使用OpenCV提供的预先训练的深度学习面部检测器模型,可快速,准确的进行人脸识别。
2017年8月OpenCV 3.3正式发布,带来了高改进的“深度神经网络”(dnn deep neural networks)模块。该模块支持许多深度学习框架,包括Caffe,TensorFlow和Torch / PyTorch。
基于Caffe的面部检测器在这里。
需要两组文件:
定义模型体系结构的.prototxt文件
.caffemodel文件,包含实际图层的权重
权重文件不包含在OpenCV示例目录。
OpenCV深度学习面部检测器如何工作?图片.png
# 模型下载:https://itbooks.pipipan.com/fs/18113597-320346529# 代码存放:https://github.com/china-testing/python-api-tesing/tree/master/opencv_crash_deep_learning# 技术支持qq群144081101(代码和模型存放)# USAGE# python detect_faces.py --image rooster.jpg --prototxt deploy.prototxt.txt --model res10_300x300_ssd_iter_140000.caffemodel# import the necessary packagesimport numpy as npimport argparseimport cv2# construct the argument parse and parse the argumentsap = argparse.ArgumentParser()
ap.add_argument("-i", "--image", required=True,
help="path to input image")
ap.add_argument("-p", "--prototxt", required=True,
help="path to Caffe 'deploy' prototxt file")
ap.add_argument("-m", "--model", required=True,
help="path to Caffe pre-trained model")
ap.add_argument("-c", "--confidence", type=float, default=0.5,
help="minimum probability to filter weak detections")
args = vars(ap.parse_args())# load our serialized model from diskprint("[INFO] loading model...")
net = cv2.dnn.readNetFromCaffe(args["prototxt"], args["model"])# load the input image and construct an input blob for the image# by resizing to a fixed 300x300 pixels and then normalizing itimage = cv2.imread(args["image"])
(h, w) = image.shape[:2]
blob = cv2.dnn.blobFromImage(cv2.resize(image, (300, 300)), 1.0,
(300, 300), (104.0, 177.0, 123.0))# pass the blob through the network and obtain the detections and# predictionsprint("[INFO] computing object detections...")
net.setInput(blob)
detections = net.forward()# loop over the detectionsfor i in range(0, detections.shape[2]): # extract the confidence (i.e., probability) associated with the
# prediction
confidence = detections[0, 0, i, 2] # filter out weak detections by ensuring the `confidence` is
# greater than the minimum confidence
if confidence > args["confidence"]: # compute the (x, y)-coordinates of the bounding box for the
# object
box = detections[0, 0, i, 3:7] * np.array([w, h, w, h])
(startX, startY, endX, endY) = box.astype("int")
# draw the bounding box of the face along with the associated
# probability
text = "{:.2f}%".format(confidence * 100)
y = startY - 10 if startY - 10 > 10 else startY + 10
cv2.rectangle(image, (startX, startY), (endX, endY),
(0, 0, 255), 2)
cv2.putText(image, text, (startX, y),
cv2.FONT_HERSHEY_SIMPLEX, 0.45, (0, 0, 255), 2)# show the output imagecv2.imshow("Output", image)
cv2.waitKey(0)执行:
$ python detect_faces.py --image rooster.jpg --prototxt deploy.prototxt.txt --model res10_300x300_ssd_iter_140000.caffemodel
图片.png
上面的面部有74.30%的置信度。 尽管OpenCV的Haar级联因缺少“直接”角度的面孔,但通过使用OpenCV的深度学习面部探测器,依然能够测到脸部。
再来看三个面孔的示例:
python detect_faces.py --image iron_chic.jpg --prototxt deploy.prototxt.txt --model res10_300x300_ssd_iter_140000.caffemodel
图片.png
视频,视频流和网络摄像头应用人脸检测# USAGE# python detect_faces_video.py --prototxt deploy.prototxt.txt --model res10_300x300_ssd_iter_140000.caffemodel# import the necessary packagesfrom imutils.video import VideoStreamimport numpy as npimport argparseimport imutilsimport timeimport cv2# construct the argument parse and parse the argumentsap = argparse.ArgumentParser()
ap.add_argument("-p", "--prototxt", required=True,
help="path to Caffe 'deploy' prototxt file")
ap.add_argument("-m", "--model", required=True,
help="path to Caffe pre-trained model")
ap.add_argument("-c", "--confidence", type=float, default=0.5,
help="minimum probability to filter weak detections")
args = vars(ap.parse_args())# load our serialized model from diskprint("[INFO] loading model...")
net = cv2.dnn.readNetFromCaffe(args["prototxt"], args["model"])# initialize the video stream and allow the cammera sensor to warmupprint("[INFO] starting video stream...")
vs = VideoStream(src=0).start()
time.sleep(2.0)# loop over the frames from the video streamwhile True: # grab the frame from the threaded video stream and resize it
# to have a maximum width of 400 pixels
frame = vs.read()
frame = imutils.resize(frame, width=400)
# grab the frame dimensions and convert it to a blob
(h, w) = frame.shape[:2]
blob = cv2.dnn.blobFromImage(cv2.resize(frame, (300, 300)), 1.0,
(300, 300), (104.0, 177.0, 123.0))
# pass the blob through the network and obtain the detections and
# predictions
net.setInput(blob)
detections = net.forward() # loop over the detections
for i in range(0, detections.shape[2]): # extract the confidence (i.e., probability) associated with the
# prediction
confidence = detections[0, 0, i, 2] # filter out weak detections by ensuring the `confidence` is
# greater than the minimum confidence
if confidence < args["confidence"]: continue
# compute the (x, y)-coordinates of the bounding box for the
# object
box = detections[0, 0, i, 3:7] * np.array([w, h, w, h])
(startX, startY, endX, endY) = box.astype("int")
# draw the bounding box of the face along with the associated
# probability
text = "{:.2f}%".format(confidence * 100)
y = startY - 10 if startY - 10 > 10 else startY + 10
cv2.rectangle(frame, (startX, startY), (endX, endY),
(0, 0, 255), 2)
cv2.putText(frame, text, (startX, y),
cv2.FONT_HERSHEY_SIMPLEX, 0.45, (0, 0, 255), 2) # show the output frame
cv2.imshow("frame", frame)
key = cv2.waitKey(1) & 0xFF
# if the `q` key was pressed, break from the loop
if key == ord("q"): break# do a bit of cleanupcv2.destroyAllWindows()
vs.stop()执行:
python detect_faces_video.py --prototxt deploy.prototxt.txt --model res10_300x300_ssd_iter_140000.caffemodel
deep_learning_face_detection_opencv.gif
作者:python作业AI毕业设计
链接:https://www.jianshu.com/p/73d154b22a64



