Skip to main content

Image editor using Python and Pillow.

Project description

py-img-processor

PyPI - Version GitHub Actions Workflow Status GitHub Actions Workflow Status Coveralls PyPI - Wheel PyPI - Python Version PyPI - Implementation GitHub License

Image editor using Python and Pillow.

依赖Pillow开发的Python库,用于图像编辑处理。

1. 安装

pip install py-img-processor

依赖:

  • Python >= 3.9
  • Pillow >= 8.0.0

可查看版本变更记录 ChangeLog

2. 使用(Usage)

具体使用说明查看 readthedocs

2.1 运行配置

可以通过指定环境变量PY_SETTINGS_MODULE加载配置文件:

export PY_SETTINGS_MODULE=${your_project.settings_file.py}

支持的配置项有:

配置项 类型 说明 默认值
DEBUG bool 是否debug开发模式 False
PROCESSOR_MAX_FILE_SIZE int 处理原图的大小限制, 单位 MB 20
PROCESSOR_MAX_W_H int 处理图像,原图宽高像素限制 30000
PROCESSOR_MAX_PIXEL int width x height总像素3亿,处理前后的值都被此配置限制 300000000
PROCESSOR_DEFAULT_QUALITY int 图像处理后的默认质量 75
PROCESSOR_TEXT_FONT str 默认字体文件,默认从系统中寻找;也可以直接传递字体文件路径 Arial Unicode.ttf

注意PROCESSOR_TEXT_FONT 字体的设置是文字水印必要参数,需保证系统已安装该字体。默认值 Arial Unicode.ttf 是MacOS系统存在的字体,建议设置字体文件路径。

2.2 图像处理

测试图片 lenna-400x225.jpg (像素400x225)

处理函数

process_image_by_path(input_path, out_path, params)

参数说明:

  • input_path str,输入图像文件路径
  • out_path str, 输出图像保存路径
  • params str or json,图像处理参数,参数说明详见 Reference.md

图像处理参数为字符串

  • 斜线 / 隔开,区分不同的操作;
  • 逗号 , 隔开,区分操作中不同的参数;
  • 下划线 _ 隔开,key_value 的形式,区分参数的Key和Value;
  • value是复杂参数时,需要进行base64url_encode,是否需要encode查看文档参数详细说明;
from imgprocessor.utils import base64url_encode
from imgprocessor.processor import process_image_by_path

process_image_by_path(
    "docs/imgs/lenna-400x225.jpg",
    "/tmp/output.png",
    # 对图片缩放、裁剪、生成圆角、并转成png存储
    f"resize,s_200/crop,w_200,h_200,g_center/watermark,text_{base64url_encode('Hello 世界')},color_FFF,size_20/circle,r_10/format,png",
)

输出图像 (像素200x200):

图像处理参数为JSON

  • 只是形式不同,参数和字符串形式无本质区别;
  • formatqualityinterlace三个值在JSON第一层,直接按照key: value的形式设置;
  • 其他参数都放在 actions 数组中;
process_image_by_path(
    "docs/imgs/lenna-400x225.jpg",
    "/tmp/output.png",
    {
        "actions": [
            {"key": "resize", "s": 200},
            {"key": "crop", "w": 200, "h": 200, "g": "center"},
            # JSON形式参数, text无需encode
            {"key": "watermark", "text": "Hello 世界", "color": "FFF", "size": 20},
            {"key": "circle", "r": 10},
        ],
        "format": "png",
    },
)

该操作与上述字符串示例参数等效。

命令行

安装库后 有可执行命令 img-processor 可以使用,通过 img-processor -h 查看参数说明。

usage: img-processor [-h] [-V] -P PATH [--action ACTION [ACTION ...]] -O OUTPUT [--overwrite]

图像处理

optional arguments:
  -h, --help            show this help message and exit
  -V, --version         show program's version number and exit
  -P PATH, --path PATH  输入图像的文件路径/目录,若是目录则批量处理目录下所有图像
  --action ACTION [ACTION ...]
                        操作参数,可对同一个文件多组操作
  -O OUTPUT, --output OUTPUT
                        输出图像路径,多个图像或多个操作时请设置已存在的目录
  --overwrite           是否覆盖输出路径中已有文件

示例:

# 对单个图像进行多个操作,actions有2个参数,会输出2个图像文件
img-processor -P docs/imgs/lenna-400x225.jpg -O /tmp/ --action resize,s_200/format,webp resize,s_225/crop,w_225,h_225,g_center/circle/format,png --overwrite

注意:action参数仅支持字符串表达形式。

会输出2个图像文件:

/tmp/lenna-400x225-0.webp (像素355x200)

/tmp/lenna-400x225-1.png (像素225x225)

提取图像主色调

from imgprocessor.processor import extract_main_color

extract_main_color("docs/imgs/lenna-400x225.jpg")
# 输出: "905C4C"

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

py_img_processor-1.1.0.tar.gz (23.1 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

py_img_processor-1.1.0-py3-none-any.whl (28.8 kB view details)

Uploaded Python 3

File details

Details for the file py_img_processor-1.1.0.tar.gz.

File metadata

  • Download URL: py_img_processor-1.1.0.tar.gz
  • Upload date:
  • Size: 23.1 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/5.1.0 CPython/3.9.19

File hashes

Hashes for py_img_processor-1.1.0.tar.gz
Algorithm Hash digest
SHA256 9172f977493eef3c9f01ee54fb0deb6e2c35a0c4cb583684610311a725ca69cf
MD5 fa12d6a2b41ea754751a17f569915516
BLAKE2b-256 9e0b2ecd9127df60760adec6ba91f56f7e14c605d4b1d193484cdcb99675c392

See more details on using hashes here.

File details

Details for the file py_img_processor-1.1.0-py3-none-any.whl.

File metadata

File hashes

Hashes for py_img_processor-1.1.0-py3-none-any.whl
Algorithm Hash digest
SHA256 3f3393f94496327b45f7cda3796c62f90d21045a939e5201026a262d337c0592
MD5 055891e88a45813ef52234b7d44facbe
BLAKE2b-256 27224ba99390cececb5ff789381e9fd6391e2aa6c38bf11a35df1213e92faacd

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page