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camera.py
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camera.py
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from face_detector import get_face_detector, find_faces
from face_landmarks import get_landmark_model, detect_marks
import tensorflow as tf
import numpy as np
import cv2
import base64
from PIL import Image
from io import BytesIO
from gaze_tracking import GazeTracking
from tensorflow.keras import Model
from tensorflow.keras.layers import (
Add,
Concatenate,
Conv2D,
Input,
Lambda,
LeakyReLU,
UpSampling2D,
ZeroPadding2D,
BatchNormalization
)
from tensorflow.keras.regularizers import l2
import wget
from time import time
gaze = GazeTracking()
def load_darknet_weights(model, weights_file):
wf = open(weights_file, 'rb')
major, minor, revision, seen, _ = np.fromfile(wf, dtype=np.int32, count=5)
layers = ['yolo_darknet',
'yolo_conv_0',
'yolo_output_0',
'yolo_conv_1',
'yolo_output_1',
'yolo_conv_2',
'yolo_output_2']
for layer_name in layers:
sub_model = model.get_layer(layer_name)
for i, layer in enumerate(sub_model.layers):
if not layer.name.startswith('conv2d'):
continue
batch_norm = None
if i + 1 < len(sub_model.layers) and \
sub_model.layers[i + 1].name.startswith('batch_norm'):
batch_norm = sub_model.layers[i + 1]
filters = layer.filters
size = layer.kernel_size[0]
in_dim = layer.input_shape[-1]
if batch_norm is None:
conv_bias = np.fromfile(wf, dtype=np.float32, count=filters)
else:
bn_weights = np.fromfile(
wf, dtype=np.float32, count=4 * filters)
bn_weights = bn_weights.reshape((4, filters))[[1, 0, 2, 3]]
conv_shape = (filters, in_dim, size, size)
conv_weights = np.fromfile(
wf, dtype=np.float32, count=np.product(conv_shape))
conv_weights = conv_weights.reshape(
conv_shape).transpose([2, 3, 1, 0])
if batch_norm is None:
layer.set_weights([conv_weights, conv_bias])
else:
layer.set_weights([conv_weights])
batch_norm.set_weights(bn_weights)
assert len(wf.read()) == 0, 'failed to read all data'
wf.close()
def draw_outputs(img, outputs, class_names):
boxes, objectness, classes, nums = outputs
boxes, objectness, classes, nums = boxes[0], objectness[0], classes[0], nums[0]
wh = np.flip(img.shape[0:2])
for i in range(nums):
x1y1 = tuple((np.array(boxes[i][0:2]) * wh).astype(np.int32))
x2y2 = tuple((np.array(boxes[i][2:4]) * wh).astype(np.int32))
img = cv2.rectangle(img, x1y1, x2y2, (255, 0, 0), 2)
img = cv2.putText(img, '{} {:.4f}'.format(
class_names[int(classes[i])], objectness[i]),
x1y1, cv2.FONT_HERSHEY_COMPLEX_SMALL, 1, (0, 0, 255), 2)
return img
yolo_anchors = np.array([(10, 13), (16, 30), (33, 23), (30, 61), (62, 45),
(59, 119), (116, 90), (156, 198), (373, 326)],
np.float32) / 416
yolo_anchor_masks = np.array([[6, 7, 8], [3, 4, 5], [0, 1, 2]])
def DarknetConv(x, filters, kernel_size, strides=1, batch_norm=True):
if strides == 1:
padding = 'same'
else:
x = ZeroPadding2D(((1, 0), (1, 0)))(x)
padding = 'valid'
x = Conv2D(filters=filters, kernel_size=kernel_size,
strides=strides, padding=padding,
use_bias=not batch_norm, kernel_regularizer=l2(0.0005))(x)
if batch_norm:
x = BatchNormalization()(x)
x = LeakyReLU(alpha=0.1)(x)
return x
def DarknetResidual(x, filters):
prev = x
x = DarknetConv(x, filters // 2, 1)
x = DarknetConv(x, filters, 3)
x = Add()([prev, x])
return x
def DarknetBlock(x, filters, blocks):
x = DarknetConv(x, filters, 3, strides=2)
for _ in range(blocks):
x = DarknetResidual(x, filters)
return x
def Darknet(name=None):
x = inputs = Input([None, None, 3])
x = DarknetConv(x, 32, 3)
x = DarknetBlock(x, 64, 1)
x = DarknetBlock(x, 128, 2)
x = x_36 = DarknetBlock(x, 256, 8)
x = x_61 = DarknetBlock(x, 512, 8)
x = DarknetBlock(x, 1024, 4)
return tf.keras.Model(inputs, (x_36, x_61, x), name=name)
def YoloConv(filters, name=None):
def yolo_conv(x_in):
if isinstance(x_in, tuple):
inputs = Input(x_in[0].shape[1:]), Input(x_in[1].shape[1:])
x, x_skip = inputs
x = DarknetConv(x, filters, 1)
x = UpSampling2D(2)(x)
x = Concatenate()([x, x_skip])
else:
x = inputs = Input(x_in.shape[1:])
x = DarknetConv(x, filters, 1)
x = DarknetConv(x, filters * 2, 3)
x = DarknetConv(x, filters, 1)
x = DarknetConv(x, filters * 2, 3)
x = DarknetConv(x, filters, 1)
return Model(inputs, x, name=name)(x_in)
return yolo_conv
def YoloOutput(filters, anchors, classes, name=None):
def yolo_output(x_in):
x = inputs = Input(x_in.shape[1:])
x = DarknetConv(x, filters * 2, 3)
x = DarknetConv(x, anchors * (classes + 5), 1, batch_norm=False)
x = Lambda(lambda x: tf.reshape(x, (-1, tf.shape(x)[1], tf.shape(x)[2],
anchors, classes + 5)))(x)
return tf.keras.Model(inputs, x, name=name)(x_in)
return yolo_output
def yolo_boxes(pred, anchors, classes):
grid_size = tf.shape(pred)[1]
box_xy, box_wh, objectness, class_probs = tf.split(
pred, (2, 2, 1, classes), axis=-1)
box_xy = tf.sigmoid(box_xy)
objectness = tf.sigmoid(objectness)
class_probs = tf.sigmoid(class_probs)
pred_box = tf.concat((box_xy, box_wh), axis=-1)
grid = tf.meshgrid(tf.range(grid_size), tf.range(grid_size))
grid = tf.expand_dims(tf.stack(grid, axis=-1), axis=2)
box_xy = (box_xy + tf.cast(grid, tf.float32)) / \
tf.cast(grid_size, tf.float32)
box_wh = tf.exp(box_wh) * anchors
box_x1y1 = box_xy - box_wh / 2
box_x2y2 = box_xy + box_wh / 2
bbox = tf.concat([box_x1y1, box_x2y2], axis=-1)
return bbox, objectness, class_probs, pred_box
def yolo_nms(outputs, anchors, masks, classes):
b, c, t = [], [], []
for o in outputs:
b.append(tf.reshape(o[0], (tf.shape(o[0])[0], -1, tf.shape(o[0])[-1])))
c.append(tf.reshape(o[1], (tf.shape(o[1])[0], -1, tf.shape(o[1])[-1])))
t.append(tf.reshape(o[2], (tf.shape(o[2])[0], -1, tf.shape(o[2])[-1])))
bbox = tf.concat(b, axis=1)
confidence = tf.concat(c, axis=1)
class_probs = tf.concat(t, axis=1)
scores = confidence * class_probs
boxes, scores, classes, valid_detections = tf.image.combined_non_max_suppression(
boxes=tf.reshape(bbox, (tf.shape(bbox)[0], -1, 1, 4)),
scores=tf.reshape(
scores, (tf.shape(scores)[0], -1, tf.shape(scores)[-1])),
max_output_size_per_class=100,
max_total_size=100,
iou_threshold=0.5,
score_threshold=0.6
)
return boxes, scores, classes, valid_detections
def YoloV3(size=None, channels=3, anchors=yolo_anchors,
masks=yolo_anchor_masks, classes=80):
x = inputs = Input([size, size, channels], name='input')
x_36, x_61, x = Darknet(name='yolo_darknet')(x)
x = YoloConv(512, name='yolo_conv_0')(x)
output_0 = YoloOutput(512, len(masks[0]), classes, name='yolo_output_0')(x)
x = YoloConv(256, name='yolo_conv_1')((x, x_61))
output_1 = YoloOutput(256, len(masks[1]), classes, name='yolo_output_1')(x)
x = YoloConv(128, name='yolo_conv_2')((x, x_36))
output_2 = YoloOutput(128, len(masks[2]), classes, name='yolo_output_2')(x)
boxes_0 = Lambda(lambda x: yolo_boxes(x, anchors[masks[0]], classes),
name='yolo_boxes_0')(output_0)
boxes_1 = Lambda(lambda x: yolo_boxes(x, anchors[masks[1]], classes),
name='yolo_boxes_1')(output_1)
boxes_2 = Lambda(lambda x: yolo_boxes(x, anchors[masks[2]], classes),
name='yolo_boxes_2')(output_2)
outputs = Lambda(lambda x: yolo_nms(x, anchors, masks, classes),
name='yolo_nms')((boxes_0[:3], boxes_1[:3], boxes_2[:3]))
return Model(inputs, outputs, name='yolov3')
yolo = YoloV3()
load_darknet_weights(yolo, 'models/yolov3.weights')
def get_2d_points(img, rotation_vector, translation_vector, camera_matrix, val):
"""Return the 3D points present as 2D for making annotation box"""
point_3d = []
dist_coeffs = np.zeros((4,1))
rear_size = val[0]
rear_depth = val[1]
point_3d.append((-rear_size, -rear_size, rear_depth))
point_3d.append((-rear_size, rear_size, rear_depth))
point_3d.append((rear_size, rear_size, rear_depth))
point_3d.append((rear_size, -rear_size, rear_depth))
point_3d.append((-rear_size, -rear_size, rear_depth))
front_size = val[2]
front_depth = val[3]
point_3d.append((-front_size, -front_size, front_depth))
point_3d.append((-front_size, front_size, front_depth))
point_3d.append((front_size, front_size, front_depth))
point_3d.append((front_size, -front_size, front_depth))
point_3d.append((-front_size, -front_size, front_depth))
point_3d = np.array(point_3d, dtype=np.float).reshape(-1, 3)
(point_2d, _) = cv2.projectPoints(point_3d,
rotation_vector,
translation_vector,
camera_matrix,
dist_coeffs)
point_2d = np.int32(point_2d.reshape(-1, 2))
return point_2d
def draw_annotation_box(img, rotation_vector, translation_vector, camera_matrix,
rear_size=300, rear_depth=0, front_size=500, front_depth=400,
color=(255, 255, 0), line_width=2):
rear_size = 1
rear_depth = 0
front_size = img.shape[1]
front_depth = front_size*2
val = [rear_size, rear_depth, front_size, front_depth]
point_2d = get_2d_points(img, rotation_vector, translation_vector, camera_matrix, val)
def head_pose_points(img, rotation_vector, translation_vector, camera_matrix):
rear_size = 1
rear_depth = 0
front_size = img.shape[1]
front_depth = front_size*2
val = [rear_size, rear_depth, front_size, front_depth]
point_2d = get_2d_points(img, rotation_vector, translation_vector, camera_matrix, val)
y = (point_2d[5] + point_2d[8])//2
x = point_2d[2]
return (x, y)
face_model = get_face_detector()
landmark_model = get_landmark_model()
def get_frame(imgData):
nparr = np.frombuffer(base64.b64decode(imgData), np.uint8)
image = cv2.imdecode(nparr, cv2.COLOR_BGR2GRAY)
ret = True
size = image.shape
font = cv2.FONT_HERSHEY_SIMPLEX
model_points = np.array([
(0.0, 0.0, 0.0), # Nose tip
(0.0, -330.0, -65.0), # Chin
(-225.0, 170.0, -135.0), # Left eye left corner
(225.0, 170.0, -135.0), # Right eye right corne
(-150.0, -150.0, -125.0), # Left Mouth corner
(150.0, -150.0, -125.0) # Right mouth corner
])
focal_length = size[1]
center = (size[1]/2, size[0]/2)
camera_matrix = np.array(
[[focal_length, 0, center[0]],
[0, focal_length, center[1]],
[0, 0, 1]], dtype = "double"
)
img = cv2.cvtColor(image, cv2.COLOR_BGR2RGB)
img = cv2.resize(img, (320, 320))
img = img.astype(np.float32)
img = np.expand_dims(img, 0)
img = img / 255
class_names = [c.strip() for c in open("models/classes.TXT").readlines()]
boxes, scores, classes, nums = yolo(img)
count=0
mob_status = ""
person_status = ""
for i in range(nums[0]):
if int(classes[0][i] == 0):
count +=1
if int(classes[0][i] == 67):
print('Mobile Phone detected')
mob_status = 1
else:
print('Not Mobile Phone detected')
mob_status = 0
print(mob_status)
if count == 0:
print('No person detected')
person_status = 1
elif count > 1:
print('More than one person detected')
person_status = 2
else:
print('Normal')
person_status = 0
image = draw_outputs(image, (boxes, scores, classes, nums), class_names)
user_move1=""
user_move2=""
if ret == True:
faces = find_faces(image, face_model)
for face in faces:
marks = detect_marks(image, landmark_model, face)
image_points = np.array([
marks[30], # Nose tip
marks[8], # Chin
marks[36], # Left eye left corner
marks[45], # Right eye right corne
marks[48], # Left Mouth corner
marks[54] # Right mouth corner
], dtype="double")
dist_coeffs = np.zeros((4,1)) # Assuming no lens distortion
(success, rotation_vector, translation_vector) = cv2.solvePnP(model_points, image_points, camera_matrix, dist_coeffs, flags=cv2.SOLVEPNP_UPNP)
(nose_end_point2D, jacobian) = cv2.projectPoints(np.array([(0.0, 0.0, 1000.0)]), rotation_vector, translation_vector, camera_matrix, dist_coeffs)
for p in image_points:
cv2.circle(image, (int(p[0]), int(p[1])), 3, (0,0,255), -1)
p1 = ( int(image_points[0][0]), int(image_points[0][1]))
p2 = ( int(nose_end_point2D[0][0][0]), int(nose_end_point2D[0][0][1]))
x1, x2 = head_pose_points(image, rotation_vector, translation_vector, camera_matrix)
try:
m = (p2[1] - p1[1])/(p2[0] - p1[0])
ang1 = int(math.degrees(math.atan(m)))
except:
ang1 = 90
try:
m = (x2[1] - x1[1])/(x2[0] - x1[0])
ang2 = int(math.degrees(math.atan(-1/m)))
except:
ang2 = 90
if ang1 >= 48:
user_move1 = 2
print('Head down')
elif ang1 <= -48:
user_move1 = 1
print('Head up')
else:
user_move1 = 0
if ang2 >= 48:
print('Head right')
user_move2 = 4
elif ang2 <= -48:
print('Head left')
user_move2 = 3
else:
user_move2 = 0
ret, jpeg = cv2.imencode('.jpg', image)
jpg_as_text = base64.b64encode(jpeg)
gaze.refresh(image)
frame = gaze.annotated_frame()
eye_movements = ""
if gaze.is_blinking():
eye_movements = 1
print("Blinking")
elif gaze.is_right():
eye_movements = 4
print("Looking right")
elif gaze.is_left():
eye_movements = 3
print("Looking left")
elif gaze.is_center():
eye_movements = 2
print("Looking center")
else:
eye_movements = 0
print("Not found!")
print(eye_movements)
proctorDict = dict()
proctorDict['jpg_as_text'] = jpg_as_text
proctorDict['mob_status'] = mob_status
proctorDict['person_status'] = person_status
proctorDict['user_move1'] = user_move1
proctorDict['user_move2'] = user_move2
proctorDict['eye_movements'] = eye_movements
return proctorDict