FAO AGRIS - International System for Agricultural Science and Technology

A robust gap-filling method for predicting missing observations in daily Black Marble nighttime light data

2023

Xiangyu Hao | Jinxiu Liu | Janne Heiskanen | Eduardo Eiji Maeda | Si Gao | Xuecao Li


Bibliographic information
Volume 60 Issue 1 ISSN 1548-1603 | 1943-7226
Publisher
Taylor & Francis Group
Other Subjects
Deep learning; Gap-filling; Nighttime light; Nasa black marble product
Language
English

2026-01-21
DOAJ
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