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Deep Neural Networks and Kernel Density Estimation for Detecting Human Activity Patterns from Geo-Tagged Images: A Case Study of Birdwatching on Flickr

机译:深度神经网络和内核密度估计,用于从带有地理标签的图像中检测人类活动模式:以Flickr上的观鸟为例

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Thanks to recent advances in high-performance computing and deep learning, computer vision algorithms coupled with spatial analysis methods provide a unique opportunity for extracting human activity patterns from geo-tagged social media images. However, there are only a handful of studies that evaluate the utility of computer vision algorithms for studying large-scale human activity patterns. In this article, we introduce an analytical framework that integrates a computer vision algorithm based on convolutional neural networks (CNN) with kernel density estimation to identify objects, and infer human activity patterns from geo-tagged photographs. To demonstrate our framework, we identify bird images to infer birdwatching activity from approximately 20 million publicly shared images on Flickr, across a three-year period from December 2013 to December 2016. In order to assess the accuracy of object detection, we compared results from the computer vision algorithm to concept-based image retrieval, which is based on keyword search on image metadata such as textual description, tags, and titles of images. We then compared patterns in birding activity generated using Flickr bird photographs with patterns identified using eBird data—an online citizen science bird observation application. The results of our eBird comparison highlight the potential differences and biases in casual and serious birdwatching, and similarities and differences among behaviors of social media and citizen science users. Our analysis results provide valuable insights into assessing the credibility and utility of geo-tagged photographs in studying human activity patterns through object detection and spatial analysis.
机译:得益于高性能计算和深度学习的最新进展,计算机视觉算法与空间分析方法的结合为从带有地理标签的社交媒体图像中提取人类活动模式提供了独特的机会。但是,只有少数研究评估了计算机视觉算法在研究大规模人类活动模式方面的效用。在本文中,我们介绍了一个分析框架,该框架将基于卷积神经网络(CNN)的计算机视觉算法与内核密度估计相集成,以识别对象,并从带有地理标签的照片中推断人类活动模式。为了演示我们的框架,我们从2013年12月至2016年12月的三年期间,从Flickr上大约2000万张公开共享的图像中识别出鸟类图像,以推断观鸟活动。计算机视觉算法用于基于概念的图像检索,该算法基于对图像元数据(例如文本描述,标签和图像标题)的关键字搜索。然后,我们将使用Flickr鸟类照片生成的观鸟活动模式与使用eBird数据(在线公民科学鸟类观察应用程序)确定的模式进行了比较。我们的eBird比较结果突出了休闲和严肃观鸟的潜在差异和偏见,以及社交媒体和公民科学用户的行为之间的异同。我们的分析结果为评估带地理标记的照片在通过物体检测和空间分析研究人类活动模式时的可信度和实用性提供了宝贵的见解。

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