Machine Learning For Distributed Acoustic Sensors, Classic versus Image and Deep Neural Networks Approach

04/25/2019
by   Mugdim Bublin, et al.
0

Distributed Acoustic Sensing (DAS) using fiber optic cables is a promising new technology for pipeline monitoring and protection. In this work, we applied and compared two approaches for event detection using DAS: Classic machine learning approach and the approach based on image processing and deep learning. Although with both approaches acceptable performance can be achieved, the preliminary results show that image based deep learning is more promising approach, offering six times lower event detection delay and twelve times lower execution time.

READ FULL TEXT

page 1

page 8

page 9

research
10/03/2018

DeepImageSpam: Deep Learning based Image Spam Detection

Hackers and spammers are employing innovative and novel techniques to de...
research
10/15/2020

Deep Learning on Real Geophysical Data: A Case Study for Distributed Acoustic Sensing Research

Deep Learning approaches for real, large, and complex scientific data se...
research
02/02/2018

Scalable Preprocessing of High Volume Bird Acoustic Data

In this work, we examine the problem of efficiently preprocessing high v...
research
05/17/2020

North Atlantic Right Whales Up-call Detection Using Multimodel Deep Learning

A new method for North Atlantic Right Whales (NARW) up-call detection us...
research
05/07/2022

Deep Learning-enabled Detection and Classification of Bacterial Colonies using a Thin Film Transistor (TFT) Image Sensor

Early detection and identification of pathogenic bacteria such as Escher...
research
07/28/2022

Deep Learning-Based Acoustic Mosquito Detection in Noisy Conditions Using Trainable Kernels and Augmentations

In this paper, we demonstrate a unique recipe to enhance the effectivene...
research
05/24/2020

Deep learning approach to describe and classify fungi microscopic images

Preliminary diagnosis of fungal infections can rely on microscopic exami...

Please sign up or login with your details

Forgot password? Click here to reset