W-Net: A CNN-based Architecture for White Blood Cells Image Classification

  • DAEHUN NYANG

초록

Computer-aided methods for analyzing white blood cells (WBC) have become widely popular due to the complexity of the manual process. Recent works have shown highly accurate segmentation and detection of white blood cells from microscopic blood images. However, the classification of the observed cells is still a challenge and highly demanded as the distribution of the five types reflects on the condition of the immune system. This work proposes W-Net, a CNN-based method for WBC classification. We evaluate W-Net on a realworld large-scale dataset, obtained from The Catholic University of Korea, that includes 6,562 real images of the five WBC types. W-Net achieves an average accuracy of 97%.

제목
W-Net: A CNN-based Architecture for White Blood Cells Image Classification
저자
DAEHUN NYANG
학회명
AAAI 2019 Fall Symposium on AI for Social Good
개최지
Westin Arlington Gateway, Arlington, Virginia, USA
학회 개최일
2019-11-07 ~ 2019-11-09