SlideShare a Scribd company logo
Remote Sensing Image Scene Classification
Designed by Manik Batra, Gaurav Singh and Yashvardhan
Under supervision of Dr Mukesh Saraswat
References
1. Gong Cheng, Zhen peng Li, Xi wen Yao, Lei
Guo, and, Zhong liang Wei, “Remote Sensing
Image Scene Classification Using Bag of
Convolutional Features,” IEEE Geoscience and
Remote Sensing Letters, Oct. 2017.
2. Jiang fan Feng, Yuanyuan Liu, and Lin Wu,
“Bag of Visual Words Model with Deep
Spatial Features for Geographical Scene
Classification,” Computational Intelligence and
Neuroscience, June 2017.
3. Mirjalili S, Mir Jalili SM, Lewis A., “Grey
wolf optimizer,” Advances in Engineering
Software, 2014.
4. C. Muro, R. Escobedo, L. Spector, and R.
Coppinger, "Wolf-pack hunting strategies
emerge from simple rules in computational
simulations," Behavioural Processes, 2015
Conclusion
This project proposed a simple and effective image
feature representation method BoCF, for scene
classification. Compared with traditional
BoVW model in which the visual words are
usually obtained by using handcrafted
features. The later part of project
proposes an application of Grey Wolf
Optimizer (GWO) algorithm for satellite
image segmentation. The original GWO
has been correctly modified to work as an
instinctive clustering algorithm. Further, a
beneficial performance analysis was
carried out by comparing the proposed
method with the existing methods.
Consequently, in the future work, we need
to explore new methods and systems in
which the combination of remote sensing
data and information can be deployed to
promote the state of the art of remote
sensing image scene classification.
Aim
Our goal is to encourage the use of recent
technologies like deep learning and recent nature
inspired algorithms to detect more descriptive
features from an image through remote sensing and
to more accurate identification and classification of
the images
Classification of scenes is difficult if it contains
blurry and noisy content. The two significant areas
of scene classification problem are: learning and
scenes models for formal categories. If the images
are affected due to noise, poor quality, occlusion or
background clutter, it becomes quite a challenge to
classify an image. This difficult gets multiplied
whenever an image consists of many objects. There
has been a invariable raise in new classification
algorithms, techniques
Introduction
Remote Sensing Image Scene Classification plays
an essential role in a broad range of applications. In
this project, we have presented a mechanism for
remote sensing and image classification of large
dataset image collections. . Bag of Visual Words
(BoVW) model is used in first part of the project.
However, the traditional BoVW model only
captures the local patterns of images by utilizing
local features. Then proposed Bag of
Convolutional Features (BoCF) generates visual
words from deep convolutional features using off-
the-shelf convolutional neural networks. The
further part of project proposes an application of
Grey Wolf Optimizer (GWO) algorithm for
satellite image segmentation. The original GWO
has been suitably modified to work as an automatic
clustering algorithm.
Results
Accuracies of BoVW, BoCF
and GWO respectively
• The accuracy of traditional BoVW method with
dense SIFT is 41.72% under training ratio of
10% and 44.97% under the training ratio of
20%.
• The accuracy of BoCF method is almost
doubled by 82.65% under training ratio of 10%
and 84.32% under the training ratio of 20%.
• The accuracy of BoVW + GWO method is
78.70% under training ratio of 10% and 80.60%
under the training ratio of 20%.
Method
• Handcrafted Feature Learning:
These methods mainly focus on using
acceptable amount of engineering
handiness and domain expertise to design
various human engineering features.
• Unsupervised Feature Learning:
Unsupervised feature learning aims to
learn a set of basic functions (or filters)
used for feature encoding, in which the
input of the functions is a set of
handcrafted features
• Deep Feature Learning Based
Deep learning models that are composed
of multiple processing layers can learn
more powerful feature representations of
data with multiple levels of abstraction.
Grey Wolf Optimization
0.00%
50.00%
100.00%
BoVW +
Dense SIFT
BoCF GWO
Comparision of Remote
Sensing Classification
Algorithms
10% 20%

More Related Content

PDF
Improving the Accuracy of Object Based Supervised Image Classification using ...
CSCJournals
 
PDF
IJCER (www.ijceronline.com) International Journal of computational Engineerin...
ijceronline
 
PDF
10.1.1.432.9149
moemi1
 
PDF
MediaEval 2017 - Satellite Task: Flood detection using Social Media Data and ...
multimediaeval
 
DOCX
Remote Sensing Image Scene Classification
Gaurav Singh
 
PPTX
Image recognition
Aseed Usmani
 
DOC
Quality assessment of stereoscopic 3 d image compression by binocular integra...
Shakas Technologies
 
PDF
Discovering Anomalies Based on Saliency Detection and Segmentation in Surveil...
ijtsrd
 
Improving the Accuracy of Object Based Supervised Image Classification using ...
CSCJournals
 
IJCER (www.ijceronline.com) International Journal of computational Engineerin...
ijceronline
 
10.1.1.432.9149
moemi1
 
MediaEval 2017 - Satellite Task: Flood detection using Social Media Data and ...
multimediaeval
 
Remote Sensing Image Scene Classification
Gaurav Singh
 
Image recognition
Aseed Usmani
 
Quality assessment of stereoscopic 3 d image compression by binocular integra...
Shakas Technologies
 
Discovering Anomalies Based on Saliency Detection and Segmentation in Surveil...
ijtsrd
 

What's hot (18)

PDF
A New Approach for video denoising and enhancement using optical flow Estimation
IRJET Journal
 
PDF
Deep-learning based single object tracker for night surveillance
IJECEIAES
 
PDF
MULTI-LEVEL FEATURE FUSION BASED TRANSFER LEARNING FOR PERSON RE-IDENTIFICATION
gerogepatton
 
PDF
Image recognition
Nikhil Singh
 
PDF
26.motion and feature based person tracking
sajit1975
 
PDF
Image recognition
Joel Jose
 
PDF
L026070074
ijceronline
 
PDF
TOP 5 Most View Article From Academia in 2019
sipij
 
PPTX
Image recognition
Harika Nalla
 
PDF
PCS 2016 presentation
Ashek Ahmmed
 
PDF
PRACTICAL APPROACHES TO TARGET DETECTION IN LONG RANGE AND LOW QUALITY INFRAR...
sipij
 
PDF
Image Restoration for 3D Computer Vision
PetteriTeikariPhD
 
PDF
VIDEO SEGMENTATION FOR MOVING OBJECT DETECTION USING LOCAL CHANGE & ENTROPY B...
csandit
 
PDF
E011122530
IOSR Journals
 
PDF
M.Sc. Thesis - Automatic People Counting in Crowded Scenes
Ahmed Gad
 
DOC
Announcing the Final Examination of Mr. Paul Smith for the ...
butest
 
DOC
Resume
butest
 
A New Approach for video denoising and enhancement using optical flow Estimation
IRJET Journal
 
Deep-learning based single object tracker for night surveillance
IJECEIAES
 
MULTI-LEVEL FEATURE FUSION BASED TRANSFER LEARNING FOR PERSON RE-IDENTIFICATION
gerogepatton
 
Image recognition
Nikhil Singh
 
26.motion and feature based person tracking
sajit1975
 
Image recognition
Joel Jose
 
L026070074
ijceronline
 
TOP 5 Most View Article From Academia in 2019
sipij
 
Image recognition
Harika Nalla
 
PCS 2016 presentation
Ashek Ahmmed
 
PRACTICAL APPROACHES TO TARGET DETECTION IN LONG RANGE AND LOW QUALITY INFRAR...
sipij
 
Image Restoration for 3D Computer Vision
PetteriTeikariPhD
 
VIDEO SEGMENTATION FOR MOVING OBJECT DETECTION USING LOCAL CHANGE & ENTROPY B...
csandit
 
E011122530
IOSR Journals
 
M.Sc. Thesis - Automatic People Counting in Crowded Scenes
Ahmed Gad
 
Announcing the Final Examination of Mr. Paul Smith for the ...
butest
 
Resume
butest
 
Ad

Similar to Remote Sensing Image Scene Classification (20)

PPTX
ppt - of a project will help you on your college projects
vikaspandey0702
 
PDF
OBJECT DETECTION AND RECOGNITION: A SURVEY
Journal For Research
 
PDF
Real Time Object Detection with Audio Feedback using Yolo v3
ijtsrd
 
PDF
Object based Classification of Satellite Images by Combining the HDP, IBP and...
IRJET Journal
 
PDF
Object Detetcion using SSD-MobileNet
IRJET Journal
 
PDF
Csit3916
TejashwiniSG
 
PDF
VIDEO SEGMENTATION FOR MOVING OBJECT DETECTION USING LOCAL CHANGE & ENTROPY B...
cscpconf
 
PDF
Real Time Object Detection And Recognization.pdf
DevidasBhere
 
PDF
Shallow vs. Deep Image Representations: A Comparative Study with Enhancements...
CSCJournals
 
PDF
Modelling Framework of a Neural Object Recognition
IJERA Editor
 
PDF
An ensemble classification algorithm for hyperspectral images
sipij
 
PDF
最近の研究情勢についていくために - Deep Learningを中心に -
Hiroshi Fukui
 
PDF
Review of Pose Recognition Systems
vivatechijri
 
PDF
IMAGE SUBSET SELECTION USING GABOR FILTERS AND NEURAL NETWORKS
ijma
 
PDF
I MAGE S UBSET S ELECTION U SING G ABOR F ILTERS A ND N EURAL N ETWORKS
ijma
 
DOCX
Assignment 2 Application Case 6-5 Efficient Image Recognition and Cate.docx
olsenlinnea427
 
PDF
IRJET- Comparative Analysis of Video Processing Object Detection
IRJET Journal
 
PDF
Introduction talk to Computer Vision
Chen Sagiv
 
PDF
IRJET- Application of MCNN in Object Detection
IRJET Journal
 
PDF
Deep Learning for X ray Image to Text Generation
ijtsrd
 
ppt - of a project will help you on your college projects
vikaspandey0702
 
OBJECT DETECTION AND RECOGNITION: A SURVEY
Journal For Research
 
Real Time Object Detection with Audio Feedback using Yolo v3
ijtsrd
 
Object based Classification of Satellite Images by Combining the HDP, IBP and...
IRJET Journal
 
Object Detetcion using SSD-MobileNet
IRJET Journal
 
Csit3916
TejashwiniSG
 
VIDEO SEGMENTATION FOR MOVING OBJECT DETECTION USING LOCAL CHANGE & ENTROPY B...
cscpconf
 
Real Time Object Detection And Recognization.pdf
DevidasBhere
 
Shallow vs. Deep Image Representations: A Comparative Study with Enhancements...
CSCJournals
 
Modelling Framework of a Neural Object Recognition
IJERA Editor
 
An ensemble classification algorithm for hyperspectral images
sipij
 
最近の研究情勢についていくために - Deep Learningを中心に -
Hiroshi Fukui
 
Review of Pose Recognition Systems
vivatechijri
 
IMAGE SUBSET SELECTION USING GABOR FILTERS AND NEURAL NETWORKS
ijma
 
I MAGE S UBSET S ELECTION U SING G ABOR F ILTERS A ND N EURAL N ETWORKS
ijma
 
Assignment 2 Application Case 6-5 Efficient Image Recognition and Cate.docx
olsenlinnea427
 
IRJET- Comparative Analysis of Video Processing Object Detection
IRJET Journal
 
Introduction talk to Computer Vision
Chen Sagiv
 
IRJET- Application of MCNN in Object Detection
IRJET Journal
 
Deep Learning for X ray Image to Text Generation
ijtsrd
 
Ad

More from Gaurav Singh (6)

PPTX
Planet lab : cloud vs grid computing
Gaurav Singh
 
PDF
Shawshank Redemption
Gaurav Singh
 
PDF
Solar power forecasting report
Gaurav Singh
 
DOCX
Twitter Analysis of Road Traffic Congestion Severity Estimation
Gaurav Singh
 
DOCX
Blockchain based Banking System
Gaurav Singh
 
PPTX
Blockchain based Banking System
Gaurav Singh
 
Planet lab : cloud vs grid computing
Gaurav Singh
 
Shawshank Redemption
Gaurav Singh
 
Solar power forecasting report
Gaurav Singh
 
Twitter Analysis of Road Traffic Congestion Severity Estimation
Gaurav Singh
 
Blockchain based Banking System
Gaurav Singh
 
Blockchain based Banking System
Gaurav Singh
 

Recently uploaded (20)

PPT
Real Life Application of Set theory, Relations and Functions
manavparmar205
 
PDF
Fundamentals and Techniques of Biophysics and Molecular Biology (Pranav Kumar...
RohitKumar868624
 
PDF
Blitz Campinas - Dia 24 de maio - Piettro.pdf
fabigreek
 
PDF
WISE main accomplishments for ISQOLS award July 2025.pdf
StatsCommunications
 
PPTX
Multiscale Segmentation of Survey Respondents: Seeing the Trees and the Fores...
Sione Palu
 
PPTX
Fluvial_Civilizations_Presentation (1).pptx
alisslovemendoza7
 
PPTX
Fuzzy_Membership_Functions_Presentation.pptx
pythoncrazy2024
 
PPTX
Presentation (1) (1).pptx k8hhfftuiiigff
karthikjagath2005
 
PPT
From Vision to Reality: The Digital India Revolution
Harsh Bharvadiya
 
PDF
Blue Futuristic Cyber Security Presentation.pdf
tanvikhunt1003
 
PDF
202501214233242351219 QASS Session 2.pdf
lauramejiamillan
 
PPTX
M1-T1.pptxM1-T1.pptxM1-T1.pptxM1-T1.pptx
teodoroferiarevanojr
 
PDF
SUMMER INTERNSHIP REPORT[1] (AutoRecovered) (6) (1).pdf
pandeydiksha814
 
PDF
TIC ACTIVIDAD 1geeeeeeeeeeeeeeeeeeeeeeeeeeeeeer3.pdf
Thais Ruiz
 
PPTX
World-population.pptx fire bunberbpeople
umutunsalnsl4402
 
PPTX
Introduction to Data Analytics and Data Science
KavithaCIT
 
PPTX
Data-Users-in-Database-Management-Systems (1).pptx
dharmik832021
 
PPTX
White Blue Simple Modern Enhancing Sales Strategy Presentation_20250724_21093...
RamNeymarjr
 
PDF
Practical Measurement Systems Analysis (Gage R&R) for design
Rob Schubert
 
PPTX
INFO8116 - Week 10 - Slides.pptx data analutics
guddipatel10
 
Real Life Application of Set theory, Relations and Functions
manavparmar205
 
Fundamentals and Techniques of Biophysics and Molecular Biology (Pranav Kumar...
RohitKumar868624
 
Blitz Campinas - Dia 24 de maio - Piettro.pdf
fabigreek
 
WISE main accomplishments for ISQOLS award July 2025.pdf
StatsCommunications
 
Multiscale Segmentation of Survey Respondents: Seeing the Trees and the Fores...
Sione Palu
 
Fluvial_Civilizations_Presentation (1).pptx
alisslovemendoza7
 
Fuzzy_Membership_Functions_Presentation.pptx
pythoncrazy2024
 
Presentation (1) (1).pptx k8hhfftuiiigff
karthikjagath2005
 
From Vision to Reality: The Digital India Revolution
Harsh Bharvadiya
 
Blue Futuristic Cyber Security Presentation.pdf
tanvikhunt1003
 
202501214233242351219 QASS Session 2.pdf
lauramejiamillan
 
M1-T1.pptxM1-T1.pptxM1-T1.pptxM1-T1.pptx
teodoroferiarevanojr
 
SUMMER INTERNSHIP REPORT[1] (AutoRecovered) (6) (1).pdf
pandeydiksha814
 
TIC ACTIVIDAD 1geeeeeeeeeeeeeeeeeeeeeeeeeeeeeer3.pdf
Thais Ruiz
 
World-population.pptx fire bunberbpeople
umutunsalnsl4402
 
Introduction to Data Analytics and Data Science
KavithaCIT
 
Data-Users-in-Database-Management-Systems (1).pptx
dharmik832021
 
White Blue Simple Modern Enhancing Sales Strategy Presentation_20250724_21093...
RamNeymarjr
 
Practical Measurement Systems Analysis (Gage R&R) for design
Rob Schubert
 
INFO8116 - Week 10 - Slides.pptx data analutics
guddipatel10
 

Remote Sensing Image Scene Classification

  • 1. Remote Sensing Image Scene Classification Designed by Manik Batra, Gaurav Singh and Yashvardhan Under supervision of Dr Mukesh Saraswat References 1. Gong Cheng, Zhen peng Li, Xi wen Yao, Lei Guo, and, Zhong liang Wei, “Remote Sensing Image Scene Classification Using Bag of Convolutional Features,” IEEE Geoscience and Remote Sensing Letters, Oct. 2017. 2. Jiang fan Feng, Yuanyuan Liu, and Lin Wu, “Bag of Visual Words Model with Deep Spatial Features for Geographical Scene Classification,” Computational Intelligence and Neuroscience, June 2017. 3. Mirjalili S, Mir Jalili SM, Lewis A., “Grey wolf optimizer,” Advances in Engineering Software, 2014. 4. C. Muro, R. Escobedo, L. Spector, and R. Coppinger, "Wolf-pack hunting strategies emerge from simple rules in computational simulations," Behavioural Processes, 2015 Conclusion This project proposed a simple and effective image feature representation method BoCF, for scene classification. Compared with traditional BoVW model in which the visual words are usually obtained by using handcrafted features. The later part of project proposes an application of Grey Wolf Optimizer (GWO) algorithm for satellite image segmentation. The original GWO has been correctly modified to work as an instinctive clustering algorithm. Further, a beneficial performance analysis was carried out by comparing the proposed method with the existing methods. Consequently, in the future work, we need to explore new methods and systems in which the combination of remote sensing data and information can be deployed to promote the state of the art of remote sensing image scene classification. Aim Our goal is to encourage the use of recent technologies like deep learning and recent nature inspired algorithms to detect more descriptive features from an image through remote sensing and to more accurate identification and classification of the images Classification of scenes is difficult if it contains blurry and noisy content. The two significant areas of scene classification problem are: learning and scenes models for formal categories. If the images are affected due to noise, poor quality, occlusion or background clutter, it becomes quite a challenge to classify an image. This difficult gets multiplied whenever an image consists of many objects. There has been a invariable raise in new classification algorithms, techniques Introduction Remote Sensing Image Scene Classification plays an essential role in a broad range of applications. In this project, we have presented a mechanism for remote sensing and image classification of large dataset image collections. . Bag of Visual Words (BoVW) model is used in first part of the project. However, the traditional BoVW model only captures the local patterns of images by utilizing local features. Then proposed Bag of Convolutional Features (BoCF) generates visual words from deep convolutional features using off- the-shelf convolutional neural networks. The further part of project proposes an application of Grey Wolf Optimizer (GWO) algorithm for satellite image segmentation. The original GWO has been suitably modified to work as an automatic clustering algorithm. Results Accuracies of BoVW, BoCF and GWO respectively • The accuracy of traditional BoVW method with dense SIFT is 41.72% under training ratio of 10% and 44.97% under the training ratio of 20%. • The accuracy of BoCF method is almost doubled by 82.65% under training ratio of 10% and 84.32% under the training ratio of 20%. • The accuracy of BoVW + GWO method is 78.70% under training ratio of 10% and 80.60% under the training ratio of 20%. Method • Handcrafted Feature Learning: These methods mainly focus on using acceptable amount of engineering handiness and domain expertise to design various human engineering features. • Unsupervised Feature Learning: Unsupervised feature learning aims to learn a set of basic functions (or filters) used for feature encoding, in which the input of the functions is a set of handcrafted features • Deep Feature Learning Based Deep learning models that are composed of multiple processing layers can learn more powerful feature representations of data with multiple levels of abstraction. Grey Wolf Optimization 0.00% 50.00% 100.00% BoVW + Dense SIFT BoCF GWO Comparision of Remote Sensing Classification Algorithms 10% 20%