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Selective Logging Detection with Deep Learning and Very-High Resolution Imagery

Authors: Yupanqui, Osmar; Quispe, Marvin;

Selective Logging Detection with Deep Learning and Very-High Resolution Imagery

Abstract

This chapter applies deep learning semantic segmentation to detect selective logging events in tropical forests using very-high resolution satellite imagery. It covers data preparation, U-Net model training, and end-to-end inference workflows. Part of the EarthRISE Applied Artificial Intelligence and Deep Learning Book, Chapter 3: Semantic Segmentation.

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