• 通过python将图片生成字符画


    基础知识:

    1.python基础知识   快速学习链接:https://www.shiyanlou.com/courses/214

    2.linux命令行操作   快速学习链接:https://www.shiyanlou.com/courses/1

    3.pillow库的使用     快速学习链接:http://pillow.readthedocs.io/en/latest/index.html(英文) http://www.cnblogs.com/apexchu/p/4231041.html(中文)

    4.argparse库的使用 快速学习链接:http://blog.ixxoo.me/argparse.html

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    pillow库:

    导入Image类:     from PIL import Image

      在python解释器下

      >>>from PIL import Image

           >>>help(Image)

      查看帮助文档    

      Image的文件位置 /usr/lib64/python2.7/site-packages/PIL/Image.py

    使用Image类

    To load an image from a file, use the open() function in the Image module:

    从文件里加载图片,使用Image模块里的open()函数:

    >>> from PIL import Image
    >>> im = Image.open("lena.ppm")
    

    If successful, this function returns an Image object.       如果成功,这个函数返回一个Image对象。

    If the file cannot be opened, an IOError exception is raised.  如果失败,引发一个IOError.

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    PIL.Image.open(fp, mode='r')

    Opens and identifies the given image file.

    This is a lazy operation; this function identifies the file, but the file remains open and the actual image data is not read from the file until you try to process the data (or call the load() method). See new().

    Parameters:
    • fp – A filename (string), pathlib.Path object or a file object. The file object must implement read(), seek(), and tell() methods, and be opened in binary mode.
    • mode – The mode. If given, this argument must be “r”.
    Returns:

    An Image object.

    Raises:

    IOError – If the file cannot be found, or the image cannot be opened and identified.

    ---------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------

    Image.getpixel(xy)

    Returns the pixel value at a given position.

    Parameters: xy – The coordinate, given as (x, y).
    Returns: The pixel value. If the image is a multi-layer image, this method returns a tuple.

    通过给的位置值返回像素值。

    >>> from PIL import Image
    >>> im = Image.open('cat.jpg')
    >>> im.getpixel((1,2))
    (107, 81, 22)        返回了该坐标对应的rgb像素三元祖

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    Image.resize(size, resample=0)

    Returns a resized copy of this image.

    Parameters:
    • size – The requested size in pixels, as a 2-tuple: (width, height).
    • resample – An optional resampling filter. This can be one of PIL.Image.NEAREST, PIL.Image.BOX, PIL.Image.BILINEAR, PIL.Image.HAMMING, PIL.Image.BICUBIC or PIL.Image.LANCZOS. If omitted, or if the image has mode “1” or “P”, it is set PIL.Image.NEAREST. See: Filters.
    Returns:

    An Image object.

    重设图片的大小,返回一个Image对象。

    5种resample: PIL.Image.NEAREST, PIL.Image.BOX, PIL.Image.BILINEAR, PIL.Image.HAMMING, PIL.Image.BICUBIC or PIL.Image.LANCZOS

     

    >>> im = Image.open(IMG)  

    >>> im = im.resize((WIDTH,HEIGHT), Image.NEAREST)

     

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    NEAREST
    Pick one nearest pixel from the input image. Ignore all other input pixels.
    BOX

    Each pixel of source image contributes to one pixel of the destination image with identical weights. For upscaling is equivalent of NEAREST. This filter can only be used with the resize() and thumbnail() methods.

    New in version 3.4.0.

    BILINEAR
    For resize calculate the output pixel value using linear interpolation on all pixels that may contribute to the output value. For other transformations linear interpolation over a 2x2 environment in the input image is used.
    HAMMING

    Produces more sharp image than BILINEAR, doesn’t have dislocations on local level like with BOX. This filter can only be used with the resize() and thumbnail() methods.

    New in version 3.4.0.

    BICUBIC
    For resize calculate the output pixel value using cubic interpolation on all pixels that may contribute to the output value. For other transformations cubic interpolation over a 4x4 environment in the input image is used.
    LANCZOS

    Calculate the output pixel value using a high-quality Lanczos filter (a truncated sinc) on all pixels that may contribute to the output value. This filter can only be used with the resize() and thumbnail() methods.

    New in version 1.1.3.

    Filters comparison table

    FilterDownscaling qualityUpscaling qualityPerformance
    NEAREST     ⭐⭐⭐⭐⭐
    BOX   ⭐⭐⭐⭐
    BILINEAR ⭐⭐⭐
    HAMMING ⭐⭐   ⭐⭐⭐
    BICUBIC ⭐⭐⭐ ⭐⭐⭐ ⭐⭐
    LANCZOS ⭐⭐⭐⭐ ⭐⭐⭐⭐

    ----------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------

    Image.load()

    Allocates storage for the image and loads the pixel data. In normal cases, you don’t need to call this method, since the Image class automatically loads an opened image when it is accessed for the first time. This method will close the file associated with the image.

    Returns: An image access object.
    Return type: PixelAccess Class or PIL.PyAccess

    >>> im = im.load()
    >>> im
    <PixelAccess object at 0x7f20ebdeb990>
    >>> print im[1,2]
    (107, 81, 22)

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    Image.convert(mode=None, matrix=None, dither=None, palette=0, colors=256)

    Returns a converted copy of this image. For the “P” mode, this method translates pixels through the palette. If mode is omitted, a mode is chosen so that all information in the image and the palette can be represented without a palette.

    The current version supports all possible conversions between “L”, “RGB” and “CMYK.” The matrix argument only supports “L” and “RGB”.

    When translating a color image to black and white (mode “L”), the library uses the ITU-R 601-2 luma transform:

    L = R * 299/1000 + G * 587/1000 + B * 114/1000
    

    The default method of converting a greyscale (“L”) or “RGB” image into a bilevel (mode “1”) image uses Floyd-Steinberg dither to approximate the original image luminosity levels. If dither is NONE, all non-zero values are set to 255 (white). To use other thresholds, use the point() method.

    Parameters:
    • mode – The requested mode. See: Modes.
    • matrix – An optional conversion matrix. If given, this should be 4- or 12-tuple containing floating point values.
    • dither – Dithering method, used when converting from mode “RGB” to “P” or from “RGB” or “L” to “1”. Available methods are NONE or FLOYDSTEINBERG (default).
    • palette – Palette to use when converting from mode “RGB” to “P”. Available palettes are WEB or ADAPTIVE.
    • colors – Number of colors to use for the ADAPTIVE palette. Defaults to 256.
    Return type:

    Image

    Returns:

    An Image object.

    The following example converts an RGB image (linearly calibrated according to ITU-R 709, using the D65 luminant) to the CIE XYZ color space:

    rgb2xyz = (
        0.412453, 0.357580, 0.180423, 0,
        0.212671, 0.715160, 0.072169, 0,
        0.019334, 0.119193, 0.950227, 0 )
    out = im.convert("RGB", rgb2xyz)
    

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  • 原文地址:https://www.cnblogs.com/xautxuqiang/p/5974785.html
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