3D Bounding Box Detection in Volumetric Medical Image Data: A Systematic Literature Review

12/10/2020
by   Daria Kern, et al.
0

This paper discusses current methods and trends for 3D bounding box detection in volumetric medical image data. For this purpose, an overview of relevant papers from recent years is given. 2D and 3D implementations are discussed and compared. Multiple identified approaches for localizing anatomical structures are presented. The results show that most research recently focuses on Deep Learning methods, such as Convolutional Neural Networks vs. methods with manual feature engineering, e.g. Random-Regression-Forests. An overview of bounding box detection options is presented and helps researchers to select the most promising approach for their target objects.

READ FULL TEXT

page 2

page 3

page 4

research
12/24/2013

Deep learning for class-generic object detection

We investigate the use of deep neural networks for the novel task of cla...
research
01/27/2019

6D Object Pose Estimation Based on 2D Bounding Box

In this paper, we present a simple but powerful method to tackle the pro...
research
11/26/2017

Learning a Rotation Invariant Detector with Rotatable Bounding Box

Detection of arbitrarily rotated objects is a challenging task due to th...
research
01/19/2021

A survey on shape-constraint deep learning for medical image segmentation

Since the advent of U-Net, fully convolutional deep neural networks and ...
research
12/23/2020

Exploring Instance-Level Uncertainty for Medical Detection

The ability of deep learning to predict with uncertainty is recognized a...
research
07/21/2020

Lymphocyte counting – Error Analysis of Regression versus Bounding Box Detection Approaches

We consider the problem of counting cell nuclei from celltype-agnostic h...
research
08/05/2017

Detecting Noteheads in Handwritten Scores with ConvNets and Bounding Box Regression

Noteheads are the interface between the written score and music. Each no...

Please sign up or login with your details

Forgot password? Click here to reset