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首页> 外文期刊>Geo-spatial information science >Repurposing a deep learning network to filter and classify volunteered photographs for land cover and land use characterization
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Repurposing a deep learning network to filter and classify volunteered photographs for land cover and land use characterization

机译:重新利用深度学习网络对志愿者照片进行过滤和分类,以进行土地覆盖和土地利用表征

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This paper extends recent research into the usefulness of volunteered photos for land cover extraction, and investigates whether this usefulness can be automatically assessed by an easily accessible, off-the-shelf neural network pre-trained on a variety of scene characteristics. Geo-tagged photographs are sometimes presented to volunteers as part of a game which requires them to extract relevant facts about land use. The challenge is to select the most relevant photographs in order to most efficiently extract the useful information while maintaining the engagement and interests of volunteers. By repurposing an existing network which had been trained on an extensive library of potentially relevant features, we can quickly carry out initial assessments of the general value of this approach, pick out especially salient features, and identify focus areas for future neural network training and development. We compare two approaches to extract land cover information from the network: a simple post hoc weighting approach accessible to non-technical audiences and a more complex decision tree approach that involves training on domain-specific features of interest. Both approaches had reasonable success in characterizing human influence within a scene when identifying the land use types (as classified by Urban Atlas) present within a buffer around the photograph’s location. This work identifies important limitations and opportunities for using volunteered photographs as follows: (1) the false precision of a photograph’s location is less useful for identifying on-the-spot land cover than the information it can give on neighbouring combinations of land cover; (2) ground-acquired photographs, interpreted by a neural network, can supplement plan view imagery by identifying features which will never be discernible from above; (3) when dealing with contexts where there are very few exemplars of particular classes, an independent a posteriori weighting of existing scene attributes and categories can buffer against over-specificity.
机译:本文将最近的研究扩展到了志愿照片对土地覆盖物提取的有用性,并研究了是否可以通过对各种场景特征进行预训练的易于访问的现成神经网络来自动评估这种有用性。带有地理标签的照片有时会作为游戏的一部分呈现给志愿者,这要求他们提取有关土地使用的相关事实。挑战是选择最相关的照片,以便最有效地提取有用的信息,同时保持志愿者的参与和兴趣。通过重新利用已在可能具有相关特征的扩展库中进行过培训的现有网络,我们可以快速对该方法的一般价值进行初步评估,挑选出特别突出的特征,并确定未来神经网络培训和开发的重点领域。我们比较了两种从网络中提取土地覆盖信息的方法:一种非技术受众可以访问的简单事后加权方法,以及一种涉及对特定领域的特征进行培训的更复杂的决策树方法。当确定照片位置周围的缓冲区中存在的土地使用类型(按城市地图集分类)时,这两种方法在表征场景中的人为影响方面均取得了成功。这项工作确定了使用志愿照片的重要限制和机会,如下所述:(1)照片位置的错误精确度对于识别现场土地覆被有用的程度不如其对邻近土地覆被组合所提供的信息有用; (2)由神经网络解释的地面获取的照片可以通过识别从上方无法识别的特征来补充平面图图像; (3)在处理特定类别示例很少的上下文时,对现有场景属性和类别进行独立的后验加权可以缓冲过高的规范性。

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