matthiasgruber / YoloFastestV2-ncnn-Raspberry-Pi-4

YoloFastestV2 for a bare Raspberry Pi 4

Home Page:https://qengineering.eu/deep-learning-examples-on-raspberry-32-64-os.html

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YoloFastestV2 Raspberry Pi 4

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YoloFastest V2 with the ncnn framework.

License

A truly impressive YOLO family member. As long as the images are not too large and/or the objects are too small, very high frame rates are achieved with more than acceptable accuracy. Thanks dog-qiuqiu for all the hard work.

Special adapt for a bare Raspberry Pi 4, see Q-engineering deep learning examples


Benchmark.

Model size objects mAP Jetson Nano 1479 MHz RPi 4 64-OS 1950 MHz
NanoDet 320x320 80 20.6 26.2 FPS 13.0 FPS
NanoDet Plus 416x416 80 30.4 18.5 FPS 5.0 FPS
YoloFastestV2 352x352 80 24.1 38.4 FPS 18.8 FPS
YoloV2 416x416 20 19.2 10.1 FPS 3.0 FPS
YoloV3 352x352 tiny 20 16.6 17.7 FPS 4.4 FPS
YoloV4 416x416 tiny 80 21.7 16.1 FPS 3.4 FPS
YoloV4 608x608 full 80 45.3 1.3 FPS 0.2 FPS
YoloV5 640x640 small 80 22.5 5.0 FPS 1.6 FPS
YoloX 416x416 nano 80 25.8 22.6 FPS 7.0 FPS
YoloX 416x416 tiny 80 32.8 11.35 FPS 2.8 FPS
YoloX 640x640 small 80 40.5 3.65 FPS 0.9 FPS

Dependencies.

To run the application, you have to:

  • A raspberry Pi 4 with a 32 or 64-bit operating system. It can be the Raspberry 64-bit OS, or Ubuntu 18.04 / 20.04. Install 64-bit OS
  • The Tencent ncnn framework installed. Install ncnn
  • OpenCV 64 bit installed. Install OpenCV 4.5
  • Code::Blocks installed. ($ sudo apt-get install codeblocks)

Installing the app.

To extract and run the network in Code::Blocks
$ mkdir MyDir
$ cd MyDir
$ wget https://github.com/Qengineering/YoloFastestV2-ncnn-Raspberry-Pi-4/archive/refs/heads/main.zip
$ unzip -j master.zip
Remove master.zip, LICENSE and README.md as they are no longer needed.
$ rm master.zip
$ rm LICENSE
$ rm README.md

Your MyDir folder must now look like this:
James.mp4
parking.jpg
parking_tiny.jpg
YoloFastestV2.cpb
mainFV2.cpp
yolo-fastestv2.cpp
yolo-fastestv2.h
yolo-fastestv2-opt.bin
yolo-fastestv2-opt.param


Running the app.

To run the application load the project file YoloFastestV2.cbp in Code::Blocks. More info or
if you want to connect a camera to the app, follow the instructions at Hands-On.

Many thanks to dog-qiuqiu

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YoloFastestV2 for a bare Raspberry Pi 4

https://qengineering.eu/deep-learning-examples-on-raspberry-32-64-os.html

License:BSD 3-Clause "New" or "Revised" License


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