GeoCLR: Georeference Contrastive Learning for Efficient Seafloor Image Interpretation

08/13/2021
by   Takaki Yamada, et al.
13

This paper describes Georeference Contrastive Learning of visual Representation (GeoCLR) for efficient training of deep-learning Convolutional Neural Networks (CNNs). The method leverages georeference information by generating a similar image pair using images taken of nearby locations, and contrasting these with an image pair that is far apart. The underlying assumption is that images gathered within a close distance are more likely to have similar visual appearance, where this can be reasonably satisfied in seafloor robotic imaging applications where image footprints are limited to edge lengths of a few metres and are taken so that they overlap along a vehicle's trajectory, whereas seafloor substrates and habitats have patch sizes that are far larger. A key advantage of this method is that it is self-supervised and does not require any human input for CNN training. The method is computationally efficient, where results can be generated between dives during multi-day AUV missions using computational resources that would be accessible during most oceanic field trials. We apply GeoCLR to habitat classification on a dataset that consists of  86k images gathered using an Autonomous Underwater Vehicle (AUV). We demonstrate how the latent representations generated by GeoCLR can be used to efficiently guide human annotation efforts, where the semi-supervised framework improves classification accuracy by an average of 11.8 using the same CNN and equivalent number of human annotations for training.

READ FULL TEXT

page 7

page 10

page 16

page 20

research
03/21/2023

Visual Representation Learning from Unlabeled Video using Contrastive Masked Autoencoders

Masked Autoencoders (MAEs) learn self-supervised representations by rand...
research
09/15/2021

Deep Bregman Divergence for Contrastive Learning of Visual Representations

Deep Bregman divergence measures divergence of data points using neural ...
research
10/02/2020

Hard Negative Mixing for Contrastive Learning

Contrastive learning has become a key component of self-supervised learn...
research
11/17/2020

Dual-stream Multiple Instance Learning Network for Whole Slide Image Classification with Self-supervised Contrastive Learning

Whole slide images (WSIs) have large resolutions and usually lack locali...
research
04/09/2019

Semi-Supervised Segmentation of Salt Bodies in Seismic Images using an Ensemble of Convolutional Neural Networks

Seismic image analysis plays a crucial role in a wide range of industria...
research
03/11/2021

Generalized Contrastive Optimization of Siamese Networks for Place Recognition

Visual place recognition is a challenging task in computer vision and a ...
research
06/27/2020

PCLNet: A Practical Way for Unsupervised Deep PolSAR Representations and Few-Shot Classification

Deep learning and convolutional neural networks (CNNs) have made progres...

Please sign up or login with your details

Forgot password? Click here to reset