Difference between revisions of "Camera Module + Raspberry Pi 2"

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(Created page with "== Step 1: Install OpenCV on your Raspberry Pi and Import it to Python== Follow these [http://www.pyimagesearch.com/2015/02/23/install-opencv-and-python-on-your-raspberry-pi-2...")
 
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> and then select <code>Enable Camera</code>. Press Enter and then select <code>Finish</code>. You will then have to reboot and log back on to the Raspberry Pi. After this has been done, your camera module should be able to work on your Raspberry Pi.  
 
> and then select <code>Enable Camera</code>. Press Enter and then select <code>Finish</code>. You will then have to reboot and log back on to the Raspberry Pi. After this has been done, your camera module should be able to work on your Raspberry Pi.  
  
 
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==Step 3: Capturing an Image==
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After setting up the OpenCV library and the camera module, we will finally be able to capture images. First, type in <code>import picamera</code> at the top of the Python file. After this, typing in <code>camera = picamera.PiCamera()</code> will create an instance of the camera which you will be able to modify and use to take pictures. You can adjust the resolution by typing in <code>camera.resoultion = (resolution, resolution)</code>. 1024 by 1024 resolution was the parameter we used in our project. To get a preview of the image to be taken on the computer screen, type in <code>camera.start_preview()</code>. Add in a sleep (measured in seconds) to create a delay between the preview and the capture by typing in <code>time.sleep(seconds)</code>. Finally, capture the image by typing in <code>camera.capture('name of file')</code> and filling in the name of the file that will be saved. 
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==Step 4: Analyze your image==
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Now that we are able to set up the camera and take pictures, we can use the images that are captured for new uses. One thing we can do with captured images is analyzing the pixels in the image. Pixels are stored as lists of Blue, Green, and Red color values. Before we do this, we must first allow our code to read the image we are analyzing. To read an image, we can type <code>img = cv2.imread('name of file', cv2.IMREAD_COLOR)</code>. The image we have just read is a list of lists of Blue, Green, and Red color values respectively. We can then use the instance of the image file to access a certain pixel in the image, for example <code>img[125, 275]</code>. We can also use ranges of pixels by typing <code>img[100:500] </code>. These pixels can also have their values changed, which would be reflected in the image used. For example, we can turn a set of pixels white by typing <code>img[100:500] = [255,255,255]</code>. We can also use a section of the image and replace another part of the image with that given section by typing in <code>img[100:500] = img[300:500]</code>
  
 
[[Category:HowTos]]
 
[[Category:HowTos]]

Revision as of 00:14, 6 May 2016

Step 1: Install OpenCV on your Raspberry Pi and Import it to Python

Follow these instructions to install OpenCV onto your Raspberry Pi using the terminal. After you have successfully installed OpenCV and imported the library to Python, you will be able to use the code import cv2 at the top of your files to gain access to the OpenCV library.

Step 2: Enabling the Camera Module

Next, you will have to connect the camera on the Raspberry Pi. Start by inserting the ribbon cable into the camera slot on the board. After the cable has been inserted, use the terminal to enable the camera module on the OS. In the terminal, type in sudo raspi-config and then select Enable Camera. Press Enter and then select Finish. You will then have to reboot and log back on to the Raspberry Pi. After this has been done, your camera module should be able to work on your Raspberry Pi.

Step 3: Capturing an Image

After setting up the OpenCV library and the camera module, we will finally be able to capture images. First, type in import picamera at the top of the Python file. After this, typing in camera = picamera.PiCamera() will create an instance of the camera which you will be able to modify and use to take pictures. You can adjust the resolution by typing in camera.resoultion = (resolution, resolution). 1024 by 1024 resolution was the parameter we used in our project. To get a preview of the image to be taken on the computer screen, type in camera.start_preview(). Add in a sleep (measured in seconds) to create a delay between the preview and the capture by typing in time.sleep(seconds). Finally, capture the image by typing in camera.capture('name of file') and filling in the name of the file that will be saved.

Step 4: Analyze your image

Now that we are able to set up the camera and take pictures, we can use the images that are captured for new uses. One thing we can do with captured images is analyzing the pixels in the image. Pixels are stored as lists of Blue, Green, and Red color values. Before we do this, we must first allow our code to read the image we are analyzing. To read an image, we can type img = cv2.imread('name of file', cv2.IMREAD_COLOR). The image we have just read is a list of lists of Blue, Green, and Red color values respectively. We can then use the instance of the image file to access a certain pixel in the image, for example img[125, 275]. We can also use ranges of pixels by typing img[100:500] . These pixels can also have their values changed, which would be reflected in the image used. For example, we can turn a set of pixels white by typing img[100:500] = [255,255,255]. We can also use a section of the image and replace another part of the image with that given section by typing in img[100:500] = img[300:500]