2019
DOI: 10.35940/ijitee.j9873.0881019
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Pixel Based Sar Image Classification using Random Forest Algorithm

Abstract: Synthetic Aperture Radar (SAR) images (Microwave data) were classified using Multi-Layer Feed Forward, Cascade Forward Neural Networks and Random Forest (RF) algorithms. For the Random Forest, a general model for classification of Remotely Sensed Radar dual-polarization data based on RF is implemented and classified of SAR image (microwave data) classifications. The RF model exploits spatial context between neighbouring pixels in an image, and temporal class dependencies between different images of the same re… Show more

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Cited by 2 publications
(2 citation statements)
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“…Despite this, the data set used by [18] is smaller than that employed by this study and [17]. Random Forest, based on the comparison findings, provides improved accuracy when the data size employed is larger, and it is also used to categorise large datasets in many applications [22]. Machine learning is an efficient approach for soil categorization, according to the study, discussion, and analysis of the data presented in this paper.…”
Section: Fig 3 -Performances Measures Mean Of Three Machine Learningmentioning
confidence: 93%
“…Despite this, the data set used by [18] is smaller than that employed by this study and [17]. Random Forest, based on the comparison findings, provides improved accuracy when the data size employed is larger, and it is also used to categorise large datasets in many applications [22]. Machine learning is an efficient approach for soil categorization, according to the study, discussion, and analysis of the data presented in this paper.…”
Section: Fig 3 -Performances Measures Mean Of Three Machine Learningmentioning
confidence: 93%
“…As such, it does not possess a singular equation that fully encompasses its functionality. The RF algorithm creates a collection of decision trees and aggregates their predictions using either voting (for classification [20], [21]) or averaging (for regression [22]).…”
Section: ) Gradient Boosting (Gb): the Technique Of Gradientmentioning
confidence: 99%