import math

import pytest
from PIL import Image, ImageTransform

from .helper import assert_image_equal, assert_image_similar, hopper


class TestImageTransform:
    def test_sanity(self):
        im = Image.new("L", (100, 100))

        seq = tuple(range(10))

        transform = ImageTransform.AffineTransform(seq[:6])
        im.transform((100, 100), transform)
        transform = ImageTransform.ExtentTransform(seq[:4])
        im.transform((100, 100), transform)
        transform = ImageTransform.QuadTransform(seq[:8])
        im.transform((100, 100), transform)
        transform = ImageTransform.MeshTransform([(seq[:4], seq[:8])])
        im.transform((100, 100), transform)

    def test_info(self):
        comment = b"File written by Adobe Photoshop\xa8 4.0"

        with Image.open("Tests/images/hopper.gif") as im:
            assert im.info["comment"] == comment

            transform = ImageTransform.ExtentTransform((0, 0, 0, 0))
            new_im = im.transform((100, 100), transform)
        assert new_im.info["comment"] == comment

    def test_extent(self):
        im = hopper("RGB")
        (w, h) = im.size
        # fmt: off
        transformed = im.transform(im.size, Image.EXTENT,
                                   (0, 0,
                                    w//2, h//2),  # ul -> lr
                                   Image.BILINEAR)
        # fmt: on

        scaled = im.resize((w * 2, h * 2), Image.BILINEAR).crop((0, 0, w, h))

        # undone -- precision?
        assert_image_similar(transformed, scaled, 23)

    def test_quad(self):
        # one simple quad transform, equivalent to scale & crop upper left quad
        im = hopper("RGB")
        (w, h) = im.size
        # fmt: off
        transformed = im.transform(im.size, Image.QUAD,
                                   (0, 0, 0, h//2,
                                    # ul -> ccw around quad:
                                    w//2, h//2, w//2, 0),
                                   Image.BILINEAR)
        # fmt: on

        scaled = im.transform(
            (w, h), Image.AFFINE, (0.5, 0, 0, 0, 0.5, 0), Image.BILINEAR
        )

        assert_image_equal(transformed, scaled)

    def test_fill(self):
        for mode, pixel in [
            ["RGB", (255, 0, 0)],
            ["RGBA", (255, 0, 0, 255)],
            ["LA", (76, 0)],
        ]:
            im = hopper(mode)
            (w, h) = im.size
            transformed = im.transform(
                im.size,
                Image.EXTENT,
                (0, 0, w * 2, h * 2),
                Image.BILINEAR,
                fillcolor="red",
            )

            assert transformed.getpixel((w - 1, h - 1)) == pixel

    def test_mesh(self):
        # this should be a checkerboard of halfsized hoppers in ul, lr
        im = hopper("RGBA")
        (w, h) = im.size
        # fmt: off
        transformed = im.transform(im.size, Image.MESH,
                                   [((0, 0, w//2, h//2),  # box
                                    (0, 0, 0, h,
                                     w, h, w, 0)),  # ul -> ccw around quad
                                    ((w//2, h//2, w, h),  # box
                                    (0, 0, 0, h,
                                     w, h, w, 0))],  # ul -> ccw around quad
                                   Image.BILINEAR)
        # fmt: on

        scaled = im.transform(
            (w // 2, h // 2), Image.AFFINE, (2, 0, 0, 0, 2, 0), Image.BILINEAR
        )

        checker = Image.new("RGBA", im.size)
        checker.paste(scaled, (0, 0))
        checker.paste(scaled, (w // 2, h // 2))

        assert_image_equal(transformed, checker)

        # now, check to see that the extra area is (0, 0, 0, 0)
        blank = Image.new("RGBA", (w // 2, h // 2), (0, 0, 0, 0))

        assert_image_equal(blank, transformed.crop((w // 2, 0, w, h // 2)))
        assert_image_equal(blank, transformed.crop((0, h // 2, w // 2, h)))

    def _test_alpha_premult(self, op):
        # create image with half white, half black,
        # with the black half transparent.
        # do op,
        # there should be no darkness in the white section.
        im = Image.new("RGBA", (10, 10), (0, 0, 0, 0))
        im2 = Image.new("RGBA", (5, 10), (255, 255, 255, 255))
        im.paste(im2, (0, 0))

        im = op(im, (40, 10))
        im_background = Image.new("RGB", (40, 10), (255, 255, 255))
        im_background.paste(im, (0, 0), im)

        hist = im_background.histogram()
        assert 40 * 10 == hist[-1]

    def test_alpha_premult_resize(self):
        def op(im, sz):
            return im.resize(sz, Image.BILINEAR)

        self._test_alpha_premult(op)

    def test_alpha_premult_transform(self):
        def op(im, sz):
            (w, h) = im.size
            return im.transform(sz, Image.EXTENT, (0, 0, w, h), Image.BILINEAR)

        self._test_alpha_premult(op)

    def test_blank_fill(self):
        # attempting to hit
        # https://github.com/python-pillow/Pillow/issues/254 reported
        #
        # issue is that transforms with transparent overflow area
        # contained junk from previous images, especially on systems with
        # constrained memory. So, attempt to fill up memory with a
        # pattern, free it, and then run the mesh test again. Using a 1Mp
        # image with 4 bands, for 4 megs of data allocated, x 64. OMM (64
        # bit 12.04 VM with 512 megs available, this fails with Pillow <
        # a0eaf06cc5f62a6fb6de556989ac1014ff3348ea
        #
        # Running by default, but I'd totally understand not doing it in
        # the future

        pattern = [Image.new("RGBA", (1024, 1024), (a, a, a, a)) for a in range(1, 65)]

        # Yeah. Watch some JIT optimize this out.
        pattern = None  # noqa: F841

        self.test_mesh()

    def test_missing_method_data(self):
        with hopper() as im:
            with pytest.raises(ValueError):
                im.transform((100, 100), None)

    def test_unknown_resampling_filter(self):
        with hopper() as im:
            (w, h) = im.size
            for resample in (Image.BOX, "unknown"):
                with pytest.raises(ValueError):
                    im.transform((100, 100), Image.EXTENT, (0, 0, w, h), resample)


class TestImageTransformAffine:
    transform = Image.AFFINE

    def _test_image(self):
        im = hopper("RGB")
        return im.crop((10, 20, im.width - 10, im.height - 20))

    def _test_rotate(self, deg, transpose):
        im = self._test_image()

        angle = -math.radians(deg)
        matrix = [
            round(math.cos(angle), 15),
            round(math.sin(angle), 15),
            0.0,
            round(-math.sin(angle), 15),
            round(math.cos(angle), 15),
            0.0,
            0,
            0,
        ]
        matrix[2] = (1 - matrix[0] - matrix[1]) * im.width / 2
        matrix[5] = (1 - matrix[3] - matrix[4]) * im.height / 2

        if transpose is not None:
            transposed = im.transpose(transpose)
        else:
            transposed = im

        for resample in [Image.NEAREST, Image.BILINEAR, Image.BICUBIC]:
            transformed = im.transform(
                transposed.size, self.transform, matrix, resample
            )
            assert_image_equal(transposed, transformed)

    def test_rotate_0_deg(self):
        self._test_rotate(0, None)

    def test_rotate_90_deg(self):
        self._test_rotate(90, Image.ROTATE_90)

    def test_rotate_180_deg(self):
        self._test_rotate(180, Image.ROTATE_180)

    def test_rotate_270_deg(self):
        self._test_rotate(270, Image.ROTATE_270)

    def _test_resize(self, scale, epsilonscale):
        im = self._test_image()

        size_up = int(round(im.width * scale)), int(round(im.height * scale))
        matrix_up = [1 / scale, 0, 0, 0, 1 / scale, 0, 0, 0]
        matrix_down = [scale, 0, 0, 0, scale, 0, 0, 0]

        for resample, epsilon in [
            (Image.NEAREST, 0),
            (Image.BILINEAR, 2),
            (Image.BICUBIC, 1),
        ]:
            transformed = im.transform(size_up, self.transform, matrix_up, resample)
            transformed = transformed.transform(
                im.size, self.transform, matrix_down, resample
            )
            assert_image_similar(transformed, im, epsilon * epsilonscale)

    def test_resize_1_1x(self):
        self._test_resize(1.1, 6.9)

    def test_resize_1_5x(self):
        self._test_resize(1.5, 5.5)

    def test_resize_2_0x(self):
        self._test_resize(2.0, 5.5)

    def test_resize_2_3x(self):
        self._test_resize(2.3, 3.7)

    def test_resize_2_5x(self):
        self._test_resize(2.5, 3.7)

    def _test_translate(self, x, y, epsilonscale):
        im = self._test_image()

        size_up = int(round(im.width + x)), int(round(im.height + y))
        matrix_up = [1, 0, -x, 0, 1, -y, 0, 0]
        matrix_down = [1, 0, x, 0, 1, y, 0, 0]

        for resample, epsilon in [
            (Image.NEAREST, 0),
            (Image.BILINEAR, 1.5),
            (Image.BICUBIC, 1),
        ]:
            transformed = im.transform(size_up, self.transform, matrix_up, resample)
            transformed = transformed.transform(
                im.size, self.transform, matrix_down, resample
            )
            assert_image_similar(transformed, im, epsilon * epsilonscale)

    def test_translate_0_1(self):
        self._test_translate(0.1, 0, 3.7)

    def test_translate_0_6(self):
        self._test_translate(0.6, 0, 9.1)

    def test_translate_50(self):
        self._test_translate(50, 50, 0)


class TestImageTransformPerspective(TestImageTransformAffine):
    # Repeat all tests for AFFINE transformations with PERSPECTIVE
    transform = Image.PERSPECTIVE