Golang's method to realize blurred background of pictures and face recognition

WBOY
Release: 2023-08-19 21:21:17
Original
1232 people have browsed it

Golangs method to realize blurred background of pictures and face recognition

Golang’s method of realizing blurred background and face recognition of images

Introduction:
Image processing is a very common requirement. In some application scenarios, We need to blur the background of the picture to highlight the subject. At the same time, face recognition is also widely used in areas such as face key point detection and face comparison. This article will introduce how to use Golang to implement image blur background and face recognition, and attach code examples to help readers better understand and apply it.

1. Blurred background of pictures
In Golang, we can use the third-party library goimageblur to achieve the blurred background effect of pictures. The following are the basic steps to use this library:

  1. Install goimageblur library
    Execute the following command to install goimageblur library:

go get github.com/internet-dev/ goimageblur

  1. Introduce the library and necessary packages
    Introduce the goimageblur library and necessary packages into the code:

import (

"github.com/internet-dev/goimageblur"
"image"
_ "image/jpeg"
"os"
Copy after login

)

  1. Open the image file
    Use the Open method of the os library to open the image file and check whether an error occurs:

file, err := os.Open(" input.jpg")
if err != nil {

// 错误处理
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login

}

defer file.Close() // Close the file

  1. Read the picture Information
    Use the Decode method of the image library to read the image information and check whether an error occurs:

img, _, err := image.Decode(file)
if err ! = nil {

// 错误处理
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login

}

  1. Achieving the background blur effect
    Use the Blur method of the goimageblur library to achieve the background blur effect of the image:

blurImg := goimageblur.Blur(img, 10) // The blur radius is 10

  1. Save the blurred image
    Use the Encode method of the image library to save the blurred image as a file:

outputFile, err := os.Create("output.jpg")
if err != nil {

// 错误处理
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login

}

defer outputFile.Close( ) // Close the file

err = jpeg.Encode(outputFile, blurImg, nil)
if err != nil {

// 错误处理
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login

}

In this way, we Implemented a method of blurring the background of images using Golang.

2. Face recognition
In Golang, we can use the third-party library go-opencv to implement face recognition. The following are the basic steps to use this library:

  1. Install go-opencv library
    Execute the following command to install go-opencv library:

go get -u -d gocv.io/x/gocv

cd $GOPATH/src/gocv.io/x/gocv

make install

  1. Introduce libraries and necessary packages
    Introduce the go-opencv library and necessary packages into the code:

import (

"gocv.io/x/gocv"
"image"
_ "image/jpeg"
"os"
Copy after login

)

  1. Open the image file
    Use The OpenVideoCapture method of the gocv library opens the image file and checks whether an error occurs:

file, err := gocv.OpenVideoCapture("input.jpg")
if err != nil {

// 错误处理
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login

}

defer file.Close() //Close the file

  1. Read the face classifier
    Use the NewCascadeClassifier method of the gocv library to read the person Face classifier file, which can be downloaded from the OpenCV official website:

faceCascade := gocv.NewCascadeClassifier()
if !faceCascade.Load("haarcascade_frontalface_default.xml") {

// 错误处理
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login

}

  1. Read image information
    Use the IMRead method of the gocv library to read the image information and check whether an error occurs:

img: = gocv.IMRead("input.jpg", gocv.IMReadColor)
if img.Empty() {

// 错误处理
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login
Copy after login

}

  1. Implement face recognition
    Use The DetectMultiScale method of the gocv library implements face recognition:

grayImg := gocv.NewMat()
gocv.CvtColor(img, &grayImg, gocv.ColorBGRToGray)

faces : = faceCascade.DetectMultiScale(grayImg)

for _, face := range faces {

gocv.Rectangle(&img, face, color.RGBA{0, 255, 0, 0}, 3)
Copy after login

}

  1. Display recognition results
    Use IMShow of gocv library Method to display the recognition result:

window := gocv.NewWindow("Face Detection")
window.IMShow(img)
gocv.WaitKey(0)
window.Close ()

In this way, we have implemented the method of using Golang for face recognition.

Conclusion:
This article introduces the method of using Golang to realize blurred background and face recognition of pictures, and attaches the corresponding code examples. By learning and applying these methods, we can better process images and apply them to actual projects. I hope this article can help readers better understand and use Golang for image processing and face recognition.

The above is the detailed content of Golang's method to realize blurred background of pictures and face recognition. For more information, please follow other related articles on the PHP Chinese website!

source:php.cn
Statement of this Website
The content of this article is voluntarily contributed by netizens, and the copyright belongs to the original author. This site does not assume corresponding legal responsibility. If you find any content suspected of plagiarism or infringement, please contact admin@php.cn
Popular Tutorials
More>
Latest Downloads
More>
Web Effects
Website Source Code
Website Materials
Front End Template