Imbalanced Hyperspectral Image on Maximum Margin
Hyperspectral remote sensing images own rich spectral information to distinguish different land-cover classes. Sometimes, it may encounter the case that some classes have much fewer pixels than other classes. In this case, traditional classification methods are not appropriate because they are prone to assign all the pixels to the classes with a large number of pixels. For such an imbalanced problem, ensemble learning is a good method by partitioning the majority classes into different groups with small sizes.
However, the existing ensemble schemes are independent of classifiers, which will not get the best performance for a certain classifier. In this letter, the selected classifier, i.e., a support vector machine (SVM), is considered in an ensemble procedure to improve the classification accuracy. Specifically, the criterion of the SVM, i.e., the maximum margin, is adopted to guide the ensemble learning procedure for imbalanced hyperspectral image classification. Experiments state that our method obtains higher classification accuracy than the SVM and several representative imbalanced classification methods for hyperspectralimages.
Related IEEE Matlab Projects:
- No-Reference Quality Assessment of Contrast-Distorted Images Based on Natural Scene Statistics.
- Adaptive Total Variation Regularization Based SAR Image Despeckling and Despeckling Evaluation Index.
- Spectral–Spatial Classification for Hyperspectral Data Using Rotation Forests With Local Feature Extraction and Markov Random Fields.
- Closed-Form Correlation Model of Oriented Bandpass Natural Images.
- Direct 2-D Reconstructions of Conductivity and Permittivity From EIT Data on a Human Chest.
- Pattern-Based Assessment of Land Cover Change on Continental Scale With Application to NLCD 2001–2006.
- Doppler-Related Distortions in TOPS SAR Images.
- Pansharpening Using Regression of Classified MS and Pan Images to Reduce Color Distortion.
- An Efficient SIFT-Based Mode-Seeking Algorithm for Sub-Pixel Registration of Remotely Sensed Images.
- Remote Sensing Image Segmentation Based on an Improved 2-D Gradient Histogram and MMAD Model.
- Features, Color Spaces, and Boosting: New Insights on Semantic Classification of Remote Sensing Images.
- Nearest Feature Line and Point Embedding for Hyperspectral Image Classification.
- Robust Reconstruction of Building Facades for Large Areas Using Spaceborne TomoSAR Point Clouds.
- Automated Segmentation of Breast in 3-D MR Images Using a Robust Atlas.
- Wall Clutter Mitigation Using Discrete Prolate Spheroidal Sequences for Sparse Reconstruction of Indoor Stationary Scenes.
- Spectral Similarity Measure Using Frequency Spectrum for Hyperspectral Image Classification.
- A Novel Active Learning Method in Relevance Feedback for Content-Based Remote Sensing Image Retrieval.
- A CAD _{bf x} Scheme for Mammography Empowered With Topological Information From Clustered Microcalcifications’ Atlases.
- Joint Sparsity Model for Multilook Hyperspectral Image Unmixing.
Subscribe Our Youtube Channel
You can Watch all Subjects Matlab & Simulink latest Innovative Project Results
Our services
We want to support Uncompromise Matlab service for all your Requirements Our Reseachers and Technical team keep update the technology for all subjects ,We assure We Meet out Your Needs.
Our Services
- Matlab Research Paper Help
- Matlab assignment help
- Matlab Project Help
- Matlab Homework Help
- Simulink assignment help
- Simulink Project Help
- Simulink Homework Help
- Matlab Research Paper Help
- NS3 Research Paper Help
- Omnet++ Research Paper Help
Our Benefits
- Customised Matlab Assignments
- Global Assignment Knowledge
- Best Assignment Writers
- Certified Matlab Trainers
- Experienced Matlab Developers
- Over 400k+ Satisfied Students
- Ontime support
- Best Price Guarantee
- Plagiarism Free Work
- Correct Citations
Expert Matlab services just 1-click
Delivery Materials
Unlimited support we offer you
For better understanding purpose we provide following Materials for all Kind of Research & Assignment & Homework service.
- Programs
- Designs
- Simulations
- Results
- Graphs
- Result snapshot
- Video Tutorial
- Instructions Profile
- Sofware Install Guide
- Execution Guidance
- Explanations
- Implement Plan
Matlab Projects
Matlab projects innovators has laid our steps in all dimension related to math works.Our concern support matlab projects for more than 10 years.Many Research scholars are benefited by our matlab projects service.We are trusted institution who supplies matlab projects for many universities and colleges.
Reasons to choose Matlab Projects .org???
Our Service are widely utilized by Research centers.More than 5000+ Projects & Thesis has been provided by us to Students & Research Scholars. All current mathworks software versions are being updated by us.
Our concern has provided the required solution for all the above mention technical problems required by clients with best Customer Support.
- Novel Idea
- Ontime Delivery
- Best Prices
- Unique Work