Massively-Parallel Break Detection for Satellite Data

07/04/2018
by   Malte von Mehren, et al.
0

The field of remote sensing is nowadays faced with huge amounts of data. While this offers a variety of exciting research opportunities, it also yields significant challenges regarding both computation time and space requirements. In practice, the sheer data volumes render existing approaches too slow for processing and analyzing all the available data. This work aims at accelerating BFAST, one of the state-of-the-art methods for break detection given satellite image time series. In particular, we propose a massively-parallel implementation for BFAST that can effectively make use of modern parallel compute devices such as GPUs. Our experimental evaluation shows that the proposed GPU implementation is up to four orders of magnitude faster than the existing publicly available implementation and up to ten times faster than a corresponding multi-threaded CPU execution. The dramatic decrease in running time renders the analysis of significantly larger datasets possible in seconds or minutes instead of hours or days. We demonstrate the practical benefits of our implementations given both artificial and real datasets.

READ FULL TEXT

page 9

page 10

research
09/25/2022

Accelerating the Convex Hull Computation with a Parallel GPU Algorithm

The convex hull is a fundamental geometrical structure for many applicat...
research
08/18/2016

Hybrid CPU-GPU Framework for Network Motifs

Massively parallel architectures such as the GPU are becoming increasing...
research
12/21/2013

Large-Scale Paralleled Sparse Principal Component Analysis

Principal component analysis (PCA) is a statistical technique commonly u...
research
05/30/2021

High Performance Hyperspectral Image Classification using Graphics Processing Units

Real-time remote sensing applications like search and rescue missions, m...
research
03/19/2023

An Evaluation of GPU Filters for Accelerating the 2D Convex Hull

The Convex Hull algorithm is one of the most important algorithms in com...
research
07/29/2020

Accelerating Multi-attribute Unsupervised Seismic Facies Analysis With RAPIDS

Classification of seismic facies is done by clustering seismic data samp...
research
05/09/2017

Accelerating solutions of one-dimensional unsteady PDEs with GPU-based swept time-space decomposition

The expedient design of precision components in aerospace and other high...

Please sign up or login with your details

Forgot password? Click here to reset