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Abstract
AN IMPROVED REMOTE SENSING IMAGE CLASSIFICATION ALGORITHM USING A HYBRID APPROACH
Trung Nguyen Tu*, Huy Ngo Hoang, Chinh Nguyen Van
ABSTRACT
Remote sensing image classification is a problem of great interest to researchers in the field of remote sensing. There are two main approaches to this problem: pixel-based and object-based approaches. Remote sensing images may contain multiple spectral bands and very high spatial resolution. The pixel-based approach often achieves high accuracy but encounters difficulties when classifying large-scale images such as remote sensing data. Meanwhile, the object-based approach overcomes the problem of large image size but usually provides lower accuracy compared with the pixel-based approach. This paper proposes a hybrid approach that combines both methods to develop a more effective remote sensing image classification algorithm. The proposed algorithm is evaluated on remote sensingimages acquired over Hoa Binh province.
[Full Text Article] [Download Certificate] https://doi.org/10.5281/zenodo.19885800