Key.Net: Keypoint Detection by Handcrafted and Learned CNN Filters

04/01/2019
by   Axel Barroso Laguna, et al.
0

We introduce a novel approach for keypoint detection task that combines handcrafted and learned CNN filters within a shallow multi-scale architecture. Handcrafted filters provide anchor structures for learned filters, which localize, score and rank repeatable features. Scale-space representation is used within the network to extract keypoints at different levels. We design a loss function to detect robust features that exist across a range of scales and to maximize the repeatability score. Our Key.Net model is trained on data synthetically created from ImageNet and evaluated on HPatches benchmark. Results show that our approach outperforms state-of-the-art detectors in terms of repeatability, matching performance and complexity.

READ FULL TEXT

page 3

page 4

page 5

research
03/05/2018

Optimizing Learned Bloom Filters by Sandwiching

We provide a simple method for improving the performance of the recently...
research
11/17/2014

TILDE: A Temporally Invariant Learned DEtector

We introduce a learning-based approach to detect repeatable keypoints un...
research
03/27/2018

Multi-Scale Structure-Aware Network for Human Pose Estimation

We develop a robust multi-scale structure-aware neural network for human...
research
02/05/2021

CharacterGAN: Few-Shot Keypoint Character Animation and Reposing

We introduce CharacterGAN, a generative model that can be trained on onl...
research
09/27/2016

Learning convolutional neural network to maximize Pos@Top performance measure

In the machine learning problems, the performance measure is used to eva...
research
12/05/2017

R-FCN-3000 at 30fps: Decoupling Detection and Classification

We present R-FCN-3000, a large-scale real-time object detector in which ...
research
06/23/2017

Further Study on GFR Features for JPEG Steganalysis

The GFR (Gabor Filter Residual) features, built as histograms of quantiz...

Please sign up or login with your details

Forgot password? Click here to reset