DEEP LEARNING APPLIED TO REMOTE SENSING: AN APPROACH FOR THE DETECTION OF CATTLE DRINKING FOUNTAINS USING PLANET IMAGES

Vol 19, 2019 - 96053
Oral
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Abstract

The recent increscent of orbital sensors is producing an unprecedented amount of global surface data in the history of mankind, which has a tremendous potential for application of deep learning (DL) approaches. In this direction, this work implemented a process of object detection (i.e. cattle drinking fountains) over Planet images, acquired in two distinct months (i.e. nov/2017 and mar/2018), and identified more than 24,000 drinking fountains in an area of 18,000 km2, located in the state of Goiás. This approach, based on the neural network architecture of U-Net and trained with data obtained by visual inspection, produced results that are spatially consistent and compatible with high resolution images. The results indicate a potential of application in other satellite data (e.g. Worldview, Sentinel) and in the identification of other objects (e.g. treetop, pivot, road).

Institutions
  • 1 Universidade Federal de Goiás
Track
  • Data mining
Keywords
deep-learning
Machine Learning
planet images
cattle drinking fountain
pasturelands