Modified shape index for object-based random forest image classification of agricultural systems using airborne hyperspectral datasets.

This paper highlights the importance of optimized shape index for agricultural management system analysis that utilizes the contiguous bands of hyperspectral data to define the gradient of the spectral curve and improve image classification accuracy. Currently, a number of machine learning methods w...

Full description

Bibliographic Details
Main Authors: Eric Ariel L Salas, Sakthi Kumaran Subburayalu
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0213356
_version_ 1819142827074912256
author Eric Ariel L Salas
Sakthi Kumaran Subburayalu
author_facet Eric Ariel L Salas
Sakthi Kumaran Subburayalu
author_sort Eric Ariel L Salas
collection DOAJ
description This paper highlights the importance of optimized shape index for agricultural management system analysis that utilizes the contiguous bands of hyperspectral data to define the gradient of the spectral curve and improve image classification accuracy. Currently, a number of machine learning methods would resort to using averaged spectral information over wide bandwidths resulting in loss of crucial information available in those contiguous bands. The loss of information could mean a drop in the discriminative power when it comes to land cover classes with comparable spectral responses, as in the case of cultivated fields versus fallow lands. In this study, we proposed and tested three new optimized novel algorithms based on Moment Distance Index (MDI) that characterizes the whole shape of the spectral curve. The image classification tests conducted on two publicly available hyperspectral data sets (AVIRIS 1992 Indian Pine and HYDICE Washington DC Mall images) showed the robustness of the optimized algorithms in terms of classification accuracy. We achieved an overall accuracy of 98% and 99% for AVIRIS and HYDICE, respectively. The optimized indices were also time efficient as it avoided the process of band dimension reduction, such as those implemented by several well-known classifiers. Our results showed the potential of optimized shape indices, specifically the Moment Distance Ratio Right/Left (MDRRL), to discriminate between types of tillage (corn-min and corn-notill) and between grass/pasture and grass/trees, tree and grass under object-based random forest approach.
first_indexed 2024-12-22T12:16:32Z
format Article
id doaj.art-9d241aff07ea4e1485710c690926d876
institution Directory Open Access Journal
issn 1932-6203
language English
last_indexed 2024-12-22T12:16:32Z
publishDate 2019-01-01
publisher Public Library of Science (PLoS)
record_format Article
series PLoS ONE
spelling doaj.art-9d241aff07ea4e1485710c690926d8762022-12-21T18:26:07ZengPublic Library of Science (PLoS)PLoS ONE1932-62032019-01-01143e021335610.1371/journal.pone.0213356Modified shape index for object-based random forest image classification of agricultural systems using airborne hyperspectral datasets.Eric Ariel L SalasSakthi Kumaran SubburayaluThis paper highlights the importance of optimized shape index for agricultural management system analysis that utilizes the contiguous bands of hyperspectral data to define the gradient of the spectral curve and improve image classification accuracy. Currently, a number of machine learning methods would resort to using averaged spectral information over wide bandwidths resulting in loss of crucial information available in those contiguous bands. The loss of information could mean a drop in the discriminative power when it comes to land cover classes with comparable spectral responses, as in the case of cultivated fields versus fallow lands. In this study, we proposed and tested three new optimized novel algorithms based on Moment Distance Index (MDI) that characterizes the whole shape of the spectral curve. The image classification tests conducted on two publicly available hyperspectral data sets (AVIRIS 1992 Indian Pine and HYDICE Washington DC Mall images) showed the robustness of the optimized algorithms in terms of classification accuracy. We achieved an overall accuracy of 98% and 99% for AVIRIS and HYDICE, respectively. The optimized indices were also time efficient as it avoided the process of band dimension reduction, such as those implemented by several well-known classifiers. Our results showed the potential of optimized shape indices, specifically the Moment Distance Ratio Right/Left (MDRRL), to discriminate between types of tillage (corn-min and corn-notill) and between grass/pasture and grass/trees, tree and grass under object-based random forest approach.https://doi.org/10.1371/journal.pone.0213356
spellingShingle Eric Ariel L Salas
Sakthi Kumaran Subburayalu
Modified shape index for object-based random forest image classification of agricultural systems using airborne hyperspectral datasets.
PLoS ONE
title Modified shape index for object-based random forest image classification of agricultural systems using airborne hyperspectral datasets.
title_full Modified shape index for object-based random forest image classification of agricultural systems using airborne hyperspectral datasets.
title_fullStr Modified shape index for object-based random forest image classification of agricultural systems using airborne hyperspectral datasets.
title_full_unstemmed Modified shape index for object-based random forest image classification of agricultural systems using airborne hyperspectral datasets.
title_short Modified shape index for object-based random forest image classification of agricultural systems using airborne hyperspectral datasets.
title_sort modified shape index for object based random forest image classification of agricultural systems using airborne hyperspectral datasets
url https://doi.org/10.1371/journal.pone.0213356
work_keys_str_mv AT ericariellsalas modifiedshapeindexforobjectbasedrandomforestimageclassificationofagriculturalsystemsusingairbornehyperspectraldatasets
AT sakthikumaransubburayalu modifiedshapeindexforobjectbasedrandomforestimageclassificationofagriculturalsystemsusingairbornehyperspectraldatasets