Deep Learning-based Land-cover Change Detection in Remote-sensing Imagery

A. Diana Andrushia, Mishaa Manikandan, T. Mary Neebha, N. Anand*, U. Johnson Alengaram, Khalifa Al Jabri

*المؤلف المقابل لهذا العمل

نتاج البحث: المساهمة في مجلةArticleمراجعة النظراء

ملخص

With the significant advancement in deep-learning methods and their feature representation, deep-learning methods are more prevalent in solving change-detection tasks. The prime purpose of change detection is to detect the changes on the surface of the earth. In this work, an end-to-end encoder-decoder architecture is used to detect the changes in the land cover. The proposed method uses residual U-Net to find land-cover image changes. The UNet structure is used as the backbone of the network. The effectiveness of the proposed method has been experimented through LEVIR-CD datasets. The results showed that the proposed method outperforms the state-of-the-art techniques and gives reliable results. These techniques can be used to examine changes in the earth's crest due to natural events, such as landslides, earthquakes, erosion and geo-hazards or human activity, like mining and development.

اللغة الأصليةEnglish
الصفحات (من إلى)624-634
عدد الصفحات11
دوريةJordan Journal of Civil Engineering
مستوى الصوت17
رقم الإصدار4
المعرِّفات الرقمية للأشياء
حالة النشرPublished - أكتوبر 1 2023

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