http://chineseinput.net/에서 pinyin(병음)방식으로 중국어를 변환할 수 있습니다.
변환된 중국어를 복사하여 사용하시면 됩니다.
다중 확장된 컨볼루션 U-Net 을 사용한 간 영역 분할
신하쉬르티카 ( Shrutika Sinha ),오강한 ( Kanghan Oh ),파티마보드 ( Fatima Boud ),정환정 ( Hwan-jeong Jeong ),오일석 ( Il-seok Oh ) 한국정보처리학회 2020 한국정보처리학회 학술대회논문집 Vol.27 No.2
This paper proposes a novel automated liver segmentation using Multi-Dilated U-Nets. The proposed multidilation segmentation model has the advantage of considering both local and global shapes of the liver image. We use the CT images subject-wise, every 2D image is concatenated to 3D to calculate the IOU score and DICE score. The experimental results on Jeonbuk National University hospital dataset achieves better performance than the conventional U-Net.
신하쉬르티카 ( Shrutika Sinha ),고굴라무디프라딥레디 ( G. Pradeep Reddy ),박수현 ( Soo-hyun Park ) 한국정보처리학회 2023 한국정보처리학회 학술대회논문집 Vol.30 No.2
Federated learning (FL) is a new paradigm in machine learning (ML) that enables multiple devices to collaboratively train a shared ML model without sharing their local data. FL is well-suited for applications where data is sensitive or difficult to transmit in large volumes, or where collaborative learning is required. The Internet of Underwater Things (IoUT) is a network of underwater devices that collect and exchange data. This data can be used for a variety of applications, such as monitoring water quality, detecting marine life, and tracking underwater vehicles. However, the harsh underwater environment makes it difficult to collect and transmit data in large volumes. FL can address these challenges by enabling devices to train a shared ML model without having to transmit their data to a central server. This can help to protect the privacy of the data and improve the efficiency of training. In this view, this paper provides a brief overview of Fed-IoUT, highlighting its various applications, challenges, and opportunities.