換爲灰度圖</span> gray_img=<span style="color: #000000;">cv2.cvtColor(frame,cv2.COLOR_BGR2GRAY) </span><span style="color: #008000;">#</span><span style="color: #008000;">利用級聯分類器鑑別人臉</span> faces=face_casecade.detectMultiScale(gray_img,1.3,5<span style="color: #000000;">) </span><span style="color: #008000;">#</span><span style="color: #008000;">遍歷每一幀圖像,畫出矩形</span> <span style="color: #0000ff;">for</span> (x,y,w,h) <span style="color: #0000ff;">in</span><span style="color: #000000;"> faces: frame</span>=cv2.rectangle(frame,(x,y),(x+w,y+h),(255,0,0),2) <span style="color: #008000;">#</span><span style="color: #008000;">藍色</span> roi_gray=gray_img[y:y+h,x:x+<span style="color: #000000;">w] </span><span style="color: #0000ff;">try</span><span style="color: #000000;">: </span><span style="color: #008000;">#</span><span style="color: #008000;">將圖像轉換爲寬92 高112的圖像</span> <span style="color: #008000;">#</span><span style="color: #008000;">resize(原圖像,目標大小,(插值方法)interpolation=,)</span> roi_gray=cv2.resize(roi_gray,(92,112),interpolation=<span style="color: #000000;">cv2.INTER_LINEAR) params</span>=<span style="color: #000000;">model.predict(roi_gray) </span><span style="color: #0000ff;">print</span>(<span style="color: #800000;">'</span><span style="color: #800000;">Label:%s,confidence:%.2f</span><span style="color: #800000;">'</span>%(params[0],params[1<span style="color: #000000;">])) </span><span style="color: #800000;">'''</span><span style="color: #800000;"> putText:給照片添加文字 putText(輸入圖像,'所需添加的文字',左上角的座標,字體,字體大小,顏色,字體粗細) </span><span style="color: #800000;">'''</span><span style="color: #000000;"> cv2.putText(frame,names[params[0]],(x,y</span>-20),cv2.FONT_HERSHEY_SIMPLEX,1,255,2<span style="color: #000000;">) </span><span style="color: #0000ff;">except</span><span style="color: #000000;">: </span><span style="color: #0000ff;">continue</span><span style="color: #000000;"> cv2.imshow(</span><span style="color: #800000;">'</span><span style="color: #800000;">Dynamic</span><span style="color: #800000;">'</span><span style="color: #000000;">,frame) </span><span style="color: #008000;">#</span><span style="color: #008000;">按下q鍵退出</span> <span style="color: #0000ff;">if</span> cv2.waitKey(100) & 0xff==ord(<span style="color: #800000;">'</span><span style="color: #800000;">q</span><span style="color: #800000;">'</span><span style="color: #000000;">): </span><span style="color: #0000ff;">break</span><span style="color: #000000;"> camera.release() cv2.destroyAllWindows()</span></pre>
<div class="cnblogs_code_toolbar"><span class="cnblogs_code_copy"><a href="javascript:void(0);" onclick="copyCnblogsCode(this)" title="複製代碼"><img src="//common.cnblogs.com/images/copycode.gif" alt="複製代碼"></a></span></div></div> <p>在程序中,咱們用cv2.face.EigenFaceRecognizer_create()建立人臉識別的模型,經過圖像數組和對應標籤數組來訓練模型,該函數有兩個重要的參數,1.保留主成分的數目,2.指定的置信度閾值,爲一個浮點型。</p> <p>下面就是基本重複人臉檢測的相關操做,經過檢測到視頻中的人臉進行人臉識別,有以下兩個步驟:</p> <p>1.將檢測到的人臉圖像調整爲92x112,即須要和訓練的圖像的尺寸相同</p> <p>2.調用predict()函數進行人臉預測,該函數會返回兩個元素的數組,第一個是識別個體的標籤,第二個是置信度,越小匹配度越高,0表示徹底匹配,須要瞭解的是不一樣算法的置信度評分機制不一樣。</p> <p>附上結果圖</p> <p><img src="https://img2018.cnblogs.com/blog/1456911/201810/1456911-20181028223113951-1220386013.png" alt=""></p>web
# -*- coding: utf-8 -*- """ Created on Sat Oct 27 11:43:47 2018 @author: Administrator """ ''' 調用opencv的庫實現人臉識別 ''' import cv2 import numpy as np import os import shutil #採集本身的人臉數據 def generator(data): ''' 打開攝像頭,讀取幀,檢測該幀圖像中的人臉,並進行剪切、縮放 生成圖片知足如下格式: 1.灰度圖,後綴爲 .png 2.圖像大小相同 params: data:指定生成的人臉數據的保存路徑 ''' name=input('my name:') #若是路徑存在則刪除路徑 path=os.path.join(data,name) if os.path.isdir(path): shutil.rmtree(path) #建立文件夾 os.mkdir(path) #建立一個級聯分類器 face_casecade=cv2.CascadeClassifier('../haarcascades/haarcascade_frontalface_default.xml') #打開攝像頭 camera=cv2.VideoCapture(0) cv2.namedWindow('Dynamic') #計數 count=1 while(True): #讀取一幀圖像 ret,frame=camera.read() if ret: #轉換爲灰度圖 gray_img=cv2.cvtColor(frame,cv2.COLOR_BGR2GRAY) #人臉檢測 face=face_casecade.detectMultiScale(gray_img,1.3,5) for (x,y,w,h) in face: #在原圖上繪製矩形 cv2.rectangle(frame,(x,y),(x+w,y+h),(0,0,255),2) #調整圖像大小 new_frame=cv2.resize(frame[y:y+h,x:x+w],(92,112)) #保存人臉 cv2.imwrite('%s/%s.png'%(path,str(count)),new_frame) count+=1 cv2.imshow('Dynamic',frame) #按下q鍵退出 if cv2.waitKey(100) & 0xff==ord('q'): break camera.release() cv2.destroyAllWindows() #載入圖像 讀取ORL人臉數據庫,準備訓練數據 def LoadImages(data): ''' 加載圖片數據用於訓練 params: data:訓練數據所在的目錄,要求圖片尺寸同樣 ret: images:[m,height,width] m爲樣本數,height爲高,width爲寬 names:名字的集合 labels:標籤 ''' images=[] names=[] labels=[] label=0 #遍歷全部文件夾 for subdir in os.listdir(data): subpath=os.path.join(data,subdir) #print('path',subpath) #判斷文件夾是否存在 if os.path.isdir(subpath): #在每個文件夾中存放着一我的的許多照片 names.append(subdir) #遍歷文件夾中的圖片文件 for filename in os.listdir(subpath): imgpath=os.path.join(subpath,filename) img=cv2.imread(imgpath,cv2.IMREAD_COLOR) gray_img=cv2.cvtColor(img,cv2.COLOR_BGR2GRAY) #cv2.imshow('1',img) #cv2.waitKey(0) images.append(gray_img) labels.append(label) label+=1 images=np.asarray(images) #names=np.asarray(names) labels=np.asarray(labels) return images,labels,names #檢驗訓練結果 def FaceRec(data): #加載訓練的數據 X,y,names=LoadImages(data) #print('x',X) model=cv2.face.EigenFaceRecognizer_create() model.train(X,y) #打開攝像頭 camera=cv2.VideoCapture(0) cv2.namedWindow('Dynamic') #建立級聯分類器 face_casecade=cv2.CascadeClassifier('../haarcascades/haarcascade_frontalface_default.xml') while(True): #讀取一幀圖像 #ret:圖像是否讀取成功 #frame:該幀圖像 ret,frame=camera.read() #判斷圖像是否讀取成功 #print('ret',ret) if ret: #轉換爲灰度圖 gray_img=cv2.cvtColor(frame,cv2.COLOR_BGR2GRAY) #利用級聯分類器鑑別人臉 faces=face_casecade.detectMultiScale(gray_img,1.3,5) #遍歷每一幀圖像,畫出矩形 for (x,y,w,h) in faces: frame=cv2.rectangle(frame,(x,y),(x+w,y+h),(255,0,0),2) #藍色 roi_gray=gray_img[y:y+h,x:x+w] try: #將圖像轉換爲寬92 高112的圖像 #resize(原圖像,目標大小,(插值方法)interpolation=,) roi_gray=cv2.resize(roi_gray,(92,112),interpolation=cv2.INTER_LINEAR) params=model.predict(roi_gray) print('Label:%s,confidence:%.2f'%(params[0],params[1])) ''' putText:給照片添加文字 putText(輸入圖像,'所需添加的文字',左上角的座標,字體,字體大小,顏色,字體粗細) ''' cv2.putText(frame,names[params[0]],(x,y-20),cv2.FONT_HERSHEY_SIMPLEX,1,255,2) except: continue cv2.imshow('Dynamic',frame) #按下q鍵退出 if cv2.waitKey(100) & 0xff==ord('q'): break camera.release() cv2.destroyAllWindows() if __name__=='__main__': data='./face' #generator(data) FaceRec(data)
###python三步實現人臉識別算法
<div id="cnblogs_post_body" class="blogpost-body"><p>Face Recognition軟件包</p> <p>這是世界上最簡單的人臉識別庫了。你能夠經過<a href="http://www.roncoo.com/course/view/82b3a098750545f1b80fe789a72d5a81" target="_blank">Python</a>引用或者命令行的形式使用它,來管理和識別人臉。</p> <p>該軟件包使用dlib中最早進的人臉識別深度學習算法,使得識別準確率在《Labled Faces in the world》測試基準下達到了99.38%。</p> <p>它同時提供了一個叫face_recognition的命令行工具,以便你能夠用命令行對一個文件夾中的圖片進行識別操做。</p> <p>特性</p> <p>在圖片中識別人臉</p> <p>找到圖片中全部的人臉</p> <p><img title="face/2C5ibeGc6h6RE3NWwi7njZj3Bh6bEXYB.jpg" src="http://static.roncoo.com/face/2C5ibeGc6h6RE3NWwi7njZj3Bh6bEXYB.jpg" alt="face/2C5ibeGc6h6RE3NWwi7njZj3Bh6bEXYB.jpg"></p> <p><img title="images/8J2Cs7fx6KQsAHjpsRR4nFTjQdjbHcHh.jpg" src="http://static.roncoo.com/images/8J2Cs7fx6KQsAHjpsRR4nFTjQdjbHcHh.jpg" alt="images/8J2Cs7fx6KQsAHjpsRR4nFTjQdjbHcHh.jpg"></p> <p>找到並操做圖片中的臉部特徵</p> <p>得到圖片中人類眼睛、鼻子、嘴、下巴的位置和輪廓</p> <p><img title="face/c24aXPRWF2ye3WdTKbC2bdFGZmBCwrtG.jpg" src="http://static.roncoo.com/face/c24aXPRWF2ye3WdTKbC2bdFGZmBCwrtG.jpg" alt="face/c24aXPRWF2ye3WdTKbC2bdFGZmBCwrtG.jpg"></p> <p><img title="face/K5mzWPj8Fn253RNJnyfC4hrc55bEpKCC.jpg" src="http://static.roncoo.com/face/K5mzWPj8Fn253RNJnyfC4hrc55bEpKCC.jpg" alt="face/K5mzWPj8Fn253RNJnyfC4hrc55bEpKCC.jpg"></p> <p>找到臉部特徵有不少超級有用的應用場景,固然你也能夠把它用在最顯而易見的功能上:美顏功能(就像美圖秀秀那樣)。</p> <p> </p> <p><img title="face/d77HG2fa3SHWKH4bnyGW7nYrdXGhMwMJ.jpg" src="http://static.roncoo.com/face/d77HG2fa3SHWKH4bnyGW7nYrdXGhMwMJ.jpg" alt="face/d77HG2fa3SHWKH4bnyGW7nYrdXGhMwMJ.jpg"></p> <p>鑑定圖片中的臉</p> <p>識別圖片中的人是誰。</p> <p><img title="face/ayWXswfWKNZxAT7QGTxzXmxYSTsrfirx.jpg" src="http://static.roncoo.com/face/ayWXswfWKNZxAT7QGTxzXmxYSTsrfirx.jpg" alt="face/ayWXswfWKNZxAT7QGTxzXmxYSTsrfirx.jpg"></p> <p><img title="images/a37YQjhYKN3Gn7Dd4HGSKa2ssPcH8ciM.jpg" src="http://static.roncoo.com/images/a37YQjhYKN3Gn7Dd4HGSKa2ssPcH8ciM.jpg" alt="images/a37YQjhYKN3Gn7Dd4HGSKa2ssPcH8ciM.jpg"></p> <p>你甚至能夠用這個軟件包作人臉的實時識別。</p> <p><img title="face/KyZfSapDPiyisCinDSN6FZSkEQAxDikd.png" src="http://static.roncoo.com/face/KyZfSapDPiyisCinDSN6FZSkEQAxDikd.png" alt="face/KyZfSapDPiyisCinDSN6FZSkEQAxDikd.png"></p> <p>這裏有一個實時識別的例子:</p> <div><div id="highlighter_480330" class="syntaxhighlighter java"><table border="0" cellpadding="0" cellspacing="0"><tbody><tr><td class="gutter"><div class="line number1 index0 alt2">1</div></td><td class="code"><div class="container"><div class="line number1 index0 alt2"><code class="java plain">https:</code><code class="java comments">//github.com/ageitgey/face_recognition/blob/master/examples/facerec_from_webcam_faster.py</code></div></div></td></tr></tbody></table></div></div> <p>安裝</p> <p>環境要求</p> <ul class=" list-paddingleft-2"> <li> <p>Python3.3+或者Python2.7</p> </li> <li> <p>MacOS或者Linux(Windows不作支持,可是你能夠試試,也許也能運行)</p> </li> </ul> <p>安裝步驟</p> <p>在MacOS或者Linux上安裝</p> <p>首先,確保你安裝了dlib,以及該軟件的Python綁定接口。若是沒有的話,看這篇安裝說明:</p> <div><div id="highlighter_354139" class="syntaxhighlighter java"><table border="0" cellpadding="0" cellspacing="0"><tbody><tr><td class="gutter"><div class="line number1 index0 alt2">1</div></td><td class="code"><div class="container"><div class="line number1 index0 alt2"><code class="java plain">https:</code><code class="java comments">//gist.github.com/ageitgey/629d75c1baac34dfa5ca2a1928a7aeaf</code></div></div></td></tr></tbody></table></div></div> <p>而後,用pip安裝這個軟件包:</p> <p><img title="face/dWRaCAPQaJJew5MypJQKeyRCDSNatSYz.jpg" src="http://static.roncoo.com/face/dWRaCAPQaJJew5MypJQKeyRCDSNatSYz.jpg" alt="face/dWRaCAPQaJJew5MypJQKeyRCDSNatSYz.jpg"></p> <p>若是你安裝遇到問題,能夠試試這個安裝好了的虛擬機:</p> <div><div id="highlighter_415451" class="syntaxhighlighter java"><table border="0" cellpadding="0" cellspacing="0"><tbody><tr><td class="gutter"><div class="line number1 index0 alt2">1</div></td><td class="code"><div class="container"><div class="line number1 index0 alt2"><code class="java plain">https:</code><code class="java comments">//medium.com/@ageitgey/try-deep-learning-in-python-now-with-a-fully-pre-configured-vm-1d97d4c3e9b</code></div></div></td></tr></tbody></table></div></div> <p>在樹莓派2+上安裝</p> <p>看這篇說明:</p> <div><div id="highlighter_758796" class="syntaxhighlighter java"><table border="0" cellpadding="0" cellspacing="0"><tbody><tr><td class="gutter"><div class="line number1 index0 alt2">1</div></td><td class="code"><div class="container"><div class="line number1 index0 alt2"><code class="java plain">https:</code><code class="java comments">//gist.github.com/ageitgey/1ac8dbe8572f3f533df6269dab35df65</code></div></div></td></tr></tbody></table></div></div> <p>在Windows上安裝</p> <p>雖然Windows不是官方支持的,可是有熱心網友寫出了一個Windows上的使用指南,請看這裏:</p> <div><div id="highlighter_896640" class="syntaxhighlighter java"><table border="0" cellpadding="0" cellspacing="0"><tbody><tr><td class="gutter"><div class="line number1 index0 alt2">1</div></td><td class="code"><div class="container"><div class="line number1 index0 alt2"><code class="java plain">https:</code><code class="java comments">//github.com/ageitgey/face_recognition/issues/175#issue-257710508</code></div></div></td></tr></tbody></table></div></div> <p>使用已經配置好的虛擬機(支持VMWare和VirtualBox)</p> <p>看這篇說明:</p> <div><div id="highlighter_709658" class="syntaxhighlighter java"><table border="0" cellpadding="0" cellspacing="0"><tbody><tr><td class="gutter"><div class="line number1 index0 alt2">1</div></td><td class="code"><div class="container"><div class="line number1 index0 alt2"><code class="java plain">https:</code><code class="java comments">//medium.com/@ageitgey/try-deep-learning-in-python-now-with-a-fully-pre-configured-vm-1d97d4c3e9b</code></div></div></td></tr></tbody></table></div></div> <p>使用方法</p> <p>命令行接口</p> <p>若是你已經安裝了face_recognition,那麼你的系統中已經有了一個名爲face_recognition的命令,你可使用它對圖片進行識別,或者對一個文件夾中的全部圖片進行識別。</p> <p>首先你須要提供一個文件夾,裏面是全部你但願系統認識的人的圖片。其中每一個人一張圖片,圖片以人的名字命名。</p> <p><img title="images/3RQG35tpC2cSSjrwwZmSk7aJx8a7h7GE.jpg" src="http://static.roncoo.com/images/3RQG35tpC2cSSjrwwZmSk7aJx8a7h7GE.jpg" alt="images/3RQG35tpC2cSSjrwwZmSk7aJx8a7h7GE.jpg"></p> <p>而後你須要準備另外一個文件夾,裏面是你要識別的圖片。</p> <p><img title="images/RGAYWwBEkai7KiwBbsrG3HF8YGrX6x64.jpg" src="http://static.roncoo.com/images/RGAYWwBEkai7KiwBbsrG3HF8YGrX6x64.jpg" alt="images/RGAYWwBEkai7KiwBbsrG3HF8YGrX6x64.jpg"></p> <p>而後你就能夠運行face_recognition命令了,把剛剛準備的兩個文件夾做爲參數傳入,命令就會返回須要識別的圖片中都出現了誰。</p> <p><img title="face/iRJb7d4H2Emyfa2wjYabJfR6X4RcextK.jpg" src="http://static.roncoo.com/face/iRJb7d4H2Emyfa2wjYabJfR6X4RcextK.jpg" alt="face/iRJb7d4H2Emyfa2wjYabJfR6X4RcextK.jpg"></p> <p>輸出中,識別到的每張臉都單獨佔一行,輸出格式爲</p> <p>經過Python模塊使用</p> <p>你能夠經過導入face_recognition模塊來使用它,使用方式超級簡單,文檔在這裏:https://face-recognition.readthedocs.io</p> <p>自動找到圖片中全部的臉</p> <p><img title="face/7FGab4SdRTHPYKn3fFeFPwrAy6pTHNaN.jpg" src="http://static.roncoo.com/face/7FGab4SdRTHPYKn3fFeFPwrAy6pTHNaN.jpg" alt="face/7FGab4SdRTHPYKn3fFeFPwrAy6pTHNaN.jpg"></p> <p>看看這個例子本身實踐一下:</p> <div><div id="highlighter_334058" class="syntaxhighlighter java"><table border="0" cellpadding="0" cellspacing="0"><tbody><tr><td class="gutter"><div class="line number1 index0 alt2">1</div></td><td class="code"><div class="container"><div class="line number1 index0 alt2"><code class="java plain">https:</code><code class="java comments">//github.com/ageitgey/face_recognition/blob/master/examples/find_faces_in_picture.py</code></div></div></td></tr></tbody></table></div></div> <p>你還能夠自定義替換人類識別的深度學習模型。</p> <p>注意:想得到比較好的性能的話,你可能須要GPU加速(使用英偉達的CUDA庫)。因此編譯的時候你也須要開啓dlib的GPU加速選項。</p> <p><img title="images/zPjiMHkQQ3pGbQaTbWTKFAS6DPeRMiNJ.jpg" src="http://static.roncoo.com/images/zPjiMHkQQ3pGbQaTbWTKFAS6DPeRMiNJ.jpg" alt="images/zPjiMHkQQ3pGbQaTbWTKFAS6DPeRMiNJ.jpg"></p> <p>你也能夠經過這個例子實踐一下:</p> <div><div id="highlighter_341609" class="syntaxhighlighter java"><table border="0" cellpadding="0" cellspacing="0"><tbody><tr><td class="gutter"><div class="line number1 index0 alt2">1</div></td><td class="code"><div class="container"><div class="line number1 index0 alt2"><code class="java plain">https:</code><code class="java comments">//github.com/ageitgey/face_recognition/blob/master/examples/find_faces_in_picture_cnn.py</code></div></div></td></tr></tbody></table></div></div> <p>若是你有不少圖片和GPU,你也能夠並行快速識別,看這篇文章:</p> <div><div id="highlighter_886017" class="syntaxhighlighter java"><table border="0" cellpadding="0" cellspacing="0"><tbody><tr><td class="gutter"><div class="line number1 index0 alt2">1</div></td><td class="code"><div class="container"><div class="line number1 index0 alt2"><code class="java plain">https:</code><code class="java comments">//github.com/ageitgey/face_recognition/blob/master/examples/find_faces_in_batches.py</code></div></div></td></tr></tbody></table></div></div> <p>自動識別人臉特徵</p> <p><img title="face/ADK7prbbQy5nahFGTA5C3AmdXchYe5WH.jpg" src="http://static.roncoo.com/face/ADK7prbbQy5nahFGTA5C3AmdXchYe5WH.jpg" alt="face/ADK7prbbQy5nahFGTA5C3AmdXchYe5WH.jpg"></p> <p>試試這個例子:</p> <div><div id="highlighter_935924" class="syntaxhighlighter java"><table border="0" cellpadding="0" cellspacing="0"><tbody><tr><td class="gutter"><div class="line number1 index0 alt2">1</div></td><td class="code"><div class="container"><div class="line number1 index0 alt2"><code class="java plain">https:</code><code class="java comments">//github.com/ageitgey/face_recognition/blob/master/examples/find_facial_features_in_picture.py</code></div></div></td></tr></tbody></table></div></div> <p> </p> <p>識別人臉鑑定是哪一個人</p> <p><img title="images/7GCiTet4wtxJCKMWR8cdtpWyATT534NZ.jpg" src="http://static.roncoo.com/images/7GCiTet4wtxJCKMWR8cdtpWyATT534NZ.jpg" alt="images/7GCiTet4wtxJCKMWR8cdtpWyATT534NZ.jpg"></p>數據庫
這裏是一個例子:數組
1 https://github.com/ageitgey/face_recognition/blob/master/examples/recognize_faces_in_pictures.pyapp