Summary |
"We will demonstrate the following three technical achievements of our joint project:
1. Deployment of HarDNet on GPU (power consumption: 200 Watts)
2. Deployment of HarDNet on FPGA (power consumption: several tens of Watts) [winning 2nd place in the FPGA track, LPCVC 2020]
3. Deployment of HarDNet on lightweight edge devices such as Raspberry Pi (power consumption: single-digit, 10 Watts) [winning 3rd place in the DSP track4th place in the CPU track, LPCVC 2020]" |
Scientific Breakthrough |
Being performed on various computing platforms such as GPU, FPGAAI edge device, HarDNet can consistently achieve highly competitive performance in terms of speedaccuracy. Especially, for the application of real-time semantic segmentation, HarDNet is ranked first around the worldhas been recognized as "state of the art" (SOTA). Not only have we already deployed HarDNet on various platforms with different power budgets, but also we have been applying HarDNetits variants on a variety of computer vision tasks besides those already done, including our LPCVC'20 winning projects. |