Interest point detectors stability evaluation on ApolloScape dataset

09/28/2018
by   Jacek Komorowski, et al.
0

In the recent years, a number of novel, deep-learning based, interest point detectors, such as LIFT, DELF, Superpoint or LF-Net was proposed. However there's a lack of a standard benchmark to evaluate suitability of these novel keypoint detectors for real-live applications such as autonomous driving. Traditional benchmarks (e.g. Oxford VGG) are rather limited, as they consist of relatively few images of mostly planar scenes taken in favourable conditions. In this paper we verify if the recent, deep-learning based interest point detectors have the advantage over the traditional, hand-crafted keypoint detectors. To this end, we evaluate stability of a number of hand crafted and recent, learning-based interest point detectors on the street-level view ApolloScape dataset.

READ FULL TEXT
research
02/07/2018

SCK: A sparse coding based key-point detector

All current popular hand-crafted key-point detectors such as Harris corn...
research
03/22/2021

A Survey of Hand Crafted and Deep Learning Methods for Image Aesthetic Assessment

Automatic image aesthetics assessment is a computer vision problem that ...
research
07/03/2023

Shi-NeSS: Detecting Good and Stable Keypoints with a Neural Stability Score

Learning a feature point detector presents a challenge both due to the a...
research
05/11/2017

SCNet: Learning Semantic Correspondence

This paper addresses the problem of establishing semantic correspondence...
research
03/11/2021

PREPRINT: Comparison of deep learning and hand crafted features for mining simulation data

Computational Fluid Dynamics (CFD) simulations are a very important tool...
research
11/01/2018

An Improved Learning Framework for Covariant Local Feature Detection

Learning feature detection has been largely an unexplored area when comp...
research
11/17/2014

TILDE: A Temporally Invariant Learned DEtector

We introduce a learning-based approach to detect repeatable keypoints un...

Please sign up or login with your details

Forgot password? Click here to reset