Self-supervised learning for hotspot detection and isolation from thermal images

08/25/2023
by   Shreyas Goyal, et al.
0

Hotspot detection using thermal imaging has recently become essential in several industrial applications, such as security applications, health applications, and equipment monitoring applications. Hotspot detection is of utmost importance in industrial safety where equipment can develop anomalies. Hotspots are early indicators of such anomalies. We address the problem of hotspot detection in thermal images by proposing a self-supervised learning approach. Self-supervised learning has shown potential as a competitive alternative to their supervised learning counterparts but their application to thermography has been limited. This has been due to lack of diverse data availability, domain specific pre-trained models, standardized benchmarks, etc. We propose a self-supervised representation learning approach followed by fine-tuning that improves detection of hotspots by classification. The SimSiam network based ensemble classifier decides whether an image contains hotspots or not. Detection of hotspots is followed by precise hotspot isolation. By doing so, we are able to provide a highly accurate and precise hotspot identification, applicable to a wide range of applications. We created a novel large thermal image dataset to address the issue of paucity of easily accessible thermal images. Our experiments with the dataset created by us and a publicly available segmentation dataset show the potential of our approach for hotspot detection and its ability to isolate hotspots with high accuracy. We achieve a Dice Coefficient of 0.736, the highest when compared with existing hotspot identification techniques. Our experiments also show self-supervised learning as a strong contender of supervised learning, providing competitive metrics for hotspot detection, with the highest accuracy of our approach being 97

READ FULL TEXT

page 12

page 14

page 15

page 17

page 26

page 27

page 28

research
01/12/2022

Maximizing Self-supervision from Thermal Image for Effective Self-supervised Learning of Depth and Ego-motion

Recently, self-supervised learning of depth and ego-motion from thermal ...
research
04/15/2018

Detecting Concrete Abnormality Using Time-series Thermal Imaging and Supervised Learning

Nondestructive detecting defects (NDD) in concrete structures have been ...
research
01/20/2021

Self-supervised pre-training enhances change detection in Sentinel-2 imagery

While annotated images for change detection using satellite imagery are ...
research
01/20/2023

Self-Supervised Learning for Data Scarcity in a Fatigue Damage Prognostic Problem

With the increasing availability of data for Prognostics and Health Mana...
research
12/19/2022

Boosting Automatic COVID-19 Detection Performance with Self-Supervised Learning and Batch Knowledge Ensembling

Background and objective: COVID-19 and its variants have caused signific...
research
01/22/2023

Unifying Synergies between Self-supervised Learning and Dynamic Computation

Self-supervised learning (SSL) approaches have made major strides forwar...

Please sign up or login with your details

Forgot password? Click here to reset