Ong Ee Ping, Tang Ka Yin Christina, Lee Beng-Hai
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:1654-1657. doi: 10.1109/EMBC44109.2020.9176299.
This paper proposes a deep learning image segmentation method for the purpose of segmenting wound-bed regions from the background. Our contributions include proposing a fast and efficient convolutional neural networks (CNN)-based segmentation network that has much smaller number of parameters than U-Net (only 18.1% that of U-Net, and hence the trained model has much smaller file size as well). In addition, the training time of our proposed segmentation network (for the base model) is only about 40.2% of that needed to train a U-Net. Furthermore, our proposed base model also achieved better performance compared to that of the U-Net in terms of both pixel accuracy and intersection-over-union segmentation evaluation metrics. We also showed that because of the small footprint of our efficient CNN-based segmentation model, it could be deployed to run in real-time on portable and mobile devices such as an iPad.
本文提出了一种深度学习图像分割方法,用于从背景中分割伤口床区域。我们的贡献包括提出一种基于卷积神经网络(CNN)的快速高效分割网络,其参数数量比U-Net少得多(仅为U-Net的18.1%,因此训练模型的文件大小也小得多)。此外,我们提出的分割网络(基础模型)的训练时间仅为训练U-Net所需时间的约40.2%。此外,在像素精度和交并比分割评估指标方面,我们提出的基础模型与U-Net相比也取得了更好的性能。我们还表明,由于我们基于高效CNN的分割模型占用空间小,它可以部署在iPad等便携式和移动设备上实时运行。