本项目forked from livz/cloacked-pixel
我不是原作者!
本项目旨在修复在我虚拟Virtualenv环境中的Python 2.7中运行出错的问题,并顺便支持了下Python 3。
Platform independent Python tool to implement LSB image steganography and a basic detection technique. Features:
- Encrypt data before insertion.
- Embed within LSBs.
- Extract hidden data.
- Basic analysis of images to detect LSB steganography.
How to use:
$ python lsb.py
LSB steganogprahy. Hide files within least significant bits of images.
Usage:
lsb.py hide <img_file> <payload_file> <password>
lsb.py extract <stego_file> <out_file> <password>
lsb.py analyse <stego_file>
All data is encrypted before being embedded into a picture. Encryption is not optional. Two consequences of this are that:
- The payload will be slightly larger.
- The encrypted payload will have a high entropy and will be similar to random data. This is why the frequency of 0s and 1s in the LSB position should be the same – 0.5. In many cases, real images don’t have this propriety and we’ll be able to distinguish unaltered images from the ones with embedded data. More below.
Encrypt and hide an archive:
$ python lsb.py hide samples/orig.jpg samples/secret.zip p@$5w0rD
[*] Input image size: 640x425 pixels.
[*] Usable payload size: 99.61 KB.
[+] Payload size: 74.636 KB
[+] Encrypted payload size: 74.676 KB
[+] samples/secret.zip embedded successfully!
Original image:
Image with 75k archive embedded:
$ python lsb.py extract samples/orig.jpg-stego.png out p@$5w0rD
[+] Image size: 640x425 pixels.
[+] Written extracted data to out.
$ file out
out: Zip archive data, at least v1.0 to extract
A simple way to detect tampering with least significant bits of images is based on the observation above – regions within tampered images will have the average of LSBs around 0.5, because the LSBs contain encrypted data, which is similar in structure with random data. So in order to analyse an image, we split it into blocks, and for each block calculate the average of LSBs. To analyse a file, we use the following syntax:
$ python lsb.py analyse <stego_file>
Example
Now let’s analyse the original:
$ python lsb.py analyse castle.jpg
… and now the one containing our payload:
$ python lsb.py analyse castle.jpg-stego.png
- It is entirely possible to have images with the mean of LSBs already very close to 0.5. In this case, this method will produce false positives.
- More elaborate theoretical methods also exist, mostly based on statistics. However, false positives and false negatives cannot be completely eliminated.