Follow Along!
Follow along: Dashcam Detection Example
The program launching process along with parameter settings are all simplified and set up on the Jupyter Notebook Environment.
- Open the tao_facedetect.ipynb jupyter notebook
- Initialize your output stream, and your path, and import in the Image library
- Check all the available room and trail pictures within the system
- Pick one of the image with (humans) and initialize the image/ output name.
- Execute Detect on the chosen picture
- Display the result
(The Jetson Board used for these examples are => Jetson Nano)
02_10-1. tao_facedetect.ipynb
- Running the cell codeCtrl + Enter
Initialize your output stream, and your path, and import in the Image library
from IPython.display import Image
%env DISPLAY=:0
%env PROGRAM_PATH=/home/zeta/jetson-inference/build/aarch64/bin
%env INPUT_PATH=/home/zeta/jetson-inference/build/aarch64/bin/images
%env OUTPUT_PATH=/home/zeta/jetson-inference/build/aarch64/bin/images/test
input_path='/home/zeta/jetson-inference/build/aarch64/bin/images'
output_path='/home/zeta/jetson-inference/build/aarch64/bin/images/test'
Pick one of the image with human(s) and initialize the image/ output name.
image_name = 'ChangeMe' output_name = 'face_result.jpg' %env IMAGE_NAME = $image_name %env OUTPUT_NAME = $output_name Image(filename=input_path+'/'+image_name)
Guess the pose!
%%capture !python3 $PROGRAM_PATH/detectnet.py --network=facedetect $INPUT_PATH/$IMAGE_NAME $OUTPUT_PATH/$OUTPUT_NAME