Forest Fire Detection Using Transfer Learning Model with Contrast Enhancement and Data Augmentation

Authors

  • Vina Ayumi Universitas Dian Nusantara
  • Handrie Noprisson
  • Nur Ani

DOI:

https://doi.org/10.23887/janapati.v13i1.75692

Keywords:

CLAHE, MobileNet, Xception, forest fire detection, computer vision

Abstract

Forest damage due to fire is unique of the catastrophes that can disrupt and damage the existing ecosystem. There needs to be a quick response to fires because disaster management takes longer, and the impact of the damage will be more severe. To process images to detect fire in the forest, we need to build a suitable deep-learning model. This study proposed research on forest fire detection using an Xception and MobileNet model. Moreover, this research optimizes the accuracy of the model by applying Contrast-Limited-Adaptive-Histogram-Equalization (CLAHE) and data augmentation to tackle the problem of the forest fire image dataset. Based on the experiment, MobileNet with CLAHE obtained 99,66% accuracy in the test phase. In the same phase, MobileNet with CLAHE obtained a value F1-score of 1.00, a value of precision of 0.99, and a value of recall of 1.00. If compared to other model performances, MobileNet with CLAHE obtained the best result.

References

V. Sevinc, O. Kucuk, and M. Goltas, “A Bayesian network model for prediction and analysis of possible forest fire causes,” For. Ecol. Manage., vol. 457, p. 117723, 2020.

L. Ying, J. Han, Y. Du, and Z. Shen, “Forest fire characteristics in China: Spatial patterns and determinants with thresholds,” For. Ecol. Manage., vol. 424, pp. 345–354, 2018.

V. Ayumi, “Application of Machine Learning for SARS-CoV-2 Outbreak,” Int. J. Sci. Res. Sci. Eng. Technol., vol. 7, no. 5, 2020.

W. Liu et al., “Self-powered forest fire alarm system based on impedance matching effect between triboelectric nanogenerator and thermosensitive sensor,” Nano Energy, vol. 73, p. 104843, 2020.

Y. Wang, F. Ma, and H. Fan, “Method of forest fire automatic early warning and alarm system design,” in E3S Web of Conferences, 2022, vol. 341, p. 1027.

C.-Y. Chiang, C. Barnes, P. Angelov, and R. Jiang, “Deep learning-based automated forest health diagnosis from aerial images,” IEEE Access, vol. 8, pp. 144064–144076, 2020.

M. Mohajane et al., “Application of remote sensing and machine learning algorithms for forest fire mapping in a Mediterranean area,” Ecol. Indic., vol. 129, p. 107869, 2021.

Y. Diez, S. Kentsch, M. Fukuda, M. L. L. Caceres, K. Moritake, and M. Cabezas, “Deep learning in forestry using uav-acquired rgb data: A practical review,” Remote Sens., vol. 13, no. 14, p. 2837, 2021.

A. Eltner, X. Blanch, and S. R. Babu, “Using multi-scale and multi-model datasets for post-event assessment of wildfires,” 2023.

P. Suwansrikham and P. Singkhamfu, “Performance Evaluation of Deep Learning Algorithm for Forest Fire Detection,” in 2023 Joint International Conference on Digital Arts, Media and Technology with ECTI Northern Section Conference on Electrical, Electronics, Computer and Telecommunications Engineering (ECTI DAMT & NCON), 2023, pp. 244–248.

F. Xie and Z.-Q. Huang, “Aerial Forest Fire Detection based on Transfer Learning and Improved Faster RCNN,” in 2023 IEEE 3rd International Conference on Information Technology, Big Data and Artificial Intelligence (ICIBA), 2023, vol. 3, pp. 1132–1136.

M. Luo, J. Huang, X. Sun, Z. Yu, and Y. Wan, “Small Target Forest Fire Recognition Method based on Deep Learning,” in 2023 IEEE 3rd International Conference on Information Technology, Big Data and Artificial Intelligence (ICIBA), 2023, vol. 3, pp. 593–597.

A. Ayala, B. Fernandes, F. Cruz, D. Macedo, A. L. I. Oliveira, and C. Zanchettin, “KutralNet: A Portable Deep Learning Model for Fire Recognition,” in 2020 International Joint Conference on Neural Networks (IJCNN), 2020, pp. 1–8.

H. Yuan, H. Yang, R. Li, P. Xu, S. Du, and R. Dong, “A lightweight fire detection for edge computing based on Mobilenet,” in International Conference on Computer, Artificial Intelligence, and Control Engineering (CAICE 2023), 2023, vol. 12645, p. 22.

H.-J. Yang, H. Jang, T. Kim, and B. Lee, “Non-Temporal Lightweight Fire Detection Network for Intelligent Surveillance Systems,” IEEE Access, vol. 7, pp. 169257–169266, 2019.

S. Zheng, P. Gao, X. Zou, and W. Wang, “Forest fire monitoring via uncrewed aerial vehicle image processing based on a modified machine learning algorithm,” Front. Plant Sci., vol. 13, Oct. 2022.

Z. Yuan et al., “CLAHE-Based Low-Light Image Enhancement for Robust Object Detection in Overhead Power Transmission System,” IEEE Trans. Power Deliv., vol. 38, pp. 2240–2243, 2023.

M. Alhajlah, “Underwater Image Enhancement Using Customized CLAHE and Adaptive Color Correction,” Comput. Mater. Contin., vol. 74, no. 3, pp. 5157–5172, 2023.

A. Chopde, A. Magon, and S. Bhatkar, “Forest Fire Detection and Prediction from image processing using RCNN,” in Proceedings of the 7th World Congress on Civil, Structural, and Environmental Engineering, Virtual, 2022, pp. 10–12.

S. Madkar, D. Y. Sakhare, K. A. Phutane, A. P. Haral, K. B. Nikam, and S. Tharunyha, “Video Based Forest Fire and Smoke Detection Using YoLo and CNN,” in 2022 International Conference on Power, Energy, Control and Transmission Systems (ICPECTS), 2022, pp. 1–5.

A. Saied, “Fire Dataset.” [Online]. Available: https://www.kaggle.com/datasets/phylake1337/fire-dataset?select=fire_dataset%2C+%0A06.11.2021. [Accessed: 01-Jan-2024].

R. Ghali and M. A. Akhloufi, “Deep Learning Approaches for Wildland Fires Remote Sensing: Classification, Detection, and Segmentation,” Remote Sens., vol. 15, no. 7, p. 1821, 2023.

D. Agrawal, S. Minocha, S. Namasudra, and S. Kumar, “Ensemble algorithm using transfer learning for sheep breed classification,” in 2021 IEEE 15th international symposium on applied computational intelligence and informatics (SACI), 2021, pp. 199–204.

A. Filonenko, L. Kurnianggoro, and K.-H. Jo, “Comparative study of modern convolutional neural networks for smoke detection on image data,” in 2017 10th international conference on human system interactions (HSI), 2017, pp. 64–68.

S.-H. Tsang, “Review: Xception — With Depthwise Separable Convolution, Better Than Inception-v3 (Image Classification),” Medium, 2018. [Online]. Available: https://towardsdatascience.com/review-xception-with-depthwise-separable-convolution-better-than-inception-v3-image-dc967dd42568. [Accessed: 07-Sep-2022].

H. Noprisson, E. Ermatita, A. Abdiansah, V. Ayumi, M. Purba, and H. Setiawan, “Fine-Tuning Transfer Learning Model in Woven Fabric Pattern Classification,” Int. J. Innov. Comput. Inf. Control, vol. 18, no. 06, p. 1885, 2022.

W. Wang et al., “A New Image Classification Approach via Improved MobileNet Models with Local Receptive Field Expansion in Shallow Layers,” Comput. Intell. Neurosci., vol. 2020, p. 8817849, 2020.

S. Phiphiphatphaisit and O. Surinta, “Food image classification with improved MobileNet architecture and data augmentation,” in Proceedings of the 3rd International Conference on Information Science and Systems, 2020, pp. 51–56.

A. R. Kusumastuti, Y. Kristian, and E. Setyati, “Klasifikasi Ketertarikan Belajar Anak PAUD Melalui Video Ekspresi Wajah Dan Gestur Menggunakan Convolutional Neural Network,” J. Sisfokom (Sistem Inf. dan Komputer), vol. 10, no. 2, pp. 182–188, 2021.

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Published

2024-03-31

How to Cite

Ayumi, V., Noprisson, H., & Ani, N. . (2024). Forest Fire Detection Using Transfer Learning Model with Contrast Enhancement and Data Augmentation. Jurnal Nasional Pendidikan Teknik Informatika : JANAPATI, 13(1), 1–10. https://doi.org/10.23887/janapati.v13i1.75692

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Articles