Matches in SemOpenAlex for { <https://semopenalex.org/work/W2753478003> ?p ?o ?g. }
- W2753478003 abstract "Knowing people is a fundamental component of many decision making processes such as urban development, infectious disease containment, evacuation planning, risk management, conservation planning, and more. While bottom-up, survey driven censuses can provide a comprehensive view into the population landscape of a country, they are expensive to realize, are infrequently performed, and only provide population counts over broad areas. Population disaggregation techniques and population projection methods individually address these shortcomings, but also have shortcomings of their own. To jointly answer the questions of where do people live and many people there, we propose a deep learning model for creating high-resolution population estimations from satellite imagery. Specifically, we train convolutional neural networks to predict population in the USA at a $0.01^{circ} times 0.01^{circ}$ resolution grid from 1-year composite Landsat imagery. We validate these models in two ways: quantitatively, by comparing our model's grid cell estimates aggregated at a county-level to several US Census county-level population projections, and qualitatively, by directly interpreting the model's predictions in terms of the satellite image inputs. We find that aggregating our model's estimates gives comparable results to the Census county-level population projections and that the predictions made by our model can be directly interpreted, which give it advantages over traditional population disaggregation methods. In general, our model is an example of how machine learning techniques can be an effective tool for extracting information from inherently unstructured, remotely sensed data to provide effective solutions to social problems." @default.
- W2753478003 created "2017-09-15" @default.
- W2753478003 creator A5034842879 @default.
- W2753478003 creator A5066063583 @default.
- W2753478003 creator A5087538704 @default.
- W2753478003 date "2017-08-30" @default.
- W2753478003 modified "2023-09-27" @default.
- W2753478003 title "A Deep Learning Approach for Population Estimation from Satellite Imagery" @default.
- W2753478003 cites W1481186935 @default.
- W2753478003 cites W1522301498 @default.
- W2753478003 cites W1527710572 @default.
- W2753478003 cites W159124996 @default.
- W2753478003 cites W1686810756 @default.
- W2753478003 cites W1989753770 @default.
- W2753478003 cites W2057442840 @default.
- W2753478003 cites W2066586311 @default.
- W2753478003 cites W2071473062 @default.
- W2753478003 cites W2098676252 @default.
- W2753478003 cites W2102566458 @default.
- W2753478003 cites W2107927071 @default.
- W2753478003 cites W2184195245 @default.
- W2753478003 cites W2194775991 @default.
- W2753478003 cites W2196197460 @default.
- W2753478003 cites W2513506629 @default.
- W2753478003 cites W2558280540 @default.
- W2753478003 cites W2949117887 @default.
- W2753478003 cites W2952062459 @default.
- W2753478003 cites W776178606 @default.
- W2753478003 cites W997247147 @default.
- W2753478003 hasPublicationYear "2017" @default.
- W2753478003 type Work @default.
- W2753478003 sameAs 2753478003 @default.
- W2753478003 citedByCount "2" @default.
- W2753478003 countsByYear W27534780032019 @default.
- W2753478003 crossrefType "posted-content" @default.
- W2753478003 hasAuthorship W2753478003A5034842879 @default.
- W2753478003 hasAuthorship W2753478003A5066063583 @default.
- W2753478003 hasAuthorship W2753478003A5087538704 @default.
- W2753478003 hasConcept C108583219 @default.
- W2753478003 hasConcept C11413529 @default.
- W2753478003 hasConcept C119857082 @default.
- W2753478003 hasConcept C124101348 @default.
- W2753478003 hasConcept C127413603 @default.
- W2753478003 hasConcept C13280743 @default.
- W2753478003 hasConcept C144024400 @default.
- W2753478003 hasConcept C146978453 @default.
- W2753478003 hasConcept C149923435 @default.
- W2753478003 hasConcept C154945302 @default.
- W2753478003 hasConcept C187691185 @default.
- W2753478003 hasConcept C19269812 @default.
- W2753478003 hasConcept C205649164 @default.
- W2753478003 hasConcept C2522767166 @default.
- W2753478003 hasConcept C2778102629 @default.
- W2753478003 hasConcept C2908647359 @default.
- W2753478003 hasConcept C41008148 @default.
- W2753478003 hasConcept C52130261 @default.
- W2753478003 hasConcept C57493831 @default.
- W2753478003 hasConcept C58640448 @default.
- W2753478003 hasConcept C62649853 @default.
- W2753478003 hasConcept C81363708 @default.
- W2753478003 hasConceptScore W2753478003C108583219 @default.
- W2753478003 hasConceptScore W2753478003C11413529 @default.
- W2753478003 hasConceptScore W2753478003C119857082 @default.
- W2753478003 hasConceptScore W2753478003C124101348 @default.
- W2753478003 hasConceptScore W2753478003C127413603 @default.
- W2753478003 hasConceptScore W2753478003C13280743 @default.
- W2753478003 hasConceptScore W2753478003C144024400 @default.
- W2753478003 hasConceptScore W2753478003C146978453 @default.
- W2753478003 hasConceptScore W2753478003C149923435 @default.
- W2753478003 hasConceptScore W2753478003C154945302 @default.
- W2753478003 hasConceptScore W2753478003C187691185 @default.
- W2753478003 hasConceptScore W2753478003C19269812 @default.
- W2753478003 hasConceptScore W2753478003C205649164 @default.
- W2753478003 hasConceptScore W2753478003C2522767166 @default.
- W2753478003 hasConceptScore W2753478003C2778102629 @default.
- W2753478003 hasConceptScore W2753478003C2908647359 @default.
- W2753478003 hasConceptScore W2753478003C41008148 @default.
- W2753478003 hasConceptScore W2753478003C52130261 @default.
- W2753478003 hasConceptScore W2753478003C57493831 @default.
- W2753478003 hasConceptScore W2753478003C58640448 @default.
- W2753478003 hasConceptScore W2753478003C62649853 @default.
- W2753478003 hasConceptScore W2753478003C81363708 @default.
- W2753478003 hasLocation W27534780031 @default.
- W2753478003 hasOpenAccess W2753478003 @default.
- W2753478003 hasPrimaryLocation W27534780031 @default.
- W2753478003 hasRelatedWork W2031547676 @default.
- W2753478003 hasRelatedWork W2549688017 @default.
- W2753478003 hasRelatedWork W2765419212 @default.
- W2753478003 hasRelatedWork W2768402401 @default.
- W2753478003 hasRelatedWork W2769313216 @default.
- W2753478003 hasRelatedWork W2903967341 @default.
- W2753478003 hasRelatedWork W2955580166 @default.
- W2753478003 hasRelatedWork W2963190848 @default.
- W2753478003 hasRelatedWork W2963424940 @default.
- W2753478003 hasRelatedWork W2972348273 @default.
- W2753478003 hasRelatedWork W3000601870 @default.
- W2753478003 hasRelatedWork W3027716283 @default.
- W2753478003 hasRelatedWork W3033427317 @default.
- W2753478003 hasRelatedWork W3034363062 @default.
- W2753478003 hasRelatedWork W3098124506 @default.