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Learn Python to implement Qiniu Cloud interface docking and image filter synthesis

王林
Release: 2023-07-05 13:45:10
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Learn Python to implement Qiniu Cloud interface docking and image filter synthesis

Abstract:
With the rapid development of cloud computing and big data technology, cloud storage and cloud services have become modern application development an integral part of. Qiniu Cloud, as a leading cloud service provider, provides developers with a wealth of cloud storage and related services. This article will introduce how to use Python language to connect to the Qiniu Cloud interface and implement the function of image filter synthesis. At the same time, code examples will be used to help readers better understand the implementation process.

1. Install dependent libraries
Before we start, we need to install Qiniu Cloud’s Python SDK, which can be installed through the pip command:

pip install qiniu
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2. Get Qiniu Cloud’s Access Key and Secret Key
To use Qiniu Cloud’s services, we first need to obtain the Access Key and Secret Key. Log in to the official website of Qiniu Cloud, enter the developer center, create a new storage space, and obtain the corresponding Access Key and Secret Key.

3. Create Qiniu Cloud storage space
Log in to Qiniu Cloud’s official website, enter the developer center, and create a new storage space on the storage space management page. And write down the name of the storage space.

4. Write Python program
The following uses code examples to introduce how to use Python language to implement Qiniu Cloud interface docking and picture filter synthesis functions.

# 导入必要的依赖库
from qiniu import Auth, put_file

# 配置七牛云的Access Key和Secret Key
access_key = 'your-access-key'
secret_key = 'your-secret-key'

# 配置七牛云存储空间的名称
bucket_name = 'your-bucket-name'

# 创建七牛云认证对象
q = Auth(access_key, secret_key)

def upload_file(file_path, key):
    # 生成上传凭证
    token = q.upload_token(bucket_name, key)

    # 调用七牛云接口上传文件
    ret, info = put_file(token, key, file_path)
    print(info)

def generate_filtered_image(input_key, output_key):
    # 构建图片处理参数
    fops = 'imageMogr2/filter/sepia'

    # 生成要处理的图片URL
    input_url = q.private_download_url('your-domain.com/' + input_key)

    # 生成处理后的图片URL
    pipeline = 'your-pipeline-name'
    save_as = q.etag(output_key)
    persistent_ops = '|'.join(['imageMogr2/format/jpg', fops + '|saveas/' + save_as])
    pfops = pipeline + ';' + persistent_ops
    style_url = input_url + '?attname=' + output_key

    # 输出处理后的图片URL
    print(q.prefop(pfops))
    print(style_url)

if __name__ == '__main__':
    # 上传原始图片
    upload_file('path-to-your-image.jpg', 'input_image.jpg')

    # 进行滤镜合成处理
    generate_filtered_image('input_image.jpg', 'output_image.jpg')
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In the above code example, we use Qiniu Cloud's Python SDK to create Qiniu Cloud's authentication object through access_key and secret_key. Then, call the upload_file function to upload a local image to the Qiniu cloud storage space. Then, call the generate_filtered_image function to perform filter synthesis on the image uploaded to Qiniu Cloud, and output the processed image URL.

By running the above code example, we can connect to the Qiniu Cloud interface and realize image filter synthesis through the image processing function of Qiniu Cloud.

Conclusion:
This article introduces how to use Python language to connect to the Qiniu Cloud interface and implement the function of image filter synthesis. By using Qiniu Cloud's Python SDK, we can easily use Qiniu Cloud's services for cloud storage and image processing. I hope this article can help readers better understand the process of Qiniu Cloud interface docking, and apply it to related projects in actual development.

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