I'm trying to code LSB steganography method via numpy arrays. I got code which makes the bool index mask, wich will give those bits of red channel, which need to xor with 1.

```
import numpy as np
from scipy.misc import imread
import matplotlib.pyplot as plt
message = 'Hello, World!'
message_bits = np.array(map(bool, map(int, (''.join(map('{:b}'.format, bytearray(message)))))), dtype=np.bool)
img = imread('screenshot.png')
xor_mask = np.zeros_like(img, dtype=np.bool)
ind = 0
for j, line in enumerate(xor_mask):
for i, column in enumerate(line):
if ind < len(message_bits):
xor_mask[j, i, 0] = message_bits[ind]
ind += 1
else:
break
else:
continue
break
img[xor_mask] ^= 1
```

Is there more compact way to construct the xor_mask? Maybe through numpy broadcast

UPD: Reduced my for-loop to this:

```
for j, line in enumerate(xor_mask):
if ind < len(message_bits):
xor_mask[j, :, 0] = message_bits[ind]
ind += len(xor_mask[j])
else:
break
```