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sudo apt install libopencv-dev python3-opencv
NPU Demo is not installed on the board by default. You need to download it from github first
1) Clone to the board through the git command.
cd {workspace} git clone --recursive https://github.com/khadas/aml_npu_demo_binaries
2) Or download the compressed package directly, and then unzip it to the board.
There are three directories in NPU Demo:
$ cd {workspace}/aml_npu_demo_binaries/inceptionv3 $ ls dog_299x299.jpg goldfish_299x299.jpg imagenet_slim_labels.txt VIM3 VIM3L
If your board is VIM3, enter the VIM3 directory, if it is VIM3L, then enter the VIM3L directory. Here is VIM3 as an example.
1 $ cd {workspace}/aml_npu_demo_binaries/inceptionv3/VIM3 2 $ inceptionv3 inception_v3.nb run.sh 1 $ cd {workspace}/aml_npu_demo_binaries/inceptionv3/VIM3 2 $ ./run.sh 3 Create Neural Network: 59ms or 59022us 4 Verify... 5 Verify Graph: 0ms or 739us 6 Start run graph [1] times... 7 Run the 1 time: 20.00ms or 20497.00us 8 vxProcessGraph execution time: 9 Total 20.00ms or 20540.00us 10 Average 20.54ms or 20540.00us 11 --- Top5 --- 12 2: 0.833984 13 795: 0.009102
14 974: 0.003592 15 408: 0.002207 16 393: 0.002111
By querying imagenet_slim_labels.txt, the result is a goldfish, which is also correctly identified.You can use the method above to identify other images.
The application of the yolo series model is divided into two parts: camera dynamic recognition and image recognition.
The yolo series models need to install the library into the system. Whether it is using the camera to dynamically recognize or recognize pictures, they share the same library.
1) Install
cd {workspace}/aml_npu_demo_binaries/detect_demo_picture sudo ./INSTALL
2) Uninstall
cd {workspace}/aml_npu_demo_binaries/detect_demo_picture sudo ./UNINSTALL
The type parameter is an input parameter that must be selected whether it is to use camera dynamic recognition or to recognize pictures. This parameter is mainly used to specify the running yolo series model.