This is a repository for FPGA-based neural network inference. The design won first place in the 57th IEEE/ACM Design Automation Conference System Design Contest (DAC-SDC).Designed by:
BJUT_runner Group, Beijing University of Technology
Kang ZHAN, Junnan GUO, Bingyan SONG, Wenbo ZHANG*, Zhenshan BAO*
The final rankings are published at https://dac-sdc-2020.groups.et.byu.net/doku.php?id=results
- train: Contains the training script.
- model: Contains the pre-trained weights, model script and test script.
- quantization: Contains the python script which process the model generation header files to be used in Vivado HLS.
- hls: Contains the Vivado HLS implementation of Ultra_net.
- vivado: Contains the Vivado Block Design files.
- deploy: A Jupyter notebook showing how to use the FPGA based neural network to perform object detection on ultra96-PYNQ.
- cd train/yolov3/
- python3 train.py --multi-scale --img-size 320 --multi-scale --batch-size 32
- cd quantization/
- python3 torch_export.py
- python3 ultranet_param_gen.py