Lossy Compression of Multispectral Satellite Images with Application to Crop Thematic Mapping: A HEVC Comparative Study

Remote sensing applications have gained in popularity in recent years, which has resulted in vast amounts of data being produced on a daily basis. Managing and delivering large sets of data becomes extremely difficult and resource demanding for the data vendors, but even more for individual users an...

Full description

Bibliographic Details
Main Authors: Miloš Radosavljević, Branko Brkljač, Predrag Lugonja, Vladimir Crnojević, Željen Trpovski, Zixiang Xiong, Dejan Vukobratović
Format: Article
Language:English
Published: MDPI AG 2020-05-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/12/10/1590
id doaj-88df327e504840e3b130e1f09c6eb0c7
record_format Article
spelling doaj-88df327e504840e3b130e1f09c6eb0c72020-11-25T02:59:09ZengMDPI AGRemote Sensing2072-42922020-05-01121590159010.3390/rs12101590Lossy Compression of Multispectral Satellite Images with Application to Crop Thematic Mapping: A HEVC Comparative StudyMiloš Radosavljević0Branko Brkljač1Predrag Lugonja2Vladimir Crnojević3Željen Trpovski4Zixiang Xiong5Dejan Vukobratović6Department of Power, Electronic and Communication Engineering, Faculty of Technical Sciences, University of Novi Sad, Trg Dositeja Obradovića 6, 21000 Novi Sad, SerbiaDepartment of Power, Electronic and Communication Engineering, Faculty of Technical Sciences, University of Novi Sad, Trg Dositeja Obradovića 6, 21000 Novi Sad, SerbiaBioSense Institute, Zorana Djindjića 1, 21000 Novi Sad, SerbiaBioSense Institute, Zorana Djindjića 1, 21000 Novi Sad, SerbiaDepartment of Power, Electronic and Communication Engineering, Faculty of Technical Sciences, University of Novi Sad, Trg Dositeja Obradovića 6, 21000 Novi Sad, SerbiaDepartment of Electrical and Computer Engineering, Texas A&M University, College Station, TX 77843, USADepartment of Power, Electronic and Communication Engineering, Faculty of Technical Sciences, University of Novi Sad, Trg Dositeja Obradovića 6, 21000 Novi Sad, SerbiaRemote sensing applications have gained in popularity in recent years, which has resulted in vast amounts of data being produced on a daily basis. Managing and delivering large sets of data becomes extremely difficult and resource demanding for the data vendors, but even more for individual users and third party stakeholders. Hence, research in the field of efficient remote sensing data handling and manipulation has become a very active research topic (from both storage and communication perspectives). Driven by the rapid growth in the volume of optical satellite measurements, in this work we explore the lossy compression technique for multispectral satellite images. We give a comprehensive analysis of the High Efficiency Video Coding (HEVC) still-image intra coding part applied to the multispectral image data. Thereafter, we analyze the impact of the distortions introduced by the HEVC’s intra compression in the general case, as well as in the specific context of crop classification application. Results show that HEVC’s intra coding achieves better trade-off between compression gain and image quality, as compared to standard JPEG 2000 solution. On the other hand, this also reflects in the better performance of the designed pixel-based classifier in the analyzed crop classification task. We show that HEVC can obtain up to 150:1 compression ratio, when observing compression in the context of specific application, without significantly losing on classification performance compared to classifier trained and applied on raw data. In comparison, in order to maintain the same performance, JPEG 2000 allows compression ratio up to 70:1.https://www.mdpi.com/2072-4292/12/10/1590HEVCintra codingJPEG 2000high bit-depth compressionmultispectral satellite imagescrop classification
collection DOAJ
language English
format Article
sources DOAJ
author Miloš Radosavljević
Branko Brkljač
Predrag Lugonja
Vladimir Crnojević
Željen Trpovski
Zixiang Xiong
Dejan Vukobratović
spellingShingle Miloš Radosavljević
Branko Brkljač
Predrag Lugonja
Vladimir Crnojević
Željen Trpovski
Zixiang Xiong
Dejan Vukobratović
Lossy Compression of Multispectral Satellite Images with Application to Crop Thematic Mapping: A HEVC Comparative Study
Remote Sensing
HEVC
intra coding
JPEG 2000
high bit-depth compression
multispectral satellite images
crop classification
author_facet Miloš Radosavljević
Branko Brkljač
Predrag Lugonja
Vladimir Crnojević
Željen Trpovski
Zixiang Xiong
Dejan Vukobratović
author_sort Miloš Radosavljević
title Lossy Compression of Multispectral Satellite Images with Application to Crop Thematic Mapping: A HEVC Comparative Study
title_short Lossy Compression of Multispectral Satellite Images with Application to Crop Thematic Mapping: A HEVC Comparative Study
title_full Lossy Compression of Multispectral Satellite Images with Application to Crop Thematic Mapping: A HEVC Comparative Study
title_fullStr Lossy Compression of Multispectral Satellite Images with Application to Crop Thematic Mapping: A HEVC Comparative Study
title_full_unstemmed Lossy Compression of Multispectral Satellite Images with Application to Crop Thematic Mapping: A HEVC Comparative Study
title_sort lossy compression of multispectral satellite images with application to crop thematic mapping: a hevc comparative study
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2020-05-01
description Remote sensing applications have gained in popularity in recent years, which has resulted in vast amounts of data being produced on a daily basis. Managing and delivering large sets of data becomes extremely difficult and resource demanding for the data vendors, but even more for individual users and third party stakeholders. Hence, research in the field of efficient remote sensing data handling and manipulation has become a very active research topic (from both storage and communication perspectives). Driven by the rapid growth in the volume of optical satellite measurements, in this work we explore the lossy compression technique for multispectral satellite images. We give a comprehensive analysis of the High Efficiency Video Coding (HEVC) still-image intra coding part applied to the multispectral image data. Thereafter, we analyze the impact of the distortions introduced by the HEVC’s intra compression in the general case, as well as in the specific context of crop classification application. Results show that HEVC’s intra coding achieves better trade-off between compression gain and image quality, as compared to standard JPEG 2000 solution. On the other hand, this also reflects in the better performance of the designed pixel-based classifier in the analyzed crop classification task. We show that HEVC can obtain up to 150:1 compression ratio, when observing compression in the context of specific application, without significantly losing on classification performance compared to classifier trained and applied on raw data. In comparison, in order to maintain the same performance, JPEG 2000 allows compression ratio up to 70:1.
topic HEVC
intra coding
JPEG 2000
high bit-depth compression
multispectral satellite images
crop classification
url https://www.mdpi.com/2072-4292/12/10/1590
work_keys_str_mv AT milosradosavljevic lossycompressionofmultispectralsatelliteimageswithapplicationtocropthematicmappingahevccomparativestudy
AT brankobrkljac lossycompressionofmultispectralsatelliteimageswithapplicationtocropthematicmappingahevccomparativestudy
AT predraglugonja lossycompressionofmultispectralsatelliteimageswithapplicationtocropthematicmappingahevccomparativestudy
AT vladimircrnojevic lossycompressionofmultispectralsatelliteimageswithapplicationtocropthematicmappingahevccomparativestudy
AT zeljentrpovski lossycompressionofmultispectralsatelliteimageswithapplicationtocropthematicmappingahevccomparativestudy
AT zixiangxiong lossycompressionofmultispectralsatelliteimageswithapplicationtocropthematicmappingahevccomparativestudy
AT dejanvukobratovic lossycompressionofmultispectralsatelliteimageswithapplicationtocropthematicmappingahevccomparativestudy
_version_ 1724703944743059456