alianse777 / darknet-rust

A Rust wrapper for Darknet, an open source neural network framework written in C and CUDA.
http://pjreddie.com/darknet/
MIT License
33 stars 8 forks source link

darknet-rust: A Rust bindings for AlexeyAB's Darknet

Crates.io

The crate is a Rust wrapper for AlexeyAB's Darknet.

It provides the following features:

Minimal rustc version: 1.43.0

Version 0.4 changes:

Examples

The tiny_yolov3_inference example automatically downloads the YOLOv3 tiny weights, and produces inference results in output directory.

cargo run --release --example tiny_yolov3_inference

The run_inference example is an utility program that you can test a combination of model configs and weights on image files. For example, you can test the YOLOv4 mode.

cargo run --release --example run_inference -- \
    --label-file darknet/data/coco.names \
    --model-cfg darknet/cfg/yolov4.cfg \
    --weights yolov4.weights \
    darknet/data/*.jpg

Read the example code in examples/ to understand the actual usage. More model configs and weights can be found here: (https://pjreddie.com/darknet/yolo/).

Usage

API documentation

If you are using version 0.1, consider migrating to 0.3 or newer as several critical bugs and memory leakages were fixed.

Build

Terms used:

darknet-sys, darknet = Rust wrappers

libdarknet = C/C++ darknet implementation

By default, darknet will compile and link libdarknet statically. You can control the feature flags to change the behavior.

Before running tests:

git submodule init && git submodule update --recursive

Cargo Features

Method 1: Download and build from source (default)

[dependencies]
darknet = "0.4"

You can optionally enable CUDA and OpenCV features. Please read Build with CUDA for more info.

[dependencies]
darknet = {version = "0.4", features = ["enable-cuda", "enable-opencv"] }

Method 2: Build with custom source

If you want to build with custom libdarknet source, point DARKNET_SRC environment variable to your source path. It should contain CMakeLists.txt.

export DARKNET_SRC=/path/to/your/darknet/repo

Method 3: Link to libdarknet dynamic library

With runtime feature, darknet-sys will not compile libdarknet source code and instead links to libdarknet dynamically. If you are using Linux, make sure libdark.so is installed on your system.

[dependencies]
darknet = {version = "0.4", features = ["runtime"] }

Re-generate bindings

With buildtime-bindgen feature, darknet-sys re-generates bindings from headers. The option is necessary only when darkent is updated or modified.

[dependencies]
darknet = {version = "0.4", features = ["buildtime-bindgen"] }

If you want to use your (possibly modified) header files, point DARKNET_INCLUDE_PATH environment variable to your header dir.

Build with CUDA

Please check that both CUDA 10.x and cuDNN 7.x are installed.

Darknet reads CUDA_PATH environment variable (which defaults to /opt/cuda if not set) and assumes it can find cuda libraries at ${CUDA_PATH}/lib64.

export CUDA_PATH=/usr/local/cuda-10.1
[dependencies]
darknet = {version = "0.4", features = ["enable-cuda", "enable-opencv"] }

You can also set CUDA_ARCHITECTURES which is passed to libdarknet's cmake. It defaults to Auto, which auto-detects GPU architecture based on card present in the system during build.

License

The crate is licensed under MIT.

Credits

Huge thanks to all contributors!