College of Electrical and Information Engineering, Hunan University, Changsha, 410082, China; National Engineering Laboratory for Robot Vision Perception and Control Technologies, Hunan Key Laboratory of Intelligent Robot Technology in Electronic Manufacturing, Changsha, 410082, China.
Department of Mechanical Engineering, York University, Toronto, ON, M3J 1P3, Canada.
Comput Biol Med. 2019 Aug;111:103352. doi: 10.1016/j.compbiomed.2019.103352. Epub 2019 Jul 9.
A novel supervised method that is based on the Multi-Proportion Channel Ensemble Model (MPC-EM) is proposed to obtain more vessel details with reduced computational complexity.
Existing Retinal Vessel Segmentation (RVS) algorithms only work using the single G channel (Green Channel) of fundus images because that channel normally contains the most details with the least noise, while the red and blue channels are usually saturated and noisy. However, we find that the images that are composed of the αG-channel and (1-α) R-channel (Red Channel) with different values of α produce multiple particular global features. This enables the model to detect more local vessel details in fundus images. Therefore, we provide a detailed description and evaluation of the segmentation approach based on the MPC-EM for the RVS. The segmentation approach consists of five identical submodels. Each submodel can capture various vessel details by being trained using different composition images. These probabilistic maps that are produced by five submodels are averaged to achieve the final refined segmentation results.
The proposed approach is evaluated using 4 well-established datasets, i.e., DRIVE, STARE, HRF and CHASE_DB1, with accuracies of 95.74%, 96.95%, 96.31%, and 96.54%, respectively. Additionally, quantitative comparisons with other existing methods and cross-training results are included.
The segmentation results showed that the proposed algorithm based on the MPC-EM with simple submodels can achieve state-of-the-art accuracy with reduced computational complexity.
Compared with other existing methods that are trained using only the G channel and raw images, the proposed approach based on the MPC-EM, submodels of which are trained using different proportional compositions of R and G channels, obtains better segmentation accuracy and robustness. Additionally, the experimental results show that the R channel of fundus images can also produce performance gains for RVS.
提出一种基于多分量通道集成模型(MPC-EM)的新型监督方法,以在降低计算复杂度的同时获得更多血管细节。
现有的视网膜血管分割(RVS)算法仅使用眼底图像的单个 G 通道(绿色通道)工作,因为该通道通常包含最多的细节和最少的噪声,而红色和蓝色通道通常饱和且噪声较大。然而,我们发现由αG 通道和(1-α)R 通道(红色通道)组成的图像会产生多个特定的全局特征,不同的α值。这使模型能够在眼底图像中检测到更多的局部血管细节。因此,我们提供了基于 MPC-EM 的 RVS 分割方法的详细描述和评估。该分割方法由五个相同的子模型组成。每个子模型可以通过使用不同的合成图像进行训练来捕获各种血管细节。这五个子模型生成的概率图被平均以获得最终的细化分割结果。
该方法使用 4 个成熟的数据集(即 DRIVE、STARE、HRF 和 CHASE_DB1)进行评估,其准确率分别为 95.74%、96.95%、96.31%和 96.54%。此外,还包括与其他现有方法的定量比较和交叉训练结果。
分割结果表明,基于 MPC-EM 的简单子模型的算法可以在降低计算复杂度的同时达到最新的精度。
与仅使用 G 通道和原始图像训练的其他现有方法相比,基于 MPC-EM 的方法,其子模型使用 R 和 G 通道的不同比例组合进行训练,获得了更好的分割精度和鲁棒性。此外,实验结果表明眼底图像的 R 通道也可以为 RVS 带来性能提升。