USEUROPEAFRICAASIA 中文雙語(yǔ)Fran?ais
    China
    Home / China / World

    Satellite data and machine learning used to map poverty

    By Xinhua in San Francisco | China Daily | Updated: 2016-08-22 07:45

    Researchers with Stanford University have used machine learning to extract information about poverty from satellite imagery of areas where ground-level data are unavailable.

    "We have a limited number of surveys conducted in scattered villages across the African continent, but otherwise we have very little local-level information on poverty," said Marshall Burke, an assistant professor of earth system science at Stanford and co-author of a study in the current issue of journal Science.

    "At the same time, we collect all sorts of other data in these areas - like satellite imagery - constantly."

    In trying to understand whether high-resolution satellite imagery, an unconventional but readily available data source, could inform estimates of where impoverished people live, the researchers based their solution on an assumption that areas that are brighter at night are usually more developed, therefore used the "nightlight" data to identify features in the higher-resolution daytime imagery that are correlated with economic development.

    However, while machine learning, the science of designing computer algorithms that learn from data, works best when it can access vast amounts of data, there was little data on poverty to start with for the researchers.

    "There are few places in the world where we can tell the computer with certainty whether the people living there are rich or poor," said study lead author Neal Jean, a doctoral student in computer science at Stanford's School of Engineering.

    "This makes it hard to extract useful information from the huge amount of daytime satellite imagery that's available."

    The solution, according to Jean, was that their machine learning algorithm, without being told what to look for, learned to pick out of the imagery many things that are easily recognizable to humans, things like roads, urban areas and farmland.

    And the researchers then used these features from the daytime imagery to predict village-level wealth, as measured in the available survey data.

    They claimed that this method did a surprisingly good job predicting the distribution of poverty across five African countries, outperforming existing approaches.

    These improved poverty maps could help aid organizations and policymakers distribute funds more efficiently and enact and evaluate policies more effectively.

    Editor's picks
    Copyright 1995 - . All rights reserved. The content (including but not limited to text, photo, multimedia information, etc) published in this site belongs to China Daily Information Co (CDIC). Without written authorization from CDIC, such content shall not be republished or used in any form. Note: Browsers with 1024*768 or higher resolution are suggested for this site.
    License for publishing multimedia online 0108263

    Registration Number: 130349
    FOLLOW US
    亚洲国产精品无码中文字 | 丰满人妻AV无码一区二区三区| 日韩AV无码中文无码不卡电影| 无码一区二区三区| 最好看最新高清中文视频| 国模吧无码一区二区三区| 亚洲av福利无码无一区二区| 中文字幕在线看视频一区二区三区| 国产精品无码无卡无需播放器| 亚洲AV无码国产丝袜在线观看| 最近中文字幕mv免费高清视频8| 色吊丝中文字幕| 人妻系列无码专区久久五月天| 无码少妇一区二区性色AV| 中文无码喷潮在线播放| 99re热这里只有精品视频中文字幕| 国产精品无码永久免费888 | 人妻无码久久一区二区三区免费| 国产中文字幕在线免费观看| 亚洲男人第一无码aⅴ网站| 国产激情无码视频在线播放性色| 亚洲精品一级无码鲁丝片| 亚洲av无码一区二区三区不卡| 无码av人妻一区二区三区四区| 最近中文字幕高清字幕在线视频| 亚洲av无码专区在线观看素人| 无码精品一区二区三区免费视频| 无码AV天堂一区二区三区| 亚洲AV无码专区电影在线观看| 一本一道av中文字幕无码| 亚洲乱码中文字幕综合234| 无码人妻少妇久久中文字幕蜜桃| 欧美日韩中文国产一区发布| 亚洲Aⅴ无码一区二区二三区软件| 亚欧无码精品无码有性视频 | 精品久久无码中文字幕| 久久青青草原亚洲av无码app| 无码人妻品一区二区三区精99| 无码精品人妻一区二区三区人妻斩| 亚洲大尺度无码专区尤物| 未满十八18禁止免费无码网站|