Détail du document
Identifiant

oai:pubmedcentral.nih.gov:9708...

Sujet
Research Article
Auteur
Mary, S. Roselin Pachar, Sunita Srivastava, Prabhat Kumar Malik, Medhavi Sharma, Avani G. Almutiri, Tariq Atal, Zabihullah
Langue
en
Editeur

Hindawi

Catégorie

Computational Intelligence and Neuroscience

Année

2022

Date de référencement

12/12/2022

Mots clés
fusion remote using dimensionality images image classification
Métrique

Résumé

Deep learning is widely used for the classification of images that have various attributes.

Image data are used to extract colour, texture, form, and local features.

These features are combined in feature-level image fusion to create a merged remote sensing image.

A trained depth belief network (DBN) processes and divides fusion images, while a Softmax classifier determines the land type.

As tested, the proposed approach can categorise all types of land.

Traditional methods of detecting distant sensing photographs have limitations that can be overcome by using convolutional neural networks (CNN).

Traditional techniques are incapable of combining deep learning elements while doing badly in classification.

After PCA decreases data dimensionality, deep learning is applied to generate effective features that employ deep learning after PCA has reduced the dimensionality of the data.

Principal component analysis is commonly used because of its effectiveness in attaining linear dimension reduction.

It may be used on its own or as a starting point for further study into various different dimensionality reduction approaches.

Data can be altered by remapping onto a new set of orthogonal axes using a process known as projection-based principal component analysis.

Following remote sensing of land resources, the pictures were classified using a support vector machine.

Euroset satellite images are used to assess the suggested approach.

Accuracy and kappa have both increased.

It was accurate and within 95.83 % of the planned figures.

The classification findings' kappa value and reasoning time were 95.87 % and 128 milliseconds, respectively.

Both the model's performance and the classification effect are excellent.

Mary, S. Roselin,Pachar, Sunita,Srivastava, Prabhat Kumar,Malik, Medhavi,Sharma, Avani,G. Almutiri, Tariq,Atal, Zabihullah, 2022, Deep Learning Model for the Image Fusion and Accurate Classification of Remote Sensing Images, Hindawi

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