Difference between revisions of "Deploying Deep Learning"
m |
m |
||
Line 34: | Line 34: | ||
</pre> | </pre> | ||
− | Next, let's classify an example image with the imagenet program, using Python | + | Next, let's classify an example image with the imagenet program, using Python.These images will then be easily viewable from your host device in the jetson-inference/data/images/test directory. |
<pre>$ ./imagenet.py images/strawberry_0.jpg images/test/strawberry.jpg | <pre>$ ./imagenet.py images/strawberry_0.jpg images/test/strawberry.jpg |
Revision as of 06:54, 14 October 2022
Contents
Linux Version
Ubuntu 18.04
L4T-R32.5.0
Build Deep Learning on Jeston
Reference : https://github.com/dusty-nv/jetson-inference/blob/L4T-R32.5.0/docs/building-repo-2.md
Build Jetson Inference
Here's a condensed form of the commands to build/install the project directly on your Jetson.
$ sudo apt-get update $ sudo apt-get install git cmake libpython3-dev python3-numpy $ git clone --recursive https://github.com/dusty-nv/jetson-inference $ cd jetson-inference $ mkdir build $ cd build $ cmake ../ $ make -j$(nproc) $ sudo make install $ sudo ldconfig
Classifying Images with ImageNet
Reference : https://github.com/dusty-nv/jetson-inference/blob/L4T-R32.5.0/docs/imagenet-console-2.md
Using the ImageNet Program on Jetson
After building the project, make sure your terminal is located in the aarch64/bin directory.
$ cd jetson-inference/build/aarch64/bin
Next, let's classify an example image with the imagenet program, using Python.These images will then be easily viewable from your host device in the jetson-inference/data/images/test directory.
$ ./imagenet.py images/strawberry_0.jpg images/test/strawberry.jpg
Locating Objects with DetectNet
Reference : https://github.com/dusty-nv/jetson-inference/blob/L4T-R32.5.0/docs/detectnet-console-2.md
Detecting Objects from Images
Make sure your terminal is located in the aarch64/bin directory.
$ cd jetson-inference/build/aarch64/bin
Here are some examples of detecting pedestrians in images with the default SSD-Mobilenet-v2 model.
$ ./detectnet.py --network=ssd-mobilenet-v2 images/peds_0.jpg images/test/person.jpg
Processing Video Files
You can also process videos from disk. There are some test videos found on your Jetson under /usr/share/visionworks/sources/data .
./detectnet.py /usr/share/visionworks/sources/data/pedestrians.mp4 images/test/pedestrians_identify.mp4