CVSep 2, 2018

Identifying Land Patterns from Satellite Imagery in Amazon Rainforest using Deep Learning

arXiv:1809.00340v113 citations
Originality Synthesis-oriented
AI Analysis

This work helps governments and agencies monitor deforestation and environmental changes more effectively, though it is incremental as it applies existing deep learning methods to a specific domain.

The paper tackled the problem of tracking land pattern changes in the Amazon rainforest by using convolutional neural networks for image classification, achieving a testing accuracy of 96.71%.

The Amazon rainforests have been suffering widespread damage, both via natural and artificial means. Every minute, it is estimated that the world loses forest cover the size of 48 football fields. Deforestation in the Amazon rainforest has led to drastically reduced biodiversity, loss of habitat, climate change, and other biological losses. In this respect, it has become essential to track how the nature of these forests change over time. Image classification using deep learning can help speed up this process by removing the manual task of classifying each image. Here, it is shown how convolutional neural networks can be used to track changes in land patterns in the Amazon rainforests. In this work, a testing accuracy of 96.71% was obtained. This can help governments and other agencies to track changes in land patterns more effectively and accurately.

Foundations

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