I don't think this creative writing is common research practice, but I definitely like it...
The paper's called "Eternal Sunshine of the Spotless Net: Selective Forgetting in Deep Networks", and it's from an actual IEEE journal. https://doi.org/10.1109/CVPR42600.2020.00932
#academia #AcademicChatter #computerScience #neuralnetwork #ieee #cvpr #cvpr2020 #machineLearning #machineUnlearning
@ducha_aiki (Shameless self promotion)
Reinforced Feature Points (#CVPR2020)
arXiv:https://arxiv.org/abs/1912.00623
code: https://github.com/aritra0593/Reinforced-Feature-Points
Refines SuperPoint with end-to-end optimization of a robust pose loss. Mainly proof of concept, no big practical gains. I'd like to revisit one day.
Reinforced Feature Points: Optimizing Feature Detection and Description for a High-Level Task
We address a core problem of computer vision: Detection and description of 2D
feature points for image matching. For a long time, hand-crafted designs, like
the seminal SIFT algorithm, were unsurpassed in accuracy and efficiency.
Recently, learned feature detectors emerged that implement detection and
description using neural networks. Training these networks usually resorts to
optimizing low-level matching scores, often pre-defining sets of image patches
which should or should not match, or which should or should not contain key
points. Unfortunately, increased accuracy for these low-level matching scores
does not necessarily translate to better performance in high-level vision
tasks. We propose a new training methodology which embeds the feature detector
in a complete vision pipeline, and where the learnable parameters are trained
in an end-to-end fashion. We overcome the discrete nature of key point
selection and descriptor matching using principles from reinforcement learning.
As an example, we address the task of relative pose estimation between a pair
of images. We demonstrate that the accuracy of a state-of-the-art
learning-based feature detector can be increased when trained for the task it
is supposed to solve at test time. Our training methodology poses little
restrictions on the task to learn, and works for any architecture which
predicts key point heat maps, and descriptors for key point locations.
arXiv.org