Steering Self-Supervised Feature Learning Beyond Local Pixel Statistics

04/05/2020
by   Simon Jenni, et al.
5

We introduce a novel principle for self-supervised feature learning based on the discrimination of specific transformations of an image. We argue that the generalization capability of learned features depends on what image neighborhood size is sufficient to discriminate different image transformations: The larger the required neighborhood size and the more global the image statistics that the feature can describe. An accurate description of global image statistics allows to better represent the shape and configuration of objects and their context, which ultimately generalizes better to new tasks such as object classification and detection. This suggests a criterion to choose and design image transformations. Based on this criterion, we introduce a novel image transformation that we call limited context inpainting (LCI). This transformation inpaints an image patch conditioned only on a small rectangular pixel boundary (the limited context). Because of the limited boundary information, the inpainter can learn to match local pixel statistics, but is unlikely to match the global statistics of the image. We claim that the same principle can be used to justify the performance of transformations such as image rotations and warping. Indeed, we demonstrate experimentally that learning to discriminate transformations such as LCI, image warping and rotations, yields features with state of the art generalization capabilities on several datasets such as Pascal VOC, STL-10, CelebA, and ImageNet. Remarkably, our trained features achieve a performance on Places on par with features trained through supervised learning with ImageNet labels.

READ FULL TEXT

page 1

page 2

page 4

page 5

page 8

page 12

page 13

research
11/17/2017

Improvements to context based self-supervised learning

We develop a set of methods to improve on the results of self-supervised...
research
08/01/2021

Self-supervised Learning with Local Attention-Aware Feature

In this work, we propose a novel methodology for self-supervised learnin...
research
06/15/2021

Self-Supervised Learning with Kernel Dependence Maximization

We approach self-supervised learning of image representations from a sta...
research
10/28/2019

Self-supervised learning of class embeddings from video

This work explores how to use self-supervised learning on videos to lear...
research
02/08/2022

TransformNet: Self-supervised representation learning through predicting geometric transformations

Deep neural networks need a big amount of training data, while in the re...
research
11/26/2019

Revisiting Image Aesthetic Assessment via Self-Supervised Feature Learning

Visual aesthetic assessment has been an active research field for decade...
research
08/26/2020

Self-Supervised Goal-Conditioned Pick and Place

Robots have the capability to collect large amounts of data autonomously...

Please sign up or login with your details

Forgot password? Click here to reset