import sys
sys.path.append('.')
import unittest
from face_alignment.utils import *
import numpy as np
import torch
class Tester(unittest.TestCase):
def test_flip_is_label(self):
heatmaps = torch.from_numpy(np.random.randint(1, high=250, size=(68, 64, 64)).astype('float32'))
flipped_heatmaps = flip(flip(heatmaps.clone(), is_label=True), is_label=True)
assert np.allclose(heatmaps.numpy(), flipped_heatmaps.numpy())
def test_flip_is_image(self):
fake_image = torch.torch.rand(3, 256, 256)
fliped_fake_image = flip(flip(fake_image.clone()))
assert np.allclose(fake_image.numpy(), fliped_fake_image.numpy())
def test_getpreds(self):
pts = np.random.randint(1, high=63, size=(68, 2)).astype('float32')
heatmaps = np.zeros((68, 256, 256))
for i in range(68):
if pts[i, 0] > 0:
heatmaps[i] = draw_gaussian(heatmaps[i], pts[i], 2)
heatmaps = np.expand_dims(heatmaps, axis=0)
preds, _, _ = get_preds_fromhm(heatmaps)
assert np.allclose(pts, preds, atol=5)
def test_create_heatmaps(self):
reference_scale = 195
target_landmarks = torch.randint(0, 255, (1, 68, 2)).type(torch.float)
bb = create_bounding_box(target_landmarks)
centers = torch.stack([bb[:, 2] - (bb[:, 2] - bb[:, 0]) / 2.0, bb[:, 3] - (bb[:, 3] - bb[:, 1]) / 2.0], dim=1)
centers[:, 1] = centers[:, 1] - (bb[:, 3] - bb[:, 1]) * 0.12
scales = (bb[:, 2] - bb[:, 0] + bb[:, 3] - bb[:, 1]) / reference_scale
heatmaps = create_target_heatmap(target_landmarks, centers, scales)
preds = get_preds_fromhm(heatmaps.numpy(), centers.squeeze().numpy(), scales.squeeze().numpy())[1]
assert np.allclose(preds, target_landmarks, atol=5)
if __name__ == '__main__':
unittest.main()