Article

SF-ICNN: Spectral–Fractal Iterative Convolutional Neural Network for Classification of Hyperspectral Images

Details

Citation

Asghari Beirami B, Alizadeh Pirbasti M & Akbari V (2024) SF-ICNN: Spectral–Fractal Iterative Convolutional Neural Network for Classification of Hyperspectral Images. Applied Sciences, 14 (16), Art. No.: 7361. https://doi.org/10.3390/app14167361

Abstract
One primary concern in the field of remote-sensing image processing is the precise classification of hyperspectral images (HSIs). Lately, deep-learning models have demonstrated cutting-edge results in HSI classification. Despite this, researchers continue to study and propose simpler, more robust models. This study presents a novel deep-learning approach, the iterative convolutional neural network (ICNN), which combines spectral–fractal features and classifier probability maps iteratively, aiming to enhance the HSI classification accuracy. Experiments are conducted to prove the accuracy enhancement of the proposed method using HSI benchmark datasets of Indian pine (IP) and the University of Pavia (PU) to evaluate the performance of the proposed technique. The final results show that the proposed approach reaches overall accuracies of 99.16% and 95.5% on the IP and PU datasets, respectively, which are better than some basic methods. Additionally, the end findings demonstrate that greater accuracy levels might be achieved using a primary CNN network that employs the iteration loop than with certain current state-of-the-art spatial–spectral HSI classification techniques.

Keywords
iterative convolutional neural network; fractal features; hyperspectral image; spatial-spectral features

Journal
Applied Sciences: Volume 14, Issue 16

StatusPublished
Publication date21/08/2024
Publication date online21/08/2024
Date accepted by journal19/08/2024
URLhttp://hdl.handle.net/1893/36335
PublisherMDPI AG
eISSN2076-3417

People (1)

Dr Vahid Akbari

Dr Vahid Akbari

Lect in Artificial Intelligence/Data Sci, Computing Science and Mathematics - Division

Files (1)