仅检查OpenCV中视频供稿的特定部分

时间:2019-05-01 22:41:34

标签: python opencv computer-vision motion

如何获取特定宽度和高度的网络摄像头视频提要?

我对OpenCV库的经验为零,因此在这方面我需要帮助。这段代码来自geeksforgeeks.com。这是我现在唯一的东西。

我想要实现的是,我只想检测视频Feed中指定区域的运动。

import cv2, time, pandas



from datetime import datetime 



static_back = None
motion_list = [ None, None ] 
time = [] 
df = pandas.DataFrame(columns = ["Start", "End"]) 
video = cv2.VideoCapture(0) 



while True: 
    check, frame = video.read() 
    motion = 0
    gray = cv2.cvtColor(frame, cv2.COLOR_BGR2GRAY) 
    gray = cv2.GaussianBlur(gray, (21, 21), 0)



if static_back is None: 
    static_back = gray 
    continue

diff_frame = cv2.absdiff(static_back, gray) 

thresh_frame = cv2.threshold(diff_frame, 30, 255, cv2.THRESH_BINARY)[1] 
thresh_frame = cv2.dilate(thresh_frame, None, iterations = 2) 

(cnts, _) = cv2.findContours(thresh_frame.copy(),  
                   cv2.RETR_EXTERNAL, cv2.CHAIN_APPROX_SIMPLE) 

for contour in cnts: 
    if cv2.contourArea(contour) < 50000: 
        continue
    motion = 1

    (x, y, w, h) = cv2.boundingRect(contour) 
    # making green rectangle arround the moving object 
    cv2.rectangle(frame, (x, y), (x + w, y + h), (0, 255, 0), 3) 

motion_list.append(motion) 

motion_list = motion_list[-2:] 

if motion_list[-1] == 1 and motion_list[-2] == 0: 
    time.append(datetime.now()) 

if motion_list[-1] == 0 and motion_list[-2] == 1: 
    time.append(datetime.now()) 

cv2.imshow("Gray Frame", gray) 

cv2.imshow("Difference Frame", diff_frame) 

cv2.imshow("Threshold Frame", thresh_frame) 

cv2.imshow("Color Frame", frame) 

key = cv2.waitKey(1) 
if key == ord('q'): 
    # if something is movingthen it append the end time of movement 
    if motion == 1: 
        time.append(datetime.now()) 
    break


for i in range(0, len(time), 2): 
    df = df.append({"Start":time[i], "End":time[i + 1]}, ignore_index = True)

df.to_csv("Time_of_movements.csv") 
video.release() 
cv2.destroyAllWindows()

1 个答案:

答案 0 :(得分:4)

您似乎想要获取每一帧特定区域的关注区域(ROI)。要在OpenCV中执行此操作,我们可以使用边界框坐标裁剪图像。将(0,0)视为图像的左上角,从左至右作为x方向,从上至下作为y方向。如果我们将(x1, y1)作为ROI的左上顶点,并将(x2,y2)作为ROI的右下角顶点,则可以通过以下方式裁剪图像:

ROI = frame[y1:y2, x1:x2]

作为说明:

-------------------------------------------
|                                         | 
|    (x1, y1)                             |
|      ------------------------           |
|      |                      |           |
|      |                      |           | 
|      |         ROI          |           |  
|      |                      |           |   
|      |                      |           |   
|      |                      |           |       
|      ------------------------           |   
|                           (x2, y2)      |    
|                                         |             
|                                         |             
|                                         |             
-------------------------------------------

由于图像在OpenCV中存储为Numpy数组,因此我们能够做到这一点。 Here是Numpy数组索引和切片的重要资源。获得理想的投资回报率后,您就可以在该区域进行运动检测了。