Performance Evaluation of Learned 3D Features

09/15/2019
by   Riccardo Spezialetti, et al.
0

Matching surfaces is a challenging 3D Computer Vision problem typically addressed by local features. Although a variety of 3D feature detectors and descriptors has been proposed in literature, they have seldom been proposed together and it is yet not clear how to identify the most effective detector-descriptor pair for a specific application. A promising solution is to leverage machine learning to learn the optimal 3D detector for any given 3D descriptor [15]. In this paper, we report a performance evaluation of the detector-descriptor pairs obtained by learning a paired 3D detector for the most popular 3D descriptors. In particular, we address experimental settings dealing with object recognition and surface registration.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/20/2020

On the Comparison of Classic and Deep Keypoint Detector and Descriptor Methods

The purpose of this study is to give a performance comparison between se...
research
06/17/2018

Comparative survey of visual object classifiers

Classification of Visual Object Classes represents one of the most elabo...
research
03/21/2010

System-theoretic approach to image interest point detection

Interest point detection is a common task in various computer vision app...
research
06/04/2020

2D Image Features Detector And Descriptor Selection Expert System

Detection and description of keypoints from an image is a well-studied p...
research
11/27/2013

Image forgery detection based on the fusion of machine learning and block-matching methods

Dense local descriptors and machine learning have been used with success...
research
08/24/2016

In the Saddle: Chasing Fast and Repeatable Features

A novel similarity-covariant feature detector that extracts points whose...
research
05/12/2020

HDD-Net: Hybrid Detector Descriptor with Mutual Interactive Learning

Local feature extraction remains an active research area due to the adva...

Please sign up or login with your details

Forgot password? Click here to reset