Multimodal contrastive learning for remote sensing tasks

09/06/2022
by   Umangi Jain, et al.
0

Self-supervised methods have shown tremendous success in the field of computer vision, including applications in remote sensing and medical imaging. Most popular contrastive-loss based methods like SimCLR, MoCo, MoCo-v2 use multiple views of the same image by applying contrived augmentations on the image to create positive pairs and contrast them with negative examples. Although these techniques work well, most of these techniques have been tuned on ImageNet (and similar computer vision datasets). While there have been some attempts to capture a richer set of deformations in the positive samples, in this work, we explore a promising alternative to generating positive examples for remote sensing data within the contrastive learning framework. Images captured from different sensors at the same location and nearby timestamps can be thought of as strongly augmented instances of the same scene, thus removing the need to explore and tune a set of hand crafted strong augmentations. In this paper, we propose a simple dual-encoder framework, which is pre-trained on a large unlabeled dataset ( 1M) of Sentinel-1 and Sentinel-2 image pairs. We test the embeddings on two remote sensing downstream tasks: flood segmentation and land cover mapping, and empirically show that embeddings learnt from this technique outperform the conventional technique of collecting positive examples via aggressive data augmentations.

READ FULL TEXT
research
11/19/2020

Geography-Aware Self-Supervised Learning

Contrastive learning methods have significantly narrowed the gap between...
research
07/04/2023

In-Domain Self-Supervised Learning Can Lead to Improvements in Remote Sensing Image Classification

Self-supervised learning (SSL) has emerged as a promising approach for r...
research
06/16/2023

Joint multi-modal Self-Supervised pre-training in Remote Sensing: Application to Methane Source Classification

With the current ubiquity of deep learning methods to solve computer vis...
research
03/12/2023

DINO-MC: Self-supervised Contrastive Learning for Remote Sensing Imagery with Multi-sized Local Crops

Due to the costly nature of remote sensing image labeling and the large ...
research
11/24/2022

Contrastive pretraining for semantic segmentation is robust to noisy positive pairs

Domain-specific variants of contrastive learning can construct positive ...
research
04/13/2023

A Contrastive Method Based on Elevation Data for Remote Sensing with Scarce and High Level Semantic Labels

This work proposes a hybrid unsupervised/supervised learning method to p...
research
02/11/2023

Multispectral Self-Supervised Learning with Viewmaker Networks

Contrastive learning methods have been applied to a range of domains and...

Please sign up or login with your details

Forgot password? Click here to reset