Department of Information Technology, Hazara University Mansehra, Dhodial, Pakistan.
Department of Computing (SEECS), National University of Sciences & Technology (NUST), Islamabad, Pakistan.
Comput Math Methods Med. 2020 Jan 21;2020:4015323. doi: 10.1155/2020/4015323. eCollection 2020.
Previous works on segmentation of SEM (scanning electron microscope) blood cell image ignore the semantic segmentation approach of whole-slide blood cell segmentation. In the proposed work, we address the problem of whole-slide blood cell segmentation using the semantic segmentation approach. We design a novel convolutional encoder-decoder framework along with VGG-16 as the pixel-level feature extraction model. The proposed framework comprises 3 main steps: First, all the original images along with manually generated ground truth masks of each blood cell type are passed through the preprocessing stage. In the preprocessing stage, pixel-level labeling, RGB to grayscale conversion of masked image and pixel fusing, and unity mask generation are performed. After that, VGG16 is loaded into the system, which acts as a pretrained pixel-level feature extraction model. In the third step, the training process is initiated on the proposed model. We have evaluated our network performance on three evaluation metrics. We obtained outstanding results with respect to classwise, as well as global and mean accuracies. Our system achieved classwise accuracies of 97.45%, 93.34%, and 85.11% for RBCs, WBCs, and platelets, respectively, while global and mean accuracies remain 97.18% and 91.96%, respectively.
先前关于 SEM(扫描电子显微镜)血细胞图像分割的工作忽略了全片血细胞分割的语义分割方法。在提出的工作中,我们使用语义分割方法来解决全片血细胞分割的问题。我们设计了一个新颖的卷积编码器-解码器框架,以及 VGG-16 作为像素级特征提取模型。该框架包含 3 个主要步骤:首先,所有原始图像以及每种血细胞类型的手动生成的地面真实掩模都通过预处理阶段。在预处理阶段,执行像素级标记、掩模图像的 RGB 到灰度转换和像素融合以及统一掩模生成。然后,加载 VGG16 到系统中,它作为预训练的像素级特征提取模型。第三步,在提出的模型上启动训练过程。我们使用三个评估指标评估了我们的网络性能。我们在分类精度、全局精度和平均精度方面取得了出色的结果。我们的系统分别在 RBCs、WBCs 和血小板方面实现了 97.45%、93.34%和 85.11%的分类精度,而全局精度和平均精度分别保持在 97.18%和 91.96%。