population mapping
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2021 ◽  
Vol 917 (1) ◽  
pp. 012024
Author(s):  
Handoyo ◽  
R Effendi ◽  
F Nurfatriani ◽  
Y Rochmayanto ◽  
D C Hidayat

Abstract The issuance of rights to manage and use forest and land resources by the government to large corporations usually incurs costs for the state and society. One of them is the emergence of hidden populations, namely people who are marginalized and even oppressed by development programs. Using the hidden population mapping method, this study reveals that hidden populations are born from the issuance of management and use rights on land they have relied on for their livelihoods. In this study, Orang Rawang is used as a term to represent a hidden population which the amounts is approximately about 30% of the population of Perigi Village and 35% of the population of Riding Village. The formation of Orang Rawang can be associated with a long-standing social stratification process that can now be identified from assets and survival strategies. Most of them do not have assets in the form of land ownership on mineral lands. Their main livelihood is fishing and collecting wood and non-timber products. Social networking in the community is carried out horizontally by dividing collective space for roaming areas, and vertically by forming patron-clan relationships with the Orang Risan and Orang Sungai.


2021 ◽  
Author(s):  
Erzhuo Shao ◽  
Jie Feng ◽  
Yingheng Wang ◽  
Tong Xia ◽  
Yong Li

2021 ◽  
Vol 13 (17) ◽  
pp. 3533
Author(s):  
Haoming Zhuang ◽  
Xiaoping Liu ◽  
Yuchao Yan ◽  
Jinpei Ou ◽  
Jialyu He ◽  
...  

Fine knowledge of the spatiotemporal distribution of the population is fundamental in a wide range of fields, including resource management, disaster response, public health, and urban planning. The United Nations’ Sustainable Development Goals also require the accurate and timely assessment of where people live to formulate, implement, and monitor sustainable development policies. However, due to the lack of appropriate auxiliary datasets and effective methodological frameworks, there are rarely continuous multi-temporal gridded population data over a long historical period to aid in our understanding of the spatiotemporal evolution of the population. In this study, we developed a framework integrating a ResNet-N deep learning architecture, considering neighborhood effects with a vast number of Landsat-5 images from Google Earth Engine for population mapping, to overcome both the data and methodology obstacles associated with rapid multi-temporal population mapping over a long historical period at a large scale. Using this proposed framework in China, we mapped fine-scale multi-temporal gridded population data (1 km × 1 km) of China for the 1985–2010 period with a 5-year interval. The produced multi-temporal population data were validated with available census data and achieved comparable performance. By analyzing the multi-temporal population grids, we revealed the spatiotemporal evolution of population distribution from 1985 to 2010 in China with the characteristic of concentration of the population in big cities and the contraction of small- and medium-sized cities. The framework proposed in this study demonstrates the feasibility of mapping multi-temporal gridded population distribution at a large scale over a long period in a timely and low-cost manner, which is particularly useful in low-income and data-poor areas.


2021 ◽  
Vol 13 (6) ◽  
pp. 1171
Author(s):  
Mohammed Alahmadi ◽  
Shawky Mansour ◽  
David Martin ◽  
Peter Atkinson

Knowledge of the spatial pattern of the population is important. Census population data provide insufficient spatial information because they are released only for large geographic areas. Nighttime light (NTL) data have been utilized widely as an effective proxy for population mapping. However, the well-reported challenges of pixel overglow and saturation influence the applicability of the Defense Meteorological Program Operational Line-Scan System (DMSP-OLS) for accurate population mapping. This paper integrates three remotely sensed information sources, DMSP-OLS, vegetation, and bare land areas, to develop a novel index called the Vegetation-Bare Adjusted NTL Index (VBANTLI) to overcome the uncertainties in the DMSP-OLS data. The VBANTLI was applied to Riyadh province to downscale governorate-level census population for 2004 and 2010 to a gridded surface of 1 km resolution. The experimental results confirmed that the VBANTLI significantly reduced the overglow and saturation effects compared to widely applied indices such as the Human Settlement Index (HSI), Vegetation Adjusted Normalized Urban Index (VANUI), and radiance-calibrated NTL (RCNTL). The correlation coefficient between the census population and the RCNTL (R = 0.99) and VBANTLI (R = 0.98) was larger than for the HSI (R = 0.14) and VANUI (R = 0.81) products. In addition, Model 5 (VBANTLI) was the most accurate model with R2 and mean relative error (MRE) values of 0.95% and 37%, respectively.


2021 ◽  
Vol 13 (6) ◽  
pp. 1142
Author(s):  
Daniela Palacios-Lopez ◽  
Felix Bachofer ◽  
Thomas Esch ◽  
Mattia Marconcini ◽  
Kytt MacManus ◽  
...  

The field of human population mapping is constantly evolving, leveraging the increasing availability of high-resolution satellite imagery and the advancements in the field of machine learning. In recent years, the emergence of global built-area datasets that accurately describe the extent, location, and characteristics of human settlements has facilitated the production of new population grids, with improved quality, accuracy, and spatial resolution. In this research, we explore the capabilities of the novel World Settlement Footprint 2019 Imperviousness layer (WSF2019-Imp), as a single proxy in the production of a new high-resolution population distribution dataset for all of Africa—the WSF2019-Population dataset (WSF2019-Pop). Results of a comprehensive qualitative and quantitative assessment indicate that the WSF2019-Imp layer has the potential to overcome the complexities and limitations of top-down binary and multi-layer approaches of large-scale population mapping, by delivering a weighting framework which is spatially consistent and free of applicability restrictions. The increased thematic detail and spatial resolution (~10m at the Equator) of the WSF2019-Imp layer improve the spatial distribution of populations at local scales, where fully built-up settlement pixels are clearly differentiated from settlement pixels that share a proportion of their area with green spaces, such as parks or gardens. Overall, eighty percent of the African countries reported estimation accuracies with percentage mean absolute errors between ~15% and ~32%, and 50% of the validation units in more than half of the countries reported relative errors below 20%. Here, the remaining lack of information on the vertical dimension and the functional characterisation of the built-up environment are still remaining limitations affecting the quality and accuracy of the final population datasets.


2020 ◽  
Author(s):  
Estanislao Burgos ◽  
Maria Belen De Luca ◽  
Isidore Diouf ◽  
Luis A. Haro ◽  
Elise Albert ◽  
...  

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