A library for getting perceptual hash values of images.
Thanks to Dr. Neal Krawetz for the outlines of the Average-Mean and DCT-Mean perceptual hash algorithms:
http://www.hackerfactor.com/blog/?/archives/432-Looks-Like-It.html (Accessed August 2014)
Thanks to Emil Mikulic for the 2D Discrete Cosine Transform implementation in C, ported to Rust in src/dct.rs
:
http://unix4lyfe.org/dct/ (Implementation: http://unix4lyfe.org/dct/listing2.c) (Accessed August 2014)
Unfortunately, the AAN algorithm that provides O(n log n)
performance didn't seem to be viable for arbitrary-length input vectors without massive code duplicaton. This shouldn't be a problem as hashing an image is still very fast on modern hardware. Bottlenecks are more likely in I/O or decoding the images from files.
Add img_hash
to your Cargo.toml
:
[dependencies.img_hash]
git = "https://github.com/cybergeek94/img_hash"
Example program:
```rust extern crate image; extern crate img_hash;
use self::image; use self::img_hash::ImageHash;
fn main() { let image1 = image::open(&Path::new("image1.png").unwrap()).unwrap(); let image2 = image::open(&Path::new("image2.png").unwrap()).unwrap();
// Second value is `hash_size`. The total bits in the hash will be = `hash_size` * `hash_size`.
// Third value is `true` to use a fast hash, or `false` for a slower, more accurate DCT hash. DCT is recommended.
let hash1 = ImageHash::hash(&image1, 8, false);
let hash2 = ImageHash::hash(&image2, 8, false);
println!("Image1 hash: {}", hash1.to_base64());
println!("Image2 hash: {}", hash2.to_base64());
println!("% Difference: {}", hash1.dist_ratio(&hash2));
} ```