Your mugshot

Gongning Luo

luogongning

  •  China
  •  Harbin Institute of Technology
  •  School of computer science and technology
Statistics
  • Member for 8 years, 11 months

Activity Overview

LOLA11 Logo
LOLA11
Challenge User

The goal of LOLA11 (LObe and Lung Analysis 2011) is to compare methods for (semi-)automatic segmentation of the lungs and lobes from chest computed tomography scans. Any team, whether from academia or industry, can join.

CHAOS Logo
CHAOS
Challenge User

In this challenge, you segment the liver in CT data, and segment liver, spleen, and kidneys in MRI data.

EndoVisSub2019-SCARED Logo
Stereo Correspondence and Reconstruction of Endoscopic Data
Challenge User

Stereo Correspondence and Reconstruction of Endoscopic Data

LNDb Logo
LNDb Challenge
Challenge User

Lung cancer screening and Fleischner follow-up determination in chest CT through nodule detection, segmentation and characterization

SARAS-ESAD
Challenge User

This challenge is part of Medical Imaging with Deep Learning conference, 2020. The conference is held between 6 ‑ 8 July 2020 in Montréal. The SARAS (Smart Autonomous Robotic Assistant Surgeon) EU consortium, www.saras-project.eu, is working towards replacing the assistant surgeon in MIS with two assistive robotic arms. To accomplish that, an artificial intelligence based system is required which not only can understand the complete surgical scene but also detect the actions being performed by the main surgeon. This information can later be used infer the response required from the autonomous assistant surgeon.

covid-segmentation Logo
COVID-19 LUNG CT LESION SEGMENTATION CHALLENGE - 2020
Challenge User

This challenge will create the platform to evaluate emerging methods for the segmentation and quantification of lung lesions caused by SARS-CoV-2 infection from CT images.

EndoCV2021 Logo
EndoCV2021
Challenge User

Endoscopy Computer Vision Challenge 2021

FLARE Logo
FLARE21
Challenge User

Fast and Low GPU memory Abdominal oRgan sEgmentation Challenge

Parse2022 Logo
Parse2022
Challenge Editor

It is of significant clinical interest to study pulmonary artery structures in the field of medical image analysis. One prerequisite step is to segment pulmonary artery structures from CT with high accuracy and low time-consuming. The segmentation of pulmonary artery structures benefits the quantification of its morphological changes for diagnosis of pulmonary hypertension and thoracic surgery. However, due to the complexity of pulmonary artery topology, automated segmentation of pulmonary artery topology is a challenging task. Besides, the open accessible large-scale CT data with well labeled pulmonary artery are scarce (The large variations of the topological structures from different patients make the annotation an extremely challenging process). The lack of well labeled pulmonary artery hinders the development of automatic pulmonary artery segmentation algorithm. Hence, we try to host the first Pulmonary ARtery SEgmentation challenge in MICCAI 2022 (Named Parse2022) to start a new research topic.

TDSC-ABUS2023 Logo
TDSC-ABUS2023
Challenge Editor

Tumor Detection, Segmentation and Classification Challenge on Automated 3D Breast Ultrasound