Chien-Hsiang Huang, Hung-Yu Wu, Youn-Long Lin
We propose a new convolution neural network called HarDNet-MSEG for polyp segmentation. It achieves SOTA in both accuracy and inference speed on five popular datasets. For Kvasir-SEG, HarDNet-MSEG delivers 0.904 mean Dice running at 86.7 FPS on a GeForce RTX 2080 Ti GPU. It consists of a backbone and a decoder. The backbone is a low memory traffic CNN called HarDNet68, which has been successfully applied to various CV tasks including image classification, object detection, multi-object tracking and semantic segmentation, etc. The decoder part is inspired by the Cascaded Partial Decoder, known for fast and accurate salient object detection. We have evaluated HarDNet-MSEG using those five popular datasets. The code and all experiment details are available at Github. https://github.com/james128333/HarDNet-MSEG
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Medical Image Segmentation | Kvasir-SEG | Average MAE | 0.025 | HarDNet-MSEG |
| Medical Image Segmentation | Kvasir-SEG | FPS | 116 | HarDNet-MSEG |
| Medical Image Segmentation | Kvasir-SEG | S-Measure | 0.923 | HarDNet-MSEG |
| Medical Image Segmentation | Kvasir-SEG | mIoU | 0.857 | HarDNet-MSEG |
| Medical Image Segmentation | Kvasir-SEG | max E-Measure | 0.958 | HarDNet-MSEG |
| Medical Image Segmentation | Kvasir-SEG | mean Dice | 0.912 | HarDNet-MSEG |
| Medical Image Segmentation | ETIS-LARIBPOLYPDB | mIoU | 0.613 | HarDNet-MSEG |
| Medical Image Segmentation | ETIS-LARIBPOLYPDB | mean Dice | 0.677 | HarDNet-MSEG |
| Medical Image Segmentation | CVC-ColonDB | mIoU | 0.66 | HarDNet-MSEG |
| Medical Image Segmentation | CVC-ColonDB | mean Dice | 0.731 | HarDNet-MSEG |
| Medical Image Segmentation | CVC-ClinicDB | mean Dice | 0.932 | HarDNet-MSEG |