Python - Bilinear image interpolation

I'm trying to write a Python function that takes an image as input and performs bilinear image interpolation to resize an image. I've had reasonable success, since the image does get resized, but the process introduces black holes in the output which I can't seem to figure out how or why they're there.

The questions I've seen haven't helped me much (Simple, efficient bilinear interpolation of images in numpy and python)

The code:

``````def img_interp(img, scale = 1.5):

angle_rad = pi * angle_deg / 180.0;

rows, cols, colours = img.shape

n_rows = int(round(rows * scale, 0))
n_cols = int(round(cols * scale, 0))

enlarged_img = np.ones((n_rows, n_cols, colours))

for i in range(n_rows - 1):
for j in range(n_cols - 1):
x_coord = j / scale
y_coord = i / scale

xc = int(ceil(x_coord))
xf = int(floor(x_coord))
yc = int(ceil(y_coord))
yf = int(floor(y_coord))

W_xc = xc - x_coord
W_xf = x_coord - xf
W_yc = yc - y_coord
W_yf = y_coord - yf

enlarged_img[i, j, :] = 255 - np.around(W_xc * (W_yc * img[yf, xf, :] + W_yf * img[yc, xf, :]) + W_xf * (W_yc * img[yf, xc, :] + W_yf * img[yc, xc, :]), 0)

return enlarged_img
``````

The image results: https://www.dropbox.com/s/ji0frbzcuyxd11u/results.png?m=

There are probably better ways to do this than what I've done, but I would really appreciate it if someone could have a look and tell me what I did wrong or what I still need to do. Thanks!