这篇文章主要介绍了如何通过python实现人脸识别验证,文中通过示例代码介绍的非常详细,对大家的学习或者工作具有一定的参考学习价值,需要的朋友可以参考下
直接上代码,此案例是根据https://github.com/caibojian/face_login修改的,识别率不怎么好,有时挡了半个脸还是成功的
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# -*- coding: utf-8 -*- # __author__="maple" """ ┏┓ ┏┓ ┏┛┻━━━┛┻┓ ┃ ☃ ┃ ┃ ┳┛ ┗┳ ┃ ┃ ┻ ┃ ┗━┓ ┏━┛ ┃ ┗━━━┓ ┃ 神兽保佑 ┣┓ ┃ 永无BUG! ┏┛ ┗┓┓┏━┳┓┏┛ ┃┫┫ ┃┫┫ ┗┻┛ ┗┻┛ """ import base64 import cv2 import time from io import BytesIO from tensorflow import keras from PIL import Image from pymongo import MongoClient import tensorflow as tf import face_recognition import numpy as np #mongodb连接 conn = MongoClient( 'mongodb://root:123@localhost:27017/' ) db = conn.myface #连接mydb数据库,没有则自动创建 user_face = db.user_face #使用test_set集合,没有则自动创建 face_images = db.face_images lables = [] datas = [] INPUT_NODE = 128 LATER1_NODE = 200 OUTPUT_NODE = 0 TRAIN_DATA_SIZE = 0 TEST_DATA_SIZE = 0 def generateds(): get_out_put_node() train_x, train_y, test_x, test_y = np.array(datas),np.array(lables),np.array(datas),np.array(lables) return train_x, train_y, test_x, test_y def get_out_put_node(): for item in face_images.find(): lables.append(item[ 'user_id' ]) datas.append(item[ 'face_encoding' ]) OUTPUT_NODE = len ( set (lables)) TRAIN_DATA_SIZE = len (lables) TEST_DATA_SIZE = len (lables) return OUTPUT_NODE, TRAIN_DATA_SIZE, TEST_DATA_SIZE # 验证脸部信息 def predict_image(image): model = tf.keras.models.load_model( 'face_model.h5' , compile = False ) face_encode = face_recognition.face_encodings(image) result = [] for j in range ( len (face_encode)): predictions1 = model.predict(np.array(face_encode[j]).reshape( 1 , 128 )) print (predictions1) if np. max (predictions1[ 0 ]) > 0.90 : print (np.argmax(predictions1[ 0 ]).dtype) pred_user = user_face.find_one({ 'id' : int (np.argmax(predictions1[ 0 ]))}) print ( '第%d张脸是%s' % (j + 1 , pred_user[ 'user_name' ])) result.append(pred_user[ 'user_name' ]) return result # 保存脸部信息 def save_face(pic_path,uid): image = face_recognition.load_image_file(pic_path) face_encode = face_recognition.face_encodings(image) print (face_encode[ 0 ].shape) if ( len (face_encode) = = 1 ): face_image = { 'user_id' : uid, 'face_encoding' :face_encode[ 0 ].tolist() } face_images.insert_one(face_image) # 训练脸部信息 def train_face(): train_x, train_y, test_x, test_y = generateds() dataset = tf.data.Dataset.from_tensor_slices((train_x, train_y)) dataset = dataset.batch( 32 ) dataset = dataset.repeat() OUTPUT_NODE, TRAIN_DATA_SIZE, TEST_DATA_SIZE = get_out_put_node() model = keras.Sequential([ keras.layers.Dense( 128 , activation = tf.nn.relu), keras.layers.Dense( 128 , activation = tf.nn.relu), keras.layers.Dense(OUTPUT_NODE, activation = tf.nn.softmax) ]) model. compile (optimizer = tf.compat.v1.train.AdamOptimizer(), loss = 'sparse_categorical_crossentropy' , metrics = [ 'accuracy' ]) steps_per_epoch = 30 if steps_per_epoch > len (train_x): steps_per_epoch = len (train_x) model.fit(dataset, epochs = 10 , steps_per_epoch = steps_per_epoch) model.save( 'face_model.h5' ) def register_face(user): if user_face.find({ "user_name" : user}).count() > 0 : print ( "用户已存在" ) return video_capture = cv2.VideoCapture( 0 ) # 在MongoDB中使用sort()方法对数据进行排序,sort()方法可以通过参数指定排序的字段,并使用 1 和 -1 来指定排序的方式,其中 1 为升序,-1为降序。 finds = user_face.find().sort([( "id" , - 1 )]).limit( 1 ) uid = 0 if finds.count() > 0 : uid = finds[ 0 ][ 'id' ] + 1 print (uid) user_info = { 'id' : uid, 'user_name' : user, 'create_time' : time.time(), 'update_time' : time.time() } user_face.insert_one(user_info) while 1 : # 获取一帧视频 ret, frame = video_capture.read() # 窗口显示 cv2.imshow( 'Video' ,frame) # 调整角度后连续拍5张图片 if cv2.waitKey( 1 ) & 0xFF = = ord ( 'q' ): for i in range ( 1 , 6 ): cv2.imwrite( 'Myface{}.jpg' . format (i), frame) with open ( 'Myface{}.jpg' . format (i), "rb" )as f: img = f.read() img_data = BytesIO(img) im = Image. open (img_data) im = im.convert( 'RGB' ) imgArray = np.array(im) faces = face_recognition.face_locations(imgArray) save_face( 'Myface{}.jpg' . format (i),uid) break train_face() video_capture.release() cv2.destroyAllWindows() def rec_face(): video_capture = cv2.VideoCapture( 0 ) while 1 : # 获取一帧视频 ret, frame = video_capture.read() # 窗口显示 cv2.imshow( 'Video' ,frame) # 验证人脸的5照片 if cv2.waitKey( 1 ) & 0xFF = = ord ( 'q' ): for i in range ( 1 , 6 ): cv2.imwrite( 'recface{}.jpg' . format (i), frame) break res = [] for i in range ( 1 , 6 ): with open ( 'recface{}.jpg' . format (i), "rb" )as f: img = f.read() img_data = BytesIO(img) im = Image. open (img_data) im = im.convert( 'RGB' ) imgArray = np.array(im) predict = predict_image(imgArray) if predict: res.extend(predict) b = set (res) # {2, 3} if len (b) = = 1 and len (res) > = 3 : print ( " 验证成功" ) else : print ( " 验证失败" ) if __name__ = = '__main__' : register_face( "maple" ) rec_face() |
以上就是本文的全部内容,希望对大家的学习有所帮助,也希望大家多多支持服务器之家。
原文链接:https://www.cnblogs.com/angelyan/p/12113773.html