Assessing Land Cover Classification Accuracy: Variations in Dataset Combinations and Deep Learning Models

Author:

Sim Woo-Dam1ORCID,Yim Jong-Su2ORCID,Lee Jung-Soo1

Affiliation:

1. Department of Forest Management, Division of Forest Sciences, College of Forest and Environmental Sciences, Kangwon National University, Chuncheon 24341, Republic of Korea

2. Forest ICT Research Center, National Institute of Forest Science, Seoul 02455, Republic of Korea

Abstract

This study evaluates land cover classification accuracy through adjustments to the deep learning model (DLM) training process, including variations in loss function, the learning rate scheduler, and the optimizer, along with diverse input dataset compositions. DLM datasets were created by integrating surface reflectance (SR) spectral data from satellite imagery with textural information derived from the gray-level co-occurrence matrix, yielding four distinct datasets. The U-Net model served as the baseline, with models A and B configured by adjusting the training parameters. Eight land cover classifications were generated from four datasets and two deep learning training conditions. Model B, utilizing a dataset comprising spectral, textural, and terrain information, achieved the highest overall accuracy of 90.3% and a kappa coefficient of 0.78. Comparing different dataset compositions, incorporating textural and terrain data alongside SR from satellite imagery significantly enhanced classification accuracy. Furthermore, using a combination of multiple loss functions or dynamically adjusting the learning rate effectively mitigated overfitting issues, enhancing land cover classification accuracy compared to using a single loss function.

Funder

Korea National Institute of Forest Science

Publisher

MDPI AG

Reference59 articles.

1. Schwab, K. (2017). The Fourth Industrial Revolution, Currency. Available online: https://play.google.com/store/books/details?id=ST_FDAAAQBAJ.

2. KFS (Korea Forest Service) (2024, February 02). K-Forest, Available online: https://www.forest.go.kr/kfsweb/kfi/kfs/cms/cmsView.do?mn=NKFS_02_13_04&cmsId=FC_003420.

3. Forest management research using optical sensors and remote sensing technologies;Kim;Korean J. Remote Sens.,2019

4. Precision forestry using remote sensing techniques: Opportunities and limitations of remote sensing application in forestry;Woo;Korean J. Remote Sens.,2019

5. Application of Remote Sensing and Geographic Information System in Forest Sector;Lee;J. Cadastre Land InformatiX,2016

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