django-imagekit/imagekit/processors.py
Matthew Tretter a71b3ca337 Removed Format processor
The Format processor was really a special case and didn't do any
processing at all. Instead, ImageSpec just knew to look for it and
responded accordingly. Therefore, it's been replaced with a `format`
property on ImageSpec. This warranted a deeper look at how the format
and extension were being deduced (when not explicitly provided); the
results are documented in-code, though the goal was "no surprises."
2011-09-20 21:34:00 -04:00

186 lines
6.6 KiB
Python

""" Imagekit Image "ImageProcessors"
A processor defines a set of class variables (optional) and a
class method named "process" which processes the supplied image using
the class properties as settings. The process method can be overridden as well allowing user to define their
own effects/processes entirely.
"""
from imagekit.lib import *
class ImageProcessor(object):
""" Base image processor class """
def process(self, img, fmt, obj, spec):
return img, fmt
class Adjust(ImageProcessor):
def __init__(self, color=1.0, brightness=1.0, contrast=1.0, sharpness=1.0):
self.color = color
self.brightness = brightness
self.contrast = contrast
self.sharpness = sharpness
def process(self, img, fmt, obj, spec):
img = img.convert('RGB')
for name in ['Color', 'Brightness', 'Contrast', 'Sharpness']:
factor = getattr(self, name.lower())
if factor != 1.0:
try:
img = getattr(ImageEnhance, name)(img).enhance(factor)
except ValueError:
pass
return img, fmt
class Reflection(ImageProcessor):
background_color = '#FFFFFF'
size = 0.0
opacity = 0.6
def process(self, img, fmt, obj, spec):
# convert bgcolor string to rgb value
background_color = ImageColor.getrgb(self.background_color)
# handle palleted images
img = img.convert('RGB')
# copy orignial image and flip the orientation
reflection = img.copy().transpose(Image.FLIP_TOP_BOTTOM)
# create a new image filled with the bgcolor the same size
background = Image.new("RGB", img.size, background_color)
# calculate our alpha mask
start = int(255 - (255 * self.opacity)) # The start of our gradient
steps = int(255 * self.size) # the number of intermedite values
increment = (255 - start) / float(steps)
mask = Image.new('L', (1, 255))
for y in range(255):
if y < steps:
val = int(y * increment + start)
else:
val = 255
mask.putpixel((0, y), val)
alpha_mask = mask.resize(img.size)
# merge the reflection onto our background color using the alpha mask
reflection = Image.composite(background, reflection, alpha_mask)
# crop the reflection
reflection_height = int(img.size[1] * self.size)
reflection = reflection.crop((0, 0, img.size[0], reflection_height))
# create new image sized to hold both the original image and the reflection
composite = Image.new("RGB", (img.size[0], img.size[1]+reflection_height), background_color)
# paste the orignal image and the reflection into the composite image
composite.paste(img, (0, 0))
composite.paste(reflection, (0, img.size[1]))
# Save the file as a JPEG
fmt = 'JPEG'
# return the image complete with reflection effect
return composite, fmt
class _Resize(ImageProcessor):
width = None
height = None
crop = False
upscale = False
def __init__(self, width=None, height=None, crop=None, upscale=None):
if width is not None:
self.width = width
if height is not None:
self.height = height
if crop is not None:
self.crop = crop
if upscale is not None:
self.upscale = upscale
def process(self, img, fmt, obj, spec):
cur_width, cur_height = img.size
if self.crop:
crop_horz = getattr(obj, obj._ik.crop_horz_field, 1)
crop_vert = getattr(obj, obj._ik.crop_vert_field, 1)
ratio = max(float(self.width)/cur_width, float(self.height)/cur_height)
resize_x, resize_y = ((cur_width * ratio), (cur_height * ratio))
crop_x, crop_y = (abs(self.width - resize_x), abs(self.height - resize_y))
x_diff, y_diff = (int(crop_x / 2), int(crop_y / 2))
box_left, box_right = {
0: (0, self.width),
1: (int(x_diff), int(x_diff + self.width)),
2: (int(crop_x), int(resize_x)),
}[crop_horz]
box_upper, box_lower = {
0: (0, self.height),
1: (int(y_diff), int(y_diff + self.height)),
2: (int(crop_y), int(resize_y)),
}[crop_vert]
box = (box_left, box_upper, box_right, box_lower)
img = img.resize((int(resize_x), int(resize_y)), Image.ANTIALIAS).crop(box)
else:
if not self.width is None and not self.height is None:
ratio = min(float(self.width)/cur_width,
float(self.height)/cur_height)
else:
if self.width is None:
ratio = float(self.height)/cur_height
else:
ratio = float(self.width)/cur_width
new_dimensions = (int(round(cur_width*ratio)),
int(round(cur_height*ratio)))
if new_dimensions[0] > cur_width or \
new_dimensions[1] > cur_height:
if not self.upscale:
return img, fmt
img = img.resize(new_dimensions, Image.ANTIALIAS)
return img, fmt
class Crop(_Resize):
def __init__(self, width=None, height=None):
super(Crop, self).__init__(width, height, crop=True)
class Fit(_Resize):
def __init__(self, width=None, height=None, upscale=None):
super(Fit, self).__init__(width, height, crop=False, upscale=upscale)
class Transpose(ImageProcessor):
""" Rotates or flips the image
Method should be one of the following strings:
- FLIP_LEFT RIGHT
- FLIP_TOP_BOTTOM
- ROTATE_90
- ROTATE_270
- ROTATE_180
- auto
If method is set to 'auto' the processor will attempt to rotate the image
according to the EXIF Orientation data.
"""
EXIF_ORIENTATION_STEPS = {
1: [],
2: ['FLIP_LEFT_RIGHT'],
3: ['ROTATE_180'],
4: ['FLIP_TOP_BOTTOM'],
5: ['ROTATE_270', 'FLIP_LEFT_RIGHT'],
6: ['ROTATE_270'],
7: ['ROTATE_90', 'FLIP_LEFT_RIGHT'],
8: ['ROTATE_90'],
}
method = 'auto'
def process(self, img, fmt, obj, spec):
if self.method == 'auto':
try:
orientation = Image.open(spec._get_imgfield(obj).file)._getexif()[0x0112]
ops = self.EXIF_ORIENTATION_STEPS[orientation]
except:
ops = []
else:
ops = [self.method]
for method in ops:
img = img.transpose(getattr(Image, method))
return img, fmt