OpenCV实现机器人对物体进行移动跟随的方法实例

1.物体识别

本案例实现对特殊颜色物体的识别,并实现根据物体位置的改变进行控制跟随。

import cv2 as cv

# 定义结构元素

kernel = cv.getStructuringElement(cv.MORPH_RECT, (3, 3))

# print kernel

capture = cv.VideoCapture(0)

print capture.isOpened()

ok, frame = capture.read()

lower_b = (65, 43, 46)

upper_b = (110, 255, 255)

height, width = frame.shape[0:2]

screen_center = width / 2

offset = 50

while ok:

# 将图像转成HSV颜色空间

hsv_frame = cv.cvtColor(frame, cv.COLOR_BGR2HSV)

# 基于颜色的物体提取

mask = cv.inRange(hsv_frame, lower_b, upper_b)

mask2 = cv.morphologyEx(mask, cv.MORPH_OPEN, kernel)

mask3 = cv.morphologyEx(mask2, cv.MORPH_CLOSE, kernel)

# 找出面积最大的区域

_, contours, _ = cv.findContours(mask3, cv.RETR_EXTERNAL, cv.CHAIN_APPROX_SIMPLE)

maxArea = 0

maxIndex = 0

for i, c in enumerate(contours):

area = cv.contourArea(c)

if area > maxArea:

maxArea = area

maxIndex = i

# 绘制

cv.drawContours(frame, contours, maxIndex, (255, 255, 0), 2)

# 获取外切矩形

x, y, w, h = cv.boundingRect(contours[maxIndex])

cv.rectangle(frame, (x, y), (x+w, y+h), (255, 0, 0), 2)

# 获取中心像素点

center_x = int(x + w/2)

center_y = int(y + h/2)

cv.circle(frame, (center_x, center_y), 5, (0, 0, 255), -1)

# 简单的打印反馈数据,之后补充运动控制

if center_x < screen_center - offset:

print "turn left"

elif screen_center - offset <= center_x <= screen_center + offset:

print "keep"

elif center_x > screen_center + offset:

print "turn right"

cv.imshow("mask4", mask3)

cv.imshow("frame", frame)

cv.waitKey(1)

ok, frame = capture.read()

实际效果图

2.移动跟随

结合ROS控制turtlebot3或其他机器人运动,turtlebot3机器人的教程见我另一个博文:ROS控制Turtlebot3

首先启动turtlebot3,如下代码可以放在机器人的树莓派中,将相机插在USB口即可

代码示例:

import rospy

import cv2 as cv

from geometry_msgs.msg import Twist

def shutdown():

twist = Twist()

twist.linear.x = 0

twist.angular.z = 0

cmd_vel_Publisher.publish(twist)

print "stop"

if __name__ == '__main__':

rospy.init_node("follow_node")

rospy.on_shutdown(shutdown)

rate = rospy.Rate(100)

cmd_vel_Publisher = rospy.Publisher("/cmd_vel", Twist, queue_size=1)

# 定义结构元素

kernel = cv.getStructuringElement(cv.MORPH_RECT, (3, 3))

# print kernel

capture = cv.VideoCapture(0)

print capture.isOpened()

ok, frame = capture.read()

lower_b = (65, 43, 46)

upper_b = (110, 255, 255)

height, width = frame.shape[0:2]

screen_center = width / 2

offset = 50

while not rospy.is_shutdown():

# 将图像转成HSV颜色空间

hsv_frame = cv.cvtColor(frame, cv.COLOR_BGR2HSV)

# 基于颜色的物体提取

mask = cv.inRange(hsv_frame, lower_b, upper_b)

mask2 = cv.morphologyEx(mask, cv.MORPH_OPEN, kernel)

mask3 = cv.morphologyEx(mask2, cv.MORPH_CLOSE, kernel)

# 找出面积最大的区域

_, contours, _ = cv.findContours(mask3, cv.RETR_EXTERNAL, cv.CHAIN_APPROX_SIMPLE)

maxArea = 0

maxIndex = 0

for i, c in enumerate(contours):

area = cv.contourArea(c)

if area > maxArea:

maxArea = area

maxIndex = i

# 绘制

cv.drawContours(frame, contours, maxIndex, (255, 255, 0), 2)

# 获取外切矩形

x, y, w, h = cv.boundingRect(contours[maxIndex])

cv.rectangle(frame, (x, y), (x + w, y + h), (255, 0, 0), 2)

# 获取中心像素点

center_x = int(x + w / 2)

center_y = int(y + h / 2)

cv.circle(frame, (center_x, center_y), 5, (0, 0, 255), -1)

# 简单的打印反馈数据,之后补充运动控制

twist = Twist()

if center_x < screen_center - offset:

twist.linear.x = 0.1

twist.angular.z = 0.5

print "turn left"

elif screen_center - offset <= center_x <= screen_center + offset:

twist.linear.x = 0.3

twist.angular.z = 0

print "keep"

elif center_x > screen_center + offset:

twist.linear.x = 0.1

twist.angular.z = -0.5

print "turn right"

else:

twist.linear.x = 0

twist.angular.z = 0

print "stop"

# 将速度发出

cmd_vel_Publisher.publish(twist)

# cv.imshow("mask4", mask3)

# cv.imshow("frame", frame)

cv.waitKey(1)

rate.sleep()

ok, frame = capture.read()

总结

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